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mxnet2ncnn.cpp 82 kB

8 years ago
8 years ago
8 years ago
8 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
8 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
8 years ago
8 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
8 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
8 years ago
8 years ago
Fix warnings on Visual Studio (#1431) * Fix warnings C4244, C4267 in src/layer/yolov3detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/yolodetectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4244: 'return': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/quantize.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warnings C4244, C4267 in src/layer/detectionoutput.cpp C4244: '=': conversion from 'int' to 'float', possible loss of data C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/roipooling.cpp C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/sigmoid.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/slice.cpp C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in src/layer/softmax.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/interp.cpp C4244: '=': conversion from 'float' to 'int', possible loss of data C4244: 'initializing': conversion from 'double' to 'int', possible loss of data * Fix warning C4244 in src/layer/instancenorm.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/deconvolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/layer/convolutiondepthwise.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4244 in src/net.cpp C4244: 'return': conversion from '__int64' to 'int', possible loss of data C4267: 'argument': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4267: 'return': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4244 in src/layer/bnll.cpp C4244: '=': conversion from 'double' to 'float', possible loss of data * Fix warning C4267 in src/layer/concat.cpp C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data * Fix warning C4267 in tools/mxnet/mxnet2ncnn.cpp C4244: 'initializing': conversion from 'double' to 'float', possible loss of data C4267: '=': conversion from 'size_t' to 'int', possible loss of data C4267: 'initializing': conversion from 'size_t' to 'int', possible loss of data C4305: 'initializing': truncation from 'double' to 'float'
6 years ago
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  1. // Tencent is pleased to support the open source community by making ncnn available.
  2. //
  3. // Copyright (C) 2017 THL A29 Limited, a Tencent company. All rights reserved.
  4. //
  5. // Licensed under the BSD 3-Clause License (the "License"); you may not use this file except
  6. // in compliance with the License. You may obtain a copy of the License at
  7. //
  8. // https://opensource.org/licenses/BSD-3-Clause
  9. //
  10. // Unless required by applicable law or agreed to in writing, software distributed
  11. // under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR
  12. // CONDITIONS OF ANY KIND, either express or implied. See the License for the
  13. // specific language governing permissions and limitations under the License.
  14. #include <limits.h>
  15. #include <map>
  16. #include <set>
  17. #include <stdint.h>
  18. #include <stdio.h>
  19. #include <string.h>
  20. #include <string>
  21. #include <vector>
  22. class MXNetParam;
  23. class MXNetNode
  24. {
  25. public:
  26. bool has_attr(const char* key) const;
  27. bool is_attr_scalar(const char* key) const;
  28. class AttrProxy
  29. {
  30. MXNetNode const* _n;
  31. const char* const _key;
  32. public:
  33. AttrProxy(MXNetNode const* n, const char* key)
  34. : _n(n), _key(key)
  35. {
  36. }
  37. operator int() const
  38. {
  39. return _n->attr_i(_key);
  40. }
  41. operator float() const
  42. {
  43. return _n->attr_f(_key);
  44. }
  45. operator std::string() const
  46. {
  47. return _n->attr_s(_key);
  48. }
  49. operator std::vector<int>() const
  50. {
  51. return _n->attr_ai(_key);
  52. }
  53. operator std::vector<float>() const
  54. {
  55. return _n->attr_af(_key);
  56. }
  57. };
  58. AttrProxy attr(const char* key) const
  59. {
  60. return AttrProxy(this, key);
  61. }
  62. int attr_i(const char* key) const;
  63. float attr_f(const char* key) const;
  64. std::string attr_s(const char* key) const;
  65. std::vector<int> attr_ai(const char* key) const;
  66. std::vector<float> attr_af(const char* key) const;
  67. public:
  68. bool is_weight() const;
  69. bool has_weight(int i) const;
  70. std::vector<float> weight(int i, int init_len = 0) const;
  71. std::vector<MXNetNode>* nodes; // reference
  72. std::vector<MXNetParam>* params; // reference
  73. public:
  74. std::string op;
  75. std::string name;
  76. int output_size;
  77. std::map<std::string, std::string> attrs;
  78. std::vector<int> inputs;
  79. std::vector<int> subinputs;
  80. std::vector<int> weights;
  81. };
  82. class MXNetParam
  83. {
  84. public:
  85. std::string name;
  86. std::vector<float> data;
  87. std::string init;
  88. };
  89. bool MXNetNode::has_attr(const char* key) const
  90. {
  91. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  92. return it != attrs.end();
  93. }
  94. bool MXNetNode::is_attr_scalar(const char* key) const
  95. {
  96. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  97. if (it == attrs.end())
  98. return false;
  99. if (it->second.empty())
  100. return false;
  101. return it->second[0] != '(';
  102. }
  103. int MXNetNode::attr_i(const char* key) const
  104. {
  105. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  106. if (it == attrs.end())
  107. return 0;
  108. if (it->second == "False")
  109. return 0;
  110. if (it->second == "True")
  111. return 1;
  112. int i = 0;
  113. int nscan = sscanf(it->second.c_str(), "%d", &i);
  114. if (nscan != 1)
  115. return 0;
  116. return i;
  117. }
  118. float MXNetNode::attr_f(const char* key) const
  119. {
  120. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  121. if (it == attrs.end())
  122. return 0.f;
  123. float f = 0;
  124. int nscan = sscanf(it->second.c_str(), "%f", &f);
  125. if (nscan != 1)
  126. return 0.f;
  127. return f;
  128. }
  129. std::string MXNetNode::attr_s(const char* key) const
  130. {
  131. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  132. if (it == attrs.end())
  133. return std::string();
  134. return it->second;
  135. }
  136. std::vector<int> MXNetNode::attr_ai(const char* key) const
  137. {
  138. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  139. if (it == attrs.end())
  140. return std::vector<int>();
  141. // (1,2,3)
  142. std::vector<int> list;
  143. if (is_attr_scalar(key))
  144. {
  145. list.push_back(attr_i(key));
  146. return list;
  147. }
  148. int i = 0;
  149. int c = 0;
  150. int nconsumed = 0;
  151. int nscan = sscanf(it->second.c_str() + c, "%*[\\[(,]%d%n", &i, &nconsumed);
  152. if (nscan != 1)
  153. {
  154. // (None
  155. if (strncmp(it->second.c_str() + c, "(None", 5) == 0)
  156. {
  157. i = -233;
  158. nconsumed = 5;
  159. nscan = 1;
  160. }
  161. }
  162. while (nscan == 1)
  163. {
  164. list.push_back(i);
  165. // fprintf(stderr, "%d\n", i);
  166. i = 0;
  167. c += nconsumed;
  168. nscan = sscanf(it->second.c_str() + c, "%*[(,]%d%n", &i, &nconsumed);
  169. if (nscan != 1)
  170. {
  171. // , None
  172. if (strncmp(it->second.c_str() + c, ", None", 6) == 0)
  173. {
  174. i = -233;
  175. nconsumed = 6;
  176. nscan = 1;
  177. }
  178. }
  179. }
  180. return list;
  181. }
  182. std::vector<float> MXNetNode::attr_af(const char* key) const
  183. {
  184. const std::map<std::string, std::string>::const_iterator it = attrs.find(key);
  185. if (it == attrs.end())
  186. return std::vector<float>();
  187. // (0.1,0.2,0.3)
  188. std::vector<float> list;
  189. if (is_attr_scalar(key))
  190. {
  191. list.push_back(attr_f(key));
  192. return list;
  193. }
  194. float i = 0.f;
  195. int c = 0;
  196. int nconsumed = 0;
  197. int nscan = sscanf(it->second.c_str() + c, "%*[(,]%f%n", &i, &nconsumed);
  198. while (nscan == 1)
  199. {
  200. list.push_back(i);
  201. // fprintf(stderr, "%f\n", i);
  202. i = 0.f;
  203. c += nconsumed;
  204. nscan = sscanf(it->second.c_str() + c, "%*[(,]%f%n", &i, &nconsumed);
  205. }
  206. return list;
  207. }
  208. bool MXNetNode::is_weight() const
  209. {
  210. for (int i = 0; i < (int)(*params).size(); i++)
  211. {
  212. const MXNetParam& p = (*params)[i];
  213. if (p.name == name)
  214. return true;
  215. }
  216. return false;
  217. }
  218. bool MXNetNode::has_weight(int i) const
  219. {
  220. if (i < 0 || i >= (int)weights.size())
  221. return false;
  222. const std::string& node_name = (*nodes)[weights[i]].name;
  223. for (int j = 0; j < (int)(*params).size(); j++)
  224. {
  225. const MXNetParam& p = (*params)[j];
  226. if (p.name == node_name)
  227. return true;
  228. }
  229. return false;
  230. }
  231. std::vector<float> MXNetNode::weight(int i, int init_len) const
  232. {
  233. if (i < 0 || i >= (int)weights.size())
  234. return std::vector<float>();
  235. const std::string& node_name = (*nodes)[weights[i]].name;
  236. for (int j = 0; j < (int)(*params).size(); j++)
  237. {
  238. const MXNetParam& p = (*params)[j];
  239. if (p.name != node_name)
  240. continue;
  241. if (!p.data.empty())
  242. return p.data;
  243. std::vector<float> data;
  244. if (!p.init.empty() && init_len != 0)
  245. {
  246. if (p.init == "[\\$zero\\$, {}]" || p.init == "[\\\"zero\\\", {}]" || p.init == "zeros")
  247. {
  248. data.resize(init_len, 0.f);
  249. }
  250. else if (p.init == "[\\$one\\$, {}]" || p.init == "[\\\"one\\\", {}]" || p.init == "ones")
  251. {
  252. data.resize(init_len, 1.f);
  253. }
  254. }
  255. return data;
  256. }
  257. return std::vector<float>();
  258. }
  259. static void replace_backslash_doublequote_dollar(char* s)
  260. {
  261. char* a = s;
  262. char* b = s + 1;
  263. while (*a && *b)
  264. {
  265. if (*a == '\\' && *b == '\"')
  266. {
  267. *b = '$';
  268. }
  269. a++;
  270. b++;
  271. }
  272. }
  273. static void parse_input_list(const char* s, std::vector<int>& inputs, std::vector<int>& subinputs)
  274. {
  275. inputs.clear();
  276. subinputs.clear();
  277. if (memcmp(s, "[]", 2) == 0)
  278. return;
  279. int nscan = 0;
  280. int nconsumed = 0;
  281. int id;
  282. int subid;
  283. int c = 1; // skip leading [
  284. nscan = sscanf(s + c, "[%d, %d%n", &id, &subid, &nconsumed);
  285. while (nscan == 2)
  286. {
  287. inputs.push_back(id);
  288. subinputs.push_back(subid);
  289. // fprintf(stderr, "%d %d\n", id, subid);
  290. c += nconsumed;
  291. nscan = sscanf(s + c, "%*[^[][%d, %d%n", &id, &subid, &nconsumed);
  292. }
  293. }
  294. static bool read_mxnet_json(const char* jsonpath, std::vector<MXNetNode>& nodes)
  295. {
  296. FILE* fp = fopen(jsonpath, "rb");
  297. if (!fp)
  298. {
  299. fprintf(stderr, "fopen %s failed\n", jsonpath);
  300. return false;
  301. }
  302. int internal_unknown = 0;
  303. int internal_underscore = 0;
  304. char line[1024];
  305. //{
  306. char* s = fgets(line, 1024, fp);
  307. if (!s)
  308. {
  309. fprintf(stderr, "fgets %s failed\n", jsonpath);
  310. return false;
  311. }
  312. MXNetNode n;
  313. bool in_nodes_list = false;
  314. bool in_node_block = false;
  315. bool in_attr_block = false;
  316. bool in_inputs_block = false;
  317. while (!feof(fp))
  318. {
  319. char* t = fgets(line, 1024, fp);
  320. if (!t)
  321. break;
  322. if (in_inputs_block)
  323. {
  324. // ]
  325. if (memcmp(line, " ]", 7) == 0)
  326. {
  327. in_inputs_block = false;
  328. continue;
  329. }
  330. // [439, 0, 0],
  331. int id;
  332. int subid;
  333. int nscan = sscanf(line, " [%d, %d", &id, &subid);
  334. if (nscan == 2)
  335. {
  336. n.inputs.push_back(id);
  337. n.subinputs.push_back(subid);
  338. continue;
  339. }
  340. }
  341. if (in_attr_block)
  342. {
  343. // },
  344. if (memcmp(line, " }", 7) == 0)
  345. {
  346. in_attr_block = false;
  347. continue;
  348. }
  349. // replace \" with \$
  350. replace_backslash_doublequote_dollar(line);
  351. // "kernel": "(7,7)",
  352. char key[256] = {0};
  353. char value[256] = {0};
  354. int nscan = sscanf(line, " \"%255[^\"]\": \"%255[^\"]\"", key, value);
  355. if (nscan == 2)
  356. {
  357. n.attrs[key] = value;
  358. // fprintf(stderr, "# %s = %s\n", key, value);
  359. continue;
  360. }
  361. }
  362. if (in_node_block)
  363. {
  364. // },
  365. if (memcmp(line, " }", 5) == 0)
  366. {
  367. // new node
  368. if (n.name.empty())
  369. {
  370. // assign default unknown name
  371. char unknownname[256];
  372. sprintf(unknownname, "unknownncnn_%d", internal_unknown);
  373. n.name = unknownname;
  374. internal_unknown++;
  375. }
  376. if (n.name[0] == '_')
  377. {
  378. // workaround for potential duplicated _plus0
  379. char underscorename[256];
  380. sprintf(underscorename, "underscorencnn_%d%s", internal_underscore, n.name.c_str());
  381. n.name = underscorename;
  382. internal_underscore++;
  383. }
  384. nodes.push_back(n);
  385. in_node_block = false;
  386. continue;
  387. }
  388. int nscan;
  389. // "op": "Convolution",
  390. char op[256] = {0};
  391. nscan = sscanf(line, " \"op\": \"%255[^\"]\",", op);
  392. if (nscan == 1)
  393. {
  394. n.op = op;
  395. // fprintf(stderr, "op = %s\n", op);
  396. continue;
  397. }
  398. // "name": "conv0",
  399. char name[256] = {0};
  400. nscan = sscanf(line, " \"name\": \"%255[^\"]\",", name);
  401. if (nscan == 1)
  402. {
  403. n.name = name;
  404. // fprintf(stderr, "name = %s\n", name);
  405. continue;
  406. }
  407. // "inputs": [
  408. if (memcmp(line, " \"inputs\": [\n", 18) == 0)
  409. {
  410. in_inputs_block = true;
  411. continue;
  412. }
  413. // "inputs": []
  414. char inputs[256] = {0};
  415. nscan = sscanf(line, " \"inputs\": %255[^\n]", inputs);
  416. if (nscan == 1)
  417. {
  418. parse_input_list(inputs, n.inputs, n.subinputs);
  419. // fprintf(stderr, "inputs = %s\n", inputs);
  420. continue;
  421. }
  422. // "param": {},
  423. if (memcmp(line, " \"param\": {}", 17) == 0)
  424. {
  425. continue;
  426. }
  427. // replace \" with \$
  428. replace_backslash_doublequote_dollar(line);
  429. // "attr": {"__init__": "[\"zero\", {}]"},
  430. char key[256] = {0};
  431. char value[256] = {0};
  432. nscan = sscanf(line, " \"attr\": {\"%255[^\"]\": \"%255[^\"]\"}", key, value);
  433. if (nscan == 2)
  434. {
  435. n.attrs[key] = value;
  436. // fprintf(stderr, "# %s = %s\n", key, value);
  437. continue;
  438. }
  439. // "attrs": {"__init__": "[\"zero\", {}]"},
  440. nscan = sscanf(line, " \"attrs\": {\"%255[^\"]\": \"%255[^\"]\"}", key, value);
  441. if (nscan == 2)
  442. {
  443. n.attrs[key] = value;
  444. // fprintf(stderr, "# %s = %s\n", key, value);
  445. continue;
  446. }
  447. // "param": {"p": "0.5"},
  448. nscan = sscanf(line, " \"param\": {\"%255[^\"]\": \"%255[^\"]\"}", key, value);
  449. if (nscan == 2)
  450. {
  451. n.attrs[key] = value;
  452. // fprintf(stderr, "# %s = %s\n", key, value);
  453. continue;
  454. }
  455. // "attr": {
  456. if (memcmp(line, " \"attr\": {", 15) == 0)
  457. {
  458. in_attr_block = true;
  459. continue;
  460. }
  461. // "attrs": {
  462. if (memcmp(line, " \"attrs\": {", 16) == 0)
  463. {
  464. in_attr_block = true;
  465. continue;
  466. }
  467. // "param": {
  468. if (memcmp(line, " \"param\": {", 16) == 0)
  469. {
  470. in_attr_block = true;
  471. continue;
  472. }
  473. }
  474. if (in_nodes_list)
  475. {
  476. // ],
  477. if (memcmp(line, " ],", 4) == 0)
  478. {
  479. in_nodes_list = false;
  480. // all nodes parsed
  481. break;
  482. }
  483. // {
  484. if (memcmp(line, " {", 5) == 0)
  485. {
  486. n = MXNetNode();
  487. in_node_block = true;
  488. continue;
  489. }
  490. }
  491. // "nodes": [
  492. if (memcmp(line, " \"nodes\": [", 12) == 0)
  493. {
  494. in_nodes_list = true;
  495. continue;
  496. }
  497. }
  498. fclose(fp);
  499. return true;
  500. }
  501. static bool read_mxnet_param(const char* parampath, std::vector<MXNetParam>& params)
  502. {
  503. FILE* fp = fopen(parampath, "rb");
  504. if (!fp)
  505. {
  506. fprintf(stderr, "fopen %s failed\n", parampath);
  507. return false;
  508. }
  509. size_t nread;
  510. uint64_t header;
  511. uint64_t reserved;
  512. nread = fread(&header, sizeof(uint64_t), 1, fp);
  513. if (nread != 1)
  514. {
  515. fprintf(stderr, "read header failed %zd\n", nread);
  516. return false;
  517. }
  518. nread = fread(&reserved, sizeof(uint64_t), 1, fp);
  519. if (nread != 1)
  520. {
  521. fprintf(stderr, "read reserved failed %zd\n", nread);
  522. return false;
  523. }
  524. // NDArray vec
  525. // each data
  526. uint64_t data_count;
  527. nread = fread(&data_count, sizeof(uint64_t), 1, fp);
  528. if (nread != 1)
  529. {
  530. fprintf(stderr, "read data_count failed %zd\n", nread);
  531. return false;
  532. }
  533. // fprintf(stderr, "data count = %d\n", (int)data_count);
  534. for (int i = 0; i < (int)data_count; i++)
  535. {
  536. uint32_t magic; // 0xF993FAC9
  537. nread = fread(&magic, sizeof(uint32_t), 1, fp);
  538. if (nread != 1)
  539. {
  540. fprintf(stderr, "read magic failed %zd\n", nread);
  541. return false;
  542. }
  543. // shape
  544. uint32_t ndim;
  545. std::vector<int64_t> shape;
  546. if (magic == 0xF993FAC9)
  547. {
  548. int32_t stype;
  549. nread = fread(&stype, sizeof(int32_t), 1, fp);
  550. if (nread != 1)
  551. {
  552. fprintf(stderr, "read stype failed %zd\n", nread);
  553. return false;
  554. }
  555. nread = fread(&ndim, sizeof(uint32_t), 1, fp);
  556. if (nread != 1)
  557. {
  558. fprintf(stderr, "read ndim failed %zd\n", nread);
  559. return false;
  560. }
  561. shape.resize(ndim);
  562. nread = fread(&shape[0], ndim * sizeof(int64_t), 1, fp);
  563. if (nread != 1)
  564. {
  565. fprintf(stderr, "read shape failed %zd\n", nread);
  566. return false;
  567. }
  568. }
  569. else if (magic == 0xF993FAC8)
  570. {
  571. nread = fread(&ndim, sizeof(uint32_t), 1, fp);
  572. if (nread != 1)
  573. {
  574. fprintf(stderr, "read ndim failed %zd\n", nread);
  575. return false;
  576. }
  577. shape.resize(ndim);
  578. nread = fread(&shape[0], ndim * sizeof(int64_t), 1, fp);
  579. if (nread != 1)
  580. {
  581. fprintf(stderr, "read shape failed %zd\n", nread);
  582. return false;
  583. }
  584. }
  585. else
  586. {
  587. ndim = magic;
  588. shape.resize(ndim);
  589. std::vector<uint32_t> shape32;
  590. shape32.resize(ndim);
  591. nread = fread(&shape32[0], ndim * sizeof(uint32_t), 1, fp);
  592. if (nread != 1)
  593. {
  594. fprintf(stderr, "read shape failed %zd\n", nread);
  595. return false;
  596. }
  597. for (int j = 0; j < (int)ndim; j++)
  598. {
  599. shape[j] = shape32[j];
  600. }
  601. }
  602. // context
  603. int32_t dev_type;
  604. int32_t dev_id;
  605. nread = fread(&dev_type, sizeof(int32_t), 1, fp);
  606. if (nread != 1)
  607. {
  608. fprintf(stderr, "read dev_type failed %zd\n", nread);
  609. return false;
  610. }
  611. nread = fread(&dev_id, sizeof(int32_t), 1, fp);
  612. if (nread != 1)
  613. {
  614. fprintf(stderr, "read dev_id failed %zd\n", nread);
  615. return false;
  616. }
  617. int32_t type_flag;
  618. nread = fread(&type_flag, sizeof(int32_t), 1, fp);
  619. if (nread != 1)
  620. {
  621. fprintf(stderr, "read type_flag failed %zd\n", nread);
  622. return false;
  623. }
  624. // data
  625. size_t len = 0;
  626. if (shape.size() == 1) len = shape[0];
  627. if (shape.size() == 2) len = shape[0] * shape[1];
  628. if (shape.size() == 3) len = shape[0] * shape[1] * shape[2];
  629. if (shape.size() == 4) len = shape[0] * shape[1] * shape[2] * shape[3];
  630. MXNetParam p;
  631. p.data.resize(len);
  632. nread = fread(&p.data[0], len * sizeof(float), 1, fp);
  633. if (nread != 1)
  634. {
  635. fprintf(stderr, "read MXNetParam data failed %zd\n", nread);
  636. return false;
  637. }
  638. params.push_back(p);
  639. // fprintf(stderr, "%u read\n", len);
  640. }
  641. // each name
  642. uint64_t name_count;
  643. nread = fread(&name_count, sizeof(uint64_t), 1, fp);
  644. if (nread != 1)
  645. {
  646. fprintf(stderr, "read name_count failed %zd\n", nread);
  647. return false;
  648. }
  649. // fprintf(stderr, "name count = %d\n", (int)name_count);
  650. for (int i = 0; i < (int)name_count; i++)
  651. {
  652. uint64_t len;
  653. nread = fread(&len, sizeof(uint64_t), 1, fp);
  654. if (nread != 1)
  655. {
  656. fprintf(stderr, "read name length failed %zd\n", nread);
  657. return false;
  658. }
  659. MXNetParam& p = params[i];
  660. p.name.resize(len);
  661. nread = fread((char*)p.name.data(), len, 1, fp);
  662. if (nread != 1)
  663. {
  664. fprintf(stderr, "read MXNetParam name failed %zd\n", nread);
  665. return false;
  666. }
  667. // cut leading arg:
  668. if (memcmp(p.name.c_str(), "arg:", 4) == 0)
  669. {
  670. p.name = std::string(p.name.c_str() + 4);
  671. }
  672. if (memcmp(p.name.c_str(), "aux:", 4) == 0)
  673. {
  674. p.name = std::string(p.name.c_str() + 4);
  675. }
  676. // fprintf(stderr, "%s read\n", p.name.c_str());
  677. }
  678. fclose(fp);
  679. return true;
  680. }
  681. static void fuse_shufflechannel(std::vector<MXNetNode>& nodes, std::vector<MXNetParam>& params, std::map<size_t, int>& node_reference, std::set<std::string>& blob_names, int& reduced_node_count)
  682. {
  683. size_t node_count = nodes.size();
  684. for (size_t i = 0; i < node_count; i++)
  685. {
  686. const MXNetNode& n = nodes[i];
  687. if (n.is_weight())
  688. continue;
  689. // ShuffleChannel <= Reshape - SwapAxis - Reshape
  690. if (n.op == "Reshape")
  691. {
  692. if (node_reference.find(i) == node_reference.end() || node_reference[i] != 1)
  693. continue;
  694. // "shape": "(0, -4, X, -1, -2)"
  695. std::vector<int> shape = n.attr("shape");
  696. if (shape.size() != 5)
  697. continue;
  698. if (shape[0] != 0 || shape[1] != -4 || shape[3] != -1 || shape[4] != -2)
  699. continue;
  700. if (i + 2 >= node_count)
  701. continue;
  702. const MXNetNode& n2 = nodes[i + 1];
  703. const MXNetNode& n3 = nodes[i + 2];
  704. if (n2.op != "SwapAxis" || n3.op != "Reshape")
  705. continue;
  706. if (node_reference.find(i + 1) == node_reference.end() || node_reference[i + 1] != 1)
  707. continue;
  708. // "dim1": "1", "dim2": "2"
  709. int dim1 = n2.attr("dim1");
  710. int dim2 = n2.attr("dim2");
  711. if (dim1 != 1 || dim2 != 2)
  712. continue;
  713. // "shape": "(0, -3, -2)"
  714. std::vector<int> shape3 = n3.attr("shape");
  715. if (shape3.size() != 3)
  716. continue;
  717. if (shape3[0] != 0 || shape3[1] != -3 || shape3[2] != -2)
  718. continue;
  719. // reduce
  720. nodes[i].op = "noop_reducedncnn";
  721. nodes[i + 1].op = "noop_reducedncnn";
  722. node_reference.erase(node_reference.find(i));
  723. node_reference.erase(node_reference.find(i + 1));
  724. blob_names.erase(n.name);
  725. blob_names.erase(n2.name);
  726. MXNetNode new_node;
  727. new_node.nodes = &nodes;
  728. new_node.params = &params;
  729. new_node.op = "ShuffleChannel";
  730. // new_node.name = n.name + "_" + n2.name + "_" + n3.name;
  731. new_node.name = n3.name;
  732. new_node.output_size = n3.output_size;
  733. char group[16];
  734. sprintf(group, "%d", shape[2]);
  735. new_node.attrs["group"] = group;
  736. new_node.inputs = n.inputs;
  737. new_node.subinputs = n.subinputs;
  738. nodes[i + 2] = new_node;
  739. reduced_node_count += 2;
  740. i += 2;
  741. }
  742. }
  743. }
  744. static void fuse_hardsigmoid_hardswish(std::vector<MXNetNode>& nodes, std::vector<MXNetParam>& params, std::map<size_t, int>& node_reference, std::set<std::string>& blob_names, int& reduced_node_count)
  745. {
  746. size_t node_count = nodes.size();
  747. for (size_t i = 0; i < node_count; i++)
  748. {
  749. const MXNetNode& n = nodes[i];
  750. if (n.is_weight())
  751. continue;
  752. if (n.op == "_plus_scalar")
  753. {
  754. // HardSigmoid <= _plus_scalar(+3) - clip(0,6) - _div_scalar(/6)
  755. const MXNetNode& n1 = nodes[i + 1];
  756. const MXNetNode& n2 = nodes[i + 2];
  757. const MXNetNode& n3 = nodes[i + 3];
  758. if ((float)n.attr("scalar") != 3.f)
  759. continue;
  760. if (n1.op != "clip" || (float)n1.attr("a_min") != 0.f || (float)n1.attr("a_max") != 6.f)
  761. continue;
  762. if (n2.op != "_div_scalar" || (float)n2.attr("scalar") != 6.f)
  763. continue;
  764. // reduce
  765. nodes[i].op = "noop_reducedncnn";
  766. nodes[i + 1].op = "noop_reducedncnn";
  767. node_reference.erase(node_reference.find(i));
  768. node_reference.erase(node_reference.find(i + 1));
  769. blob_names.erase(n.name);
  770. blob_names.erase(n1.name);
  771. if (n3.op != "elemwise_mul" || n3.inputs[0] != n.inputs[0])
  772. {
  773. MXNetNode new_node;
  774. new_node.nodes = &nodes;
  775. new_node.params = &params;
  776. new_node.op = "HardSigmoid";
  777. new_node.name = n2.name;
  778. new_node.output_size = n2.output_size;
  779. char alpha[16], beta[16];
  780. sprintf(alpha, "%f", 1.f / 6.f);
  781. sprintf(beta, "%f", 3.f / 6.f);
  782. new_node.attrs["alpha"] = alpha;
  783. new_node.attrs["beta"] = beta;
  784. new_node.inputs = n.inputs;
  785. new_node.subinputs = n.subinputs;
  786. nodes[i + 2] = new_node;
  787. reduced_node_count += 2;
  788. i += 2;
  789. }
  790. else // HardSwish <= HardSigmoid - Mul
  791. {
  792. nodes[i + 2].op = "noop_reducedncnn";
  793. node_reference[i - 1]--;
  794. node_reference.erase(node_reference.find(i + 2));
  795. blob_names.erase(n2.name);
  796. MXNetNode new_node;
  797. new_node.nodes = &nodes;
  798. new_node.params = &params;
  799. new_node.op = "HardSwish";
  800. new_node.name = n3.name;
  801. new_node.output_size = n3.output_size;
  802. char alpha[16], beta[16];
  803. sprintf(alpha, "%f", 1.f / 6.f);
  804. sprintf(beta, "%f", 3.f / 6.f);
  805. new_node.attrs["alpha"] = alpha;
  806. new_node.attrs["beta"] = beta;
  807. new_node.inputs = n.inputs;
  808. new_node.subinputs = n.subinputs;
  809. nodes[i + 3] = new_node;
  810. reduced_node_count += 3;
  811. i += 3;
  812. }
  813. }
  814. }
  815. }
  816. int main(int argc, char** argv)
  817. {
  818. const char* jsonpath = argv[1];
  819. const char* parampath = argv[2];
  820. const char* ncnn_prototxt = argc >= 5 ? argv[3] : "ncnn.param";
  821. const char* ncnn_modelbin = argc >= 5 ? argv[4] : "ncnn.bin";
  822. std::vector<MXNetNode> nodes;
  823. std::vector<MXNetParam> params;
  824. read_mxnet_json(jsonpath, nodes);
  825. read_mxnet_param(parampath, params);
  826. FILE* pp = fopen(ncnn_prototxt, "wb");
  827. FILE* bp = fopen(ncnn_modelbin, "wb");
  828. // magic
  829. fprintf(pp, "7767517\n");
  830. size_t node_count = nodes.size();
  831. // node reference
  832. std::map<size_t, int> node_reference;
  833. // weight node
  834. std::vector<int> weight_nodes;
  835. // global definition line
  836. // [layer count] [blob count]
  837. std::set<std::string> blob_names;
  838. for (size_t i = 0; i < node_count; i++)
  839. {
  840. MXNetNode& n = nodes[i];
  841. // assign global param reference
  842. n.nodes = &nodes;
  843. n.params = &params;
  844. const std::string& output_name = n.name;
  845. n.output_size = 1;
  846. if (n.op == "null")
  847. {
  848. if (n.is_weight())
  849. {
  850. weight_nodes.push_back(i);
  851. }
  852. else
  853. {
  854. if (n.has_attr("__init__"))
  855. {
  856. // init weight param
  857. MXNetParam pi;
  858. pi.name = n.name;
  859. pi.init = (std::string)n.attr("__init__");
  860. params.push_back(pi);
  861. weight_nodes.push_back(i);
  862. }
  863. else
  864. {
  865. // null node without data, treat it as network input
  866. }
  867. }
  868. continue;
  869. }
  870. else if (n.op == "_contrib_MultiBoxTarget")
  871. {
  872. n.output_size = 3;
  873. }
  874. else if (n.op == "SliceChannel")
  875. {
  876. n.output_size = n.attr("num_outputs");
  877. }
  878. // distinguish weights and inputs
  879. std::vector<int> weights;
  880. std::vector<int> inputs;
  881. for (int j = 0; j < (int)n.inputs.size(); j++)
  882. {
  883. int input_index = n.inputs[j];
  884. if (nodes[input_index].is_weight())
  885. {
  886. weights.push_back(input_index);
  887. continue;
  888. }
  889. inputs.push_back(input_index);
  890. }
  891. n.inputs = inputs;
  892. n.weights = weights;
  893. if (n.op == "_contrib_MultiBoxDetection")
  894. {
  895. // reorder input blob
  896. int temp = n.inputs[0];
  897. n.inputs[0] = n.inputs[1];
  898. n.inputs[1] = temp;
  899. }
  900. // input
  901. for (int j = 0; j < (int)n.inputs.size(); j++)
  902. {
  903. int input_index = n.inputs[j];
  904. int subinput_index = n.subinputs[j];
  905. std::string input_name = nodes[input_index].name;
  906. // fprintf(stderr, "input = %s\n", input_name.c_str());
  907. if (subinput_index != 0)
  908. {
  909. char subinputsuffix[256];
  910. sprintf(subinputsuffix, "_subncnn_%d", subinput_index);
  911. input_name = input_name + subinputsuffix;
  912. }
  913. blob_names.insert(input_name);
  914. int input_uid = input_index | (subinput_index << 16);
  915. if (node_reference.find(input_uid) == node_reference.end())
  916. {
  917. node_reference[input_uid] = 1;
  918. }
  919. else
  920. {
  921. node_reference[input_uid] = node_reference[input_uid] + 1;
  922. }
  923. }
  924. // output
  925. // fprintf(stderr, "output = %s\n", output_name.c_str());
  926. blob_names.insert(output_name);
  927. for (int j = 1; j < n.output_size; j++)
  928. {
  929. char subinputsuffix[256];
  930. sprintf(subinputsuffix, "_%d", j);
  931. std::string output_name_j = output_name + subinputsuffix;
  932. blob_names.insert(output_name_j);
  933. }
  934. }
  935. // for (std::map<int, int>::iterator it = node_reference.begin(); it != node_reference.end(); it++)
  936. // {
  937. // fprintf(stderr, "ref %d %d\n", it->first, it->second);
  938. // }
  939. // op chain fusion
  940. int reduced_node_count = 0;
  941. fuse_shufflechannel(nodes, params, node_reference, blob_names, reduced_node_count);
  942. fuse_hardsigmoid_hardswish(nodes, params, node_reference, blob_names, reduced_node_count);
  943. // remove node_reference entry with reference equals to one
  944. int splitncnn_blob_count = 0;
  945. std::map<size_t, int>::iterator it = node_reference.begin();
  946. while (it != node_reference.end())
  947. {
  948. if (it->second == 1)
  949. {
  950. node_reference.erase(it++);
  951. }
  952. else
  953. {
  954. splitncnn_blob_count += it->second;
  955. // fprintf(stderr, "%s %d\n", it->first.c_str(), it->second);
  956. ++it;
  957. }
  958. }
  959. // fprintf(stderr, "%d %d %d %d, %d %d\n", node_count, reduced_node_count, node_reference.size(), weight_nodes.size(), blob_names.size(), splitncnn_blob_count);
  960. fprintf(pp, "%zu %zu\n", node_count - reduced_node_count + node_reference.size() - weight_nodes.size(), blob_names.size() + splitncnn_blob_count);
  961. int internal_split = 0;
  962. for (size_t i = 0; i < node_count; i++)
  963. {
  964. const MXNetNode& n = nodes[i];
  965. if (n.op == "noop_reducedncnn")
  966. {
  967. continue;
  968. }
  969. if (n.op == "null")
  970. {
  971. if (n.is_weight())
  972. {
  973. continue;
  974. }
  975. fprintf(pp, "%-16s", "Input");
  976. }
  977. else if (n.op == "_contrib_BilinearResize2D")
  978. {
  979. fprintf(pp, "%-16s", "Interp");
  980. }
  981. else if (n.op == "_contrib_MultiBoxDetection")
  982. {
  983. fprintf(pp, "%-16s", "DetectionOutput");
  984. }
  985. else if (n.op == "_contrib_MultiBoxPrior")
  986. {
  987. fprintf(pp, "%-16s", "PriorBox");
  988. }
  989. else if (n.op == "_copy")
  990. {
  991. fprintf(pp, "%-16s", "Noop");
  992. }
  993. else if (n.op == "_div_scalar")
  994. {
  995. fprintf(pp, "%-16s", "BinaryOp");
  996. }
  997. else if (n.op == "_maximum_scalar")
  998. {
  999. fprintf(pp, "%-16s", "BinaryOp");
  1000. }
  1001. else if (n.op == "_minimum_scalar")
  1002. {
  1003. fprintf(pp, "%-16s", "BinaryOp");
  1004. }
  1005. else if (n.op == "_minus_scalar")
  1006. {
  1007. fprintf(pp, "%-16s", "BinaryOp");
  1008. }
  1009. else if (n.op == "_mul_scalar")
  1010. {
  1011. fprintf(pp, "%-16s", "BinaryOp");
  1012. }
  1013. else if (n.op == "_plus_scalar")
  1014. {
  1015. fprintf(pp, "%-16s", "BinaryOp");
  1016. }
  1017. else if (n.op == "_power_scalar")
  1018. {
  1019. fprintf(pp, "%-16s", "BinaryOp");
  1020. }
  1021. else if (n.op == "_rdiv_scalar")
  1022. {
  1023. fprintf(pp, "%-16s", "BinaryOp");
  1024. }
  1025. else if (n.op == "_rminus_scalar")
  1026. {
  1027. fprintf(pp, "%-16s", "BinaryOp");
  1028. }
  1029. else if (n.op == "abs")
  1030. {
  1031. fprintf(pp, "%-16s", "UnaryOp");
  1032. }
  1033. else if (n.op == "Activation")
  1034. {
  1035. std::string type = n.attr("act_type");
  1036. if (type == "relu")
  1037. {
  1038. fprintf(pp, "%-16s", "ReLU");
  1039. }
  1040. else if (type == "sigmoid")
  1041. {
  1042. fprintf(pp, "%-16s", "Sigmoid");
  1043. }
  1044. else if (type == "tanh")
  1045. {
  1046. fprintf(pp, "%-16s", "TanH");
  1047. }
  1048. }
  1049. else if (n.op == "add_n" || n.op == "ElementWiseSum")
  1050. {
  1051. fprintf(pp, "%-16s", "Eltwise");
  1052. }
  1053. else if (n.op == "arccos")
  1054. {
  1055. fprintf(pp, "%-16s", "UnaryOp");
  1056. }
  1057. else if (n.op == "arcsin")
  1058. {
  1059. fprintf(pp, "%-16s", "UnaryOp");
  1060. }
  1061. else if (n.op == "arctan")
  1062. {
  1063. fprintf(pp, "%-16s", "UnaryOp");
  1064. }
  1065. else if (n.op == "BatchNorm")
  1066. {
  1067. fprintf(pp, "%-16s", "BatchNorm");
  1068. }
  1069. else if (n.op == "broadcast_add")
  1070. {
  1071. fprintf(pp, "%-16s", "BinaryOp");
  1072. }
  1073. else if (n.op == "broadcast_div")
  1074. {
  1075. fprintf(pp, "%-16s", "BinaryOp");
  1076. }
  1077. else if (n.op == "broadcast_mul")
  1078. {
  1079. fprintf(pp, "%-16s", "BinaryOp");
  1080. }
  1081. else if (n.op == "broadcast_sub")
  1082. {
  1083. fprintf(pp, "%-16s", "BinaryOp");
  1084. }
  1085. else if (n.op == "ceil")
  1086. {
  1087. fprintf(pp, "%-16s", "UnaryOp");
  1088. }
  1089. else if (n.op == "clip")
  1090. {
  1091. fprintf(pp, "%-16s", "Clip");
  1092. }
  1093. else if (n.op == "Concat")
  1094. {
  1095. fprintf(pp, "%-16s", "Concat");
  1096. }
  1097. else if (n.op == "Convolution")
  1098. {
  1099. int num_group = n.attr("num_group");
  1100. if (num_group > 1)
  1101. {
  1102. fprintf(pp, "%-16s", "ConvolutionDepthWise");
  1103. }
  1104. else
  1105. {
  1106. fprintf(pp, "%-16s", "Convolution");
  1107. }
  1108. }
  1109. else if (n.op == "cos")
  1110. {
  1111. fprintf(pp, "%-16s", "UnaryOp");
  1112. }
  1113. else if (n.op == "Crop")
  1114. {
  1115. fprintf(pp, "%-16s", "Crop");
  1116. }
  1117. else if (n.op == "Deconvolution")
  1118. {
  1119. int num_group = n.attr("num_group");
  1120. if (num_group > 1)
  1121. {
  1122. fprintf(pp, "%-16s", "DeconvolutionDepthWise");
  1123. }
  1124. else
  1125. {
  1126. fprintf(pp, "%-16s", "Deconvolution");
  1127. }
  1128. }
  1129. else if (n.op == "dot")
  1130. {
  1131. fprintf(pp, "%-16s", "Gemm");
  1132. }
  1133. else if (n.op == "Dropout")
  1134. {
  1135. fprintf(pp, "%-16s", "Dropout");
  1136. }
  1137. else if (n.op == "elemwise_add" || n.op == "_add" || n.op == "_plus" || n.op == "_Plus")
  1138. {
  1139. fprintf(pp, "%-16s", "BinaryOp");
  1140. }
  1141. else if (n.op == "elemwise_div" || n.op == "_div" || n.op == "_Div")
  1142. {
  1143. fprintf(pp, "%-16s", "BinaryOp");
  1144. }
  1145. else if (n.op == "elemwise_mul" || n.op == "_mul" || n.op == "_Mul")
  1146. {
  1147. fprintf(pp, "%-16s", "BinaryOp");
  1148. }
  1149. else if (n.op == "elemwise_sub" || n.op == "_sub" || n.op == "_minus" || n.op == "_Minus")
  1150. {
  1151. fprintf(pp, "%-16s", "BinaryOp");
  1152. }
  1153. else if (n.op == "Embedding")
  1154. {
  1155. fprintf(pp, "%-16s", "Embed");
  1156. }
  1157. else if (n.op == "exp")
  1158. {
  1159. fprintf(pp, "%-16s", "UnaryOp");
  1160. }
  1161. else if (n.op == "expand_dims")
  1162. {
  1163. fprintf(pp, "%-16s", "ExpandDims");
  1164. }
  1165. else if (n.op == "Flatten")
  1166. {
  1167. fprintf(pp, "%-16s", "Flatten");
  1168. }
  1169. else if (n.op == "floor")
  1170. {
  1171. fprintf(pp, "%-16s", "UnaryOp");
  1172. }
  1173. else if (n.op == "FullyConnected")
  1174. {
  1175. fprintf(pp, "%-16s", "InnerProduct");
  1176. }
  1177. else if (n.op == "HardSigmoid")
  1178. {
  1179. fprintf(pp, "%-16s", "HardSigmoid");
  1180. }
  1181. else if (n.op == "HardSwish")
  1182. {
  1183. fprintf(pp, "%-16s", "HardSwish");
  1184. }
  1185. else if (n.op == "InstanceNorm")
  1186. {
  1187. fprintf(pp, "%-16s", "InstanceNorm");
  1188. }
  1189. else if (n.op == "L2Normalization")
  1190. {
  1191. fprintf(pp, "%-16s", "Normalize");
  1192. }
  1193. else if (n.op == "LeakyReLU")
  1194. {
  1195. std::string type = n.attr("act_type");
  1196. if (type == "elu")
  1197. {
  1198. fprintf(pp, "%-16s", "ELU");
  1199. }
  1200. else if (type == "leaky" || type.empty())
  1201. {
  1202. fprintf(pp, "%-16s", "ReLU");
  1203. }
  1204. else if (type == "prelu")
  1205. {
  1206. fprintf(pp, "%-16s", "PReLU");
  1207. }
  1208. }
  1209. else if (n.op == "LinearRegressionOutput")
  1210. {
  1211. fprintf(pp, "%-16s", "Noop");
  1212. }
  1213. else if (n.op == "log")
  1214. {
  1215. fprintf(pp, "%-16s", "UnaryOp");
  1216. }
  1217. else if (n.op == "LogisticRegressionOutput")
  1218. {
  1219. fprintf(pp, "%-16s", "Sigmoid");
  1220. }
  1221. else if (n.op == "MAERegressionOutput")
  1222. {
  1223. fprintf(pp, "%-16s", "Noop");
  1224. }
  1225. else if (n.op == "max" || n.op == "mean" || n.op == "min" || n.op == "prod" || n.op == "sum")
  1226. {
  1227. fprintf(pp, "%-16s", "Reduction");
  1228. }
  1229. else if (n.op == "maximum")
  1230. {
  1231. fprintf(pp, "%-16s", "BinaryOp");
  1232. }
  1233. else if (n.op == "minimum")
  1234. {
  1235. fprintf(pp, "%-16s", "BinaryOp");
  1236. }
  1237. else if (n.op == "negative")
  1238. {
  1239. fprintf(pp, "%-16s", "UnaryOp");
  1240. }
  1241. else if (n.op == "Pad")
  1242. {
  1243. fprintf(pp, "%-16s", "Padding");
  1244. }
  1245. else if (n.op == "Pooling")
  1246. {
  1247. fprintf(pp, "%-16s", "Pooling");
  1248. }
  1249. else if (n.op == "reciprocal")
  1250. {
  1251. fprintf(pp, "%-16s", "UnaryOp");
  1252. }
  1253. else if (n.op == "relu")
  1254. {
  1255. fprintf(pp, "%-16s", "ReLU");
  1256. }
  1257. else if (n.op == "Reshape")
  1258. {
  1259. fprintf(pp, "%-16s", "Reshape");
  1260. }
  1261. else if (n.op == "ShuffleChannel")
  1262. {
  1263. fprintf(pp, "%-16s", "ShuffleChannel");
  1264. }
  1265. else if (n.op == "sigmoid")
  1266. {
  1267. fprintf(pp, "%-16s", "Sigmoid");
  1268. }
  1269. else if (n.op == "sin")
  1270. {
  1271. fprintf(pp, "%-16s", "UnaryOp");
  1272. }
  1273. else if (n.op == "slice")
  1274. {
  1275. fprintf(pp, "%-16s", "Crop");
  1276. }
  1277. else if (n.op == "slice_axis")
  1278. {
  1279. fprintf(pp, "%-16s", "Crop");
  1280. }
  1281. else if (n.op == "SliceChannel")
  1282. {
  1283. fprintf(pp, "%-16s", "Slice");
  1284. }
  1285. else if (n.op == "SoftmaxActivation")
  1286. {
  1287. fprintf(pp, "%-16s", "Softmax");
  1288. }
  1289. else if (n.op == "SoftmaxOutput")
  1290. {
  1291. fprintf(pp, "%-16s", "Softmax");
  1292. }
  1293. else if (n.op == "softmax")
  1294. {
  1295. fprintf(pp, "%-16s", "Softmax");
  1296. }
  1297. else if (n.op == "sqrt")
  1298. {
  1299. fprintf(pp, "%-16s", "UnaryOp");
  1300. }
  1301. else if (n.op == "square")
  1302. {
  1303. fprintf(pp, "%-16s", "UnaryOp");
  1304. }
  1305. else if (n.op == "squeeze")
  1306. {
  1307. fprintf(pp, "%-16s", "Squeeze");
  1308. }
  1309. else if (n.op == "tan")
  1310. {
  1311. fprintf(pp, "%-16s", "UnaryOp");
  1312. }
  1313. else if (n.op == "tanh")
  1314. {
  1315. fprintf(pp, "%-16s", "TanH");
  1316. }
  1317. else if (n.op == "Transpose" || n.op == "transpose")
  1318. {
  1319. fprintf(pp, "%-16s", "Permute");
  1320. }
  1321. else if (n.op == "UpSampling")
  1322. {
  1323. std::string sample_type = n.attr("sample_type");
  1324. if (sample_type == "nearest")
  1325. {
  1326. fprintf(pp, "%-16s", "Interp");
  1327. }
  1328. else if (sample_type == "bilinear")
  1329. {
  1330. fprintf(pp, "%-16s", "DeconvolutionDepthWise");
  1331. }
  1332. }
  1333. else
  1334. {
  1335. fprintf(stderr, "%s not supported yet!\n", n.op.c_str());
  1336. fprintf(pp, "%-16s", n.op.c_str());
  1337. }
  1338. size_t input_size = n.inputs.size();
  1339. for (int j = 0; j < (int)n.inputs.size(); j++)
  1340. {
  1341. int input_index = n.inputs[j];
  1342. if (nodes[input_index].is_weight())
  1343. {
  1344. input_size--;
  1345. }
  1346. }
  1347. if (n.op == "SoftmaxOutput" || n.op == "LogisticRegressionOutput")
  1348. {
  1349. // drop label
  1350. input_size--;
  1351. }
  1352. fprintf(pp, " %-32s %zd %d", n.name.c_str(), input_size, n.output_size);
  1353. for (int j = 0; j < (int)n.inputs.size(); j++)
  1354. {
  1355. int input_index = n.inputs[j];
  1356. int subinput_index = n.subinputs[j];
  1357. if (nodes[input_index].is_weight())
  1358. {
  1359. continue;
  1360. }
  1361. if (n.op == "SoftmaxOutput" || n.op == "LogisticRegressionOutput")
  1362. {
  1363. // drop label
  1364. if (j == 1)
  1365. continue;
  1366. }
  1367. std::string input_name = nodes[input_index].name;
  1368. if (subinput_index != 0)
  1369. {
  1370. char subinputsuffix[256];
  1371. sprintf(subinputsuffix, "_subncnn_%d", subinput_index);
  1372. input_name = input_name + subinputsuffix;
  1373. }
  1374. int input_uid = input_index | (subinput_index << 16);
  1375. if (node_reference.find(input_uid) != node_reference.end())
  1376. {
  1377. int refidx = node_reference[input_uid] - 1;
  1378. node_reference[input_uid] = refidx;
  1379. char splitsuffix[256];
  1380. sprintf(splitsuffix, "_splitncnn_%d", refidx);
  1381. input_name = input_name + splitsuffix;
  1382. }
  1383. fprintf(pp, " %s", input_name.c_str());
  1384. }
  1385. fprintf(pp, " %s", n.name.c_str());
  1386. for (int j = 1; j < n.output_size; j++)
  1387. {
  1388. fprintf(pp, " %s_subncnn_%d", n.name.c_str(), j);
  1389. }
  1390. if (n.op == "null")
  1391. {
  1392. // dummy input shape
  1393. // fprintf(pp, " 0 0 0");
  1394. }
  1395. else if (n.op == "_contrib_BilinearResize2D")
  1396. {
  1397. float scale_height = n.has_attr("scale_height") ? n.attr("scale_height") : 1.f;
  1398. float scale_width = n.has_attr("scale_width") ? n.attr("scale_width") : 1.f;
  1399. int height = n.has_attr("scale_height") ? 0 : n.attr("height");
  1400. int width = n.has_attr("scale_width") ? 0 : n.attr("width");
  1401. fprintf(pp, " 0=2");
  1402. fprintf(pp, " 1=%e", scale_height);
  1403. fprintf(pp, " 2=%e", scale_width);
  1404. fprintf(pp, " 3=%d", height);
  1405. fprintf(pp, " 4=%d", width);
  1406. }
  1407. else if (n.op == "_contrib_MultiBoxDetection")
  1408. {
  1409. float threshold = n.has_attr("threshold") ? n.attr("threshold") : 0.01f;
  1410. float nms_threshold = n.has_attr("nms_threshold") ? n.attr("nms_threshold") : 0.5f;
  1411. int nms_topk = n.has_attr("nms_topk") ? n.attr("nms_topk") : 300;
  1412. fprintf(pp, " 0=-233");
  1413. fprintf(pp, " 1=%e", nms_threshold);
  1414. fprintf(pp, " 2=%d", nms_topk);
  1415. int keep_top_k = 100;
  1416. fprintf(pp, " 3=%d", keep_top_k);
  1417. fprintf(pp, " 4=%e", threshold);
  1418. std::vector<float> variances = n.attr("variances");
  1419. if (variances.empty())
  1420. {
  1421. fprintf(pp, " 5=0.1");
  1422. fprintf(pp, " 6=0.1");
  1423. fprintf(pp, " 7=0.2");
  1424. fprintf(pp, " 8=0.2");
  1425. }
  1426. else
  1427. {
  1428. fprintf(pp, " 5=%e", variances[0]);
  1429. fprintf(pp, " 6=%e", variances[1]);
  1430. fprintf(pp, " 7=%e", variances[2]);
  1431. fprintf(pp, " 8=%e", variances[3]);
  1432. }
  1433. }
  1434. else if (n.op == "_contrib_MultiBoxPrior")
  1435. {
  1436. // mxnet-ssd encode size as scale factor, fill min_size
  1437. std::vector<float> sizes = n.attr("sizes");
  1438. fprintf(pp, " -23300=%d", (int)sizes.size());
  1439. for (int j = 0; j < (int)sizes.size(); j++)
  1440. {
  1441. fprintf(pp, ",%e", sizes[j]);
  1442. }
  1443. std::vector<float> aspect_ratios = n.attr("ratios");
  1444. fprintf(pp, " -23302=%d", (int)aspect_ratios.size());
  1445. for (int j = 0; j < (int)aspect_ratios.size(); j++)
  1446. {
  1447. fprintf(pp, ",%e", aspect_ratios[j]);
  1448. }
  1449. int flip = 0;
  1450. fprintf(pp, " 7=%d", flip);
  1451. int clip = n.attr("clip");
  1452. fprintf(pp, " 8=%d", clip);
  1453. // auto image size
  1454. fprintf(pp, " 9=-233");
  1455. fprintf(pp, " 10=-233");
  1456. std::vector<float> steps = n.attr("steps");
  1457. if (steps.empty() || (steps[0] == -1.f && steps[1] == -1.f))
  1458. {
  1459. // auto step
  1460. fprintf(pp, " 11=-233.0");
  1461. fprintf(pp, " 12=-233.0");
  1462. }
  1463. else
  1464. {
  1465. fprintf(pp, " 11=%e", steps[1]);
  1466. fprintf(pp, " 12=%e", steps[0]);
  1467. }
  1468. std::vector<float> offsets = n.attr("offsets");
  1469. if (offsets.empty() || (offsets[0] == 0.5f && offsets[1] == 0.5f))
  1470. {
  1471. fprintf(pp, " 13=0.5");
  1472. }
  1473. else
  1474. {
  1475. fprintf(stderr, "Unsupported offsets param! %g %g\n", offsets[0], offsets[1]);
  1476. }
  1477. }
  1478. else if (n.op == "_copy")
  1479. {
  1480. // noop
  1481. }
  1482. else if (n.op == "_div_scalar")
  1483. {
  1484. int op_type = 3;
  1485. int with_scalar = 1;
  1486. float scalar = n.attr("scalar");
  1487. fprintf(pp, " 0=%d", op_type);
  1488. fprintf(pp, " 1=%d", with_scalar);
  1489. fprintf(pp, " 2=%e", scalar);
  1490. }
  1491. else if (n.op == "_maximum_scalar")
  1492. {
  1493. int op_type = 4;
  1494. int with_scalar = 1;
  1495. float scalar = n.attr("scalar");
  1496. fprintf(pp, " 0=%d", op_type);
  1497. fprintf(pp, " 1=%d", with_scalar);
  1498. fprintf(pp, " 2=%e", scalar);
  1499. }
  1500. else if (n.op == "_minimum_scalar")
  1501. {
  1502. int op_type = 5;
  1503. int with_scalar = 1;
  1504. float scalar = n.attr("scalar");
  1505. fprintf(pp, " 0=%d", op_type);
  1506. fprintf(pp, " 1=%d", with_scalar);
  1507. fprintf(pp, " 2=%e", scalar);
  1508. }
  1509. else if (n.op == "_minus_scalar")
  1510. {
  1511. int op_type = 1;
  1512. int with_scalar = 1;
  1513. float scalar = n.attr("scalar");
  1514. fprintf(pp, " 0=%d", op_type);
  1515. fprintf(pp, " 1=%d", with_scalar);
  1516. fprintf(pp, " 2=%e", scalar);
  1517. }
  1518. else if (n.op == "_mul_scalar")
  1519. {
  1520. int op_type = 2;
  1521. int with_scalar = 1;
  1522. float scalar = n.attr("scalar");
  1523. fprintf(pp, " 0=%d", op_type);
  1524. fprintf(pp, " 1=%d", with_scalar);
  1525. fprintf(pp, " 2=%e", scalar);
  1526. }
  1527. else if (n.op == "_plus_scalar")
  1528. {
  1529. int op_type = 0;
  1530. int with_scalar = 1;
  1531. float scalar = n.attr("scalar");
  1532. fprintf(pp, " 0=%d", op_type);
  1533. fprintf(pp, " 1=%d", with_scalar);
  1534. fprintf(pp, " 2=%e", scalar);
  1535. }
  1536. else if (n.op == "_power_scalar")
  1537. {
  1538. int op_type = 6;
  1539. int with_scalar = 1;
  1540. float scalar = n.attr("scalar");
  1541. fprintf(pp, " 0=%d", op_type);
  1542. fprintf(pp, " 1=%d", with_scalar);
  1543. fprintf(pp, " 2=%e", scalar);
  1544. }
  1545. else if (n.op == "_rdiv_scalar")
  1546. {
  1547. int op_type = 8;
  1548. int with_scalar = 1;
  1549. float scalar = n.attr("scalar");
  1550. fprintf(pp, " 0=%d", op_type);
  1551. fprintf(pp, " 1=%d", with_scalar);
  1552. fprintf(pp, " 2=%e", scalar);
  1553. }
  1554. else if (n.op == "_rminus_scalar")
  1555. {
  1556. int op_type = 7;
  1557. int with_scalar = 1;
  1558. float scalar = n.attr("scalar");
  1559. fprintf(pp, " 0=%d", op_type);
  1560. fprintf(pp, " 1=%d", with_scalar);
  1561. fprintf(pp, " 2=%e", scalar);
  1562. }
  1563. else if (n.op == "abs")
  1564. {
  1565. int op_type = 0;
  1566. fprintf(pp, " 0=%d", op_type);
  1567. }
  1568. else if (n.op == "Activation")
  1569. {
  1570. std::string type = n.attr("act_type");
  1571. if (type == "relu")
  1572. {
  1573. // fprintf(pp, " 0=%e", 0.f);
  1574. }
  1575. }
  1576. else if (n.op == "add_n" || n.op == "ElementWiseSum")
  1577. {
  1578. int op_type = 1;
  1579. fprintf(pp, " 0=%d", op_type);
  1580. }
  1581. else if (n.op == "arccos")
  1582. {
  1583. int op_type = 13;
  1584. fprintf(pp, " 0=%d", op_type);
  1585. }
  1586. else if (n.op == "arcsin")
  1587. {
  1588. int op_type = 12;
  1589. fprintf(pp, " 0=%d", op_type);
  1590. }
  1591. else if (n.op == "arctan")
  1592. {
  1593. int op_type = 14;
  1594. fprintf(pp, " 0=%d", op_type);
  1595. }
  1596. else if (n.op == "BatchNorm")
  1597. {
  1598. float eps = 1e-3f;
  1599. if (n.has_attr("eps"))
  1600. {
  1601. eps = n.attr("eps");
  1602. }
  1603. std::vector<float> slope_data = n.weight(0);
  1604. std::vector<float> bias_data = n.weight(1);
  1605. int channels = static_cast<int>(slope_data.size());
  1606. std::vector<float> mean_data = n.weight(2, channels);
  1607. std::vector<float> var_data = n.weight(3, channels);
  1608. for (int j = 0; j < (int)var_data.size(); j++)
  1609. {
  1610. var_data[j] += eps;
  1611. }
  1612. fprintf(pp, " 0=%d", channels);
  1613. int fix_gamma = n.has_attr("fix_gamma") ? n.attr("fix_gamma") : 0;
  1614. if (fix_gamma)
  1615. {
  1616. // slope data are all 0 here, force set 1
  1617. for (int j = 0; j < channels; j++)
  1618. {
  1619. slope_data[j] = 1.f;
  1620. }
  1621. }
  1622. fwrite(slope_data.data(), sizeof(float), slope_data.size(), bp);
  1623. fwrite(mean_data.data(), sizeof(float), mean_data.size(), bp);
  1624. fwrite(var_data.data(), sizeof(float), var_data.size(), bp);
  1625. fwrite(bias_data.data(), sizeof(float), bias_data.size(), bp);
  1626. }
  1627. else if (n.op == "broadcast_add")
  1628. {
  1629. int op_type = 0;
  1630. fprintf(pp, " 0=%d", op_type);
  1631. }
  1632. else if (n.op == "broadcast_div")
  1633. {
  1634. int op_type = 3;
  1635. fprintf(pp, " 0=%d", op_type);
  1636. }
  1637. else if (n.op == "broadcast_mul")
  1638. {
  1639. int op_type = 2;
  1640. fprintf(pp, " 0=%d", op_type);
  1641. }
  1642. else if (n.op == "broadcast_sub")
  1643. {
  1644. int op_type = 1;
  1645. fprintf(pp, " 0=%d", op_type);
  1646. }
  1647. else if (n.op == "ceil")
  1648. {
  1649. int op_type = 3;
  1650. fprintf(pp, " 0=%d", op_type);
  1651. }
  1652. else if (n.op == "clip")
  1653. {
  1654. float min = n.attr("a_min");
  1655. float max = n.attr("a_max");
  1656. fprintf(pp, " 0=%e", min);
  1657. fprintf(pp, " 1=%e", max);
  1658. }
  1659. else if (n.op == "Concat")
  1660. {
  1661. int dim = n.has_attr("dim") ? n.attr("dim") : 1;
  1662. fprintf(pp, " 0=%d", dim - 1);
  1663. }
  1664. else if (n.op == "Convolution")
  1665. {
  1666. int num_filter = n.attr("num_filter");
  1667. std::vector<int> kernel = n.attr("kernel");
  1668. std::vector<int> dilate = n.attr("dilate");
  1669. std::vector<int> stride = n.attr("stride");
  1670. std::vector<int> pad = n.attr("pad");
  1671. int no_bias = n.attr("no_bias");
  1672. int num_group = n.attr("num_group");
  1673. std::vector<float> weight_data = n.weight(0);
  1674. std::vector<float> bias_data = n.weight(1);
  1675. fprintf(pp, " 0=%d", num_filter);
  1676. if (kernel.size() == 1)
  1677. {
  1678. fprintf(pp, " 1=%d", kernel[0]);
  1679. }
  1680. else if (kernel.size() == 2)
  1681. {
  1682. fprintf(pp, " 1=%d", kernel[1]);
  1683. fprintf(pp, " 11=%d", kernel[0]);
  1684. }
  1685. if (dilate.size() == 1)
  1686. {
  1687. fprintf(pp, " 2=%d", dilate[0]);
  1688. }
  1689. else if (dilate.size() == 2)
  1690. {
  1691. fprintf(pp, " 2=%d", dilate[1]);
  1692. fprintf(pp, " 12=%d", dilate[0]);
  1693. }
  1694. if (stride.size() == 1)
  1695. {
  1696. fprintf(pp, " 3=%d", stride[0]);
  1697. }
  1698. else if (stride.size() == 2)
  1699. {
  1700. fprintf(pp, " 3=%d", stride[1]);
  1701. fprintf(pp, " 13=%d", stride[0]);
  1702. }
  1703. if (pad.size() == 1)
  1704. {
  1705. fprintf(pp, " 4=%d", pad[0]);
  1706. }
  1707. else if (pad.size() == 2)
  1708. {
  1709. fprintf(pp, " 4=%d", pad[1]);
  1710. fprintf(pp, " 14=%d", pad[0]);
  1711. }
  1712. fprintf(pp, " 5=%d", no_bias == 1 ? 0 : 1);
  1713. fprintf(pp, " 6=%d", (int)weight_data.size());
  1714. if (num_group > 1)
  1715. {
  1716. fprintf(pp, " 7=%d", num_group);
  1717. }
  1718. int quantize_tag = 0;
  1719. fwrite(&quantize_tag, sizeof(int), 1, bp);
  1720. fwrite(weight_data.data(), sizeof(float), weight_data.size(), bp);
  1721. fwrite(bias_data.data(), sizeof(float), bias_data.size(), bp);
  1722. }
  1723. else if (n.op == "cos")
  1724. {
  1725. int op_type = 10;
  1726. fprintf(pp, " 0=%d", op_type);
  1727. }
  1728. else if (n.op == "Crop")
  1729. {
  1730. int num_args = n.attr("num_args");
  1731. std::vector<int> offset = n.attr("offset");
  1732. int woffset = 0;
  1733. int hoffset = 0;
  1734. if (offset.size() == 2)
  1735. {
  1736. woffset = offset[1];
  1737. hoffset = offset[0];
  1738. }
  1739. fprintf(pp, " 0=%d", woffset);
  1740. fprintf(pp, " 1=%d", hoffset);
  1741. fprintf(pp, " 2=0");
  1742. if (num_args == 1)
  1743. {
  1744. std::vector<int> h_w = n.attr("h_w");
  1745. fprintf(pp, " 3=%d", h_w[1]);
  1746. fprintf(pp, " 4=%d", h_w[0]);
  1747. fprintf(pp, " 5=0");
  1748. }
  1749. }
  1750. else if (n.op == "Deconvolution")
  1751. {
  1752. int num_filter = n.attr("num_filter");
  1753. std::vector<int> kernel = n.attr("kernel");
  1754. std::vector<int> dilate = n.attr("dilate");
  1755. std::vector<int> stride = n.attr("stride");
  1756. std::vector<int> pad = n.attr("pad");
  1757. std::vector<int> adj = n.attr("adj");
  1758. std::vector<int> target_shape = n.attr("target_shape");
  1759. int no_bias = n.attr("no_bias");
  1760. int num_group = n.attr("num_group");
  1761. std::vector<float> weight_data = n.weight(0);
  1762. std::vector<float> bias_data = n.weight(1);
  1763. fprintf(pp, " 0=%d", num_filter);
  1764. if (kernel.size() == 1)
  1765. {
  1766. fprintf(pp, " 1=%d", kernel[0]);
  1767. }
  1768. else if (kernel.size() == 2)
  1769. {
  1770. fprintf(pp, " 1=%d", kernel[1]);
  1771. fprintf(pp, " 11=%d", kernel[0]);
  1772. }
  1773. if (dilate.size() == 1)
  1774. {
  1775. fprintf(pp, " 2=%d", dilate[0]);
  1776. }
  1777. else if (dilate.size() == 2)
  1778. {
  1779. fprintf(pp, " 2=%d", dilate[1]);
  1780. fprintf(pp, " 12=%d", dilate[0]);
  1781. }
  1782. if (stride.size() == 1)
  1783. {
  1784. fprintf(pp, " 3=%d", stride[0]);
  1785. }
  1786. else if (stride.size() == 2)
  1787. {
  1788. fprintf(pp, " 3=%d", stride[1]);
  1789. fprintf(pp, " 13=%d", stride[0]);
  1790. }
  1791. if (target_shape.size() == 0)
  1792. {
  1793. if (pad.size() == 1)
  1794. {
  1795. fprintf(pp, " 4=%d", pad[0]);
  1796. }
  1797. else if (pad.size() == 2)
  1798. {
  1799. fprintf(pp, " 4=%d", pad[1]);
  1800. fprintf(pp, " 14=%d", pad[0]);
  1801. }
  1802. if (adj.size() == 1)
  1803. {
  1804. fprintf(pp, " 18=%d", adj[0]);
  1805. }
  1806. else if (adj.size() == 2)
  1807. {
  1808. fprintf(pp, " 18=%d", adj[1]);
  1809. fprintf(pp, " 19=%d", adj[0]);
  1810. }
  1811. }
  1812. else
  1813. {
  1814. fprintf(pp, " 4=-233");
  1815. if (target_shape.size() == 1)
  1816. {
  1817. fprintf(pp, " 20=%d", target_shape[0]);
  1818. }
  1819. else if (target_shape.size() == 2)
  1820. {
  1821. fprintf(pp, " 20=%d", target_shape[1]);
  1822. fprintf(pp, " 21=%d", target_shape[0]);
  1823. }
  1824. }
  1825. fprintf(pp, " 5=%d", no_bias == 1 ? 0 : 1);
  1826. fprintf(pp, " 6=%d", (int)weight_data.size());
  1827. if (num_group > 1)
  1828. {
  1829. fprintf(pp, " 7=%d", num_group);
  1830. }
  1831. int quantize_tag = 0;
  1832. fwrite(&quantize_tag, sizeof(int), 1, bp);
  1833. int maxk = 0;
  1834. if (kernel.size() == 2)
  1835. {
  1836. maxk = kernel[1] * kernel[0];
  1837. }
  1838. else
  1839. {
  1840. maxk = kernel[0] * kernel[0];
  1841. }
  1842. for (int g = 0; g < num_group; g++)
  1843. {
  1844. // reorder weight from inch-outch to outch-inch
  1845. int num_filter_g = num_filter / num_group;
  1846. int num_input = static_cast<int>(weight_data.size() / maxk / num_filter_g / num_group);
  1847. const float* weight_data_ptr = weight_data.data() + g * maxk * num_filter_g * num_input;
  1848. for (int k = 0; k < num_filter_g; k++)
  1849. {
  1850. for (int j = 0; j < num_input; j++)
  1851. {
  1852. fwrite(weight_data_ptr + (j * num_filter_g + k) * maxk, sizeof(float), maxk, bp);
  1853. }
  1854. }
  1855. }
  1856. fwrite(bias_data.data(), sizeof(float), bias_data.size(), bp);
  1857. }
  1858. else if (n.op == "dot")
  1859. {
  1860. int transpose_a = n.attr("transpose_a");
  1861. int transpose_b = n.attr("transpose_b");
  1862. fprintf(pp, " 0=1.0"); // alpha
  1863. fprintf(pp, " 1=1.0"); // beta
  1864. fprintf(pp, " 2=%d", transpose_a);
  1865. fprintf(pp, " 3=%d", transpose_b);
  1866. }
  1867. else if (n.op == "Dropout")
  1868. {
  1869. // float p = n.attr("p");
  1870. // fprintf(pp, " 0=%d", p);
  1871. }
  1872. else if (n.op == "elemwise_add" || n.op == "_add" || n.op == "_plus" || n.op == "_Plus")
  1873. {
  1874. int op_type = 0;
  1875. fprintf(pp, " 0=%d", op_type);
  1876. }
  1877. else if (n.op == "elemwise_div" || n.op == "_div" || n.op == "_Div")
  1878. {
  1879. int op_type = 3;
  1880. fprintf(pp, " 0=%d", op_type);
  1881. }
  1882. else if (n.op == "elemwise_mul" || n.op == "_mul" || n.op == "_Mul")
  1883. {
  1884. int op_type = 2;
  1885. fprintf(pp, " 0=%d", op_type);
  1886. }
  1887. else if (n.op == "elemwise_sub" || n.op == "_sub" || n.op == "_minus" || n.op == "_Minus")
  1888. {
  1889. int op_type = 1;
  1890. fprintf(pp, " 0=%d", op_type);
  1891. }
  1892. else if (n.op == "Embedding")
  1893. {
  1894. int input_dim = n.attr("input_dim");
  1895. int output_dim = n.attr("output_dim");
  1896. std::vector<float> weight_data = n.weight(0);
  1897. fprintf(pp, " 0=%d", output_dim);
  1898. fprintf(pp, " 1=%d", input_dim);
  1899. fprintf(pp, " 3=%d", (int)weight_data.size());
  1900. int quantize_tag = 0;
  1901. fwrite(&quantize_tag, sizeof(int), 1, bp);
  1902. fwrite(weight_data.data(), sizeof(float), weight_data.size(), bp);
  1903. }
  1904. else if (n.op == "exp")
  1905. {
  1906. int op_type = 7;
  1907. fprintf(pp, " 0=%d", op_type);
  1908. }
  1909. else if (n.op == "expand_dims")
  1910. {
  1911. int axis = n.attr("axis");
  1912. fprintf(pp, " -23303=1,%d", axis);
  1913. }
  1914. else if (n.op == "Flatten")
  1915. {
  1916. // no param
  1917. }
  1918. else if (n.op == "floor")
  1919. {
  1920. int op_type = 2;
  1921. fprintf(pp, " 0=%d", op_type);
  1922. }
  1923. else if (n.op == "FullyConnected")
  1924. {
  1925. int num_hidden = n.attr("num_hidden");
  1926. int no_bias = n.attr("no_bias");
  1927. // int flatten = n.attr("flatten");
  1928. // TODO flatten
  1929. std::vector<float> weight_data = n.weight(0);
  1930. std::vector<float> bias_data = n.weight(1);
  1931. fprintf(pp, " 0=%d", num_hidden);
  1932. fprintf(pp, " 1=%d", no_bias == 1 ? 0 : 1);
  1933. fprintf(pp, " 2=%d", (int)weight_data.size());
  1934. int quantize_tag = 0;
  1935. fwrite(&quantize_tag, sizeof(int), 1, bp);
  1936. fwrite(weight_data.data(), sizeof(float), weight_data.size(), bp);
  1937. fwrite(bias_data.data(), sizeof(float), bias_data.size(), bp);
  1938. }
  1939. else if (n.op == "HardSigmoid")
  1940. {
  1941. float alpha = n.attr("alpha");
  1942. float beta = n.attr("beta");
  1943. fprintf(pp, " 0=%e", alpha);
  1944. fprintf(pp, " 1=%e", beta);
  1945. }
  1946. else if (n.op == "HardSwish")
  1947. {
  1948. float alpha = n.attr("alpha");
  1949. float beta = n.attr("beta");
  1950. fprintf(pp, " 0=%e", alpha);
  1951. fprintf(pp, " 1=%e", beta);
  1952. }
  1953. else if (n.op == "InstanceNorm")
  1954. {
  1955. float eps = n.has_attr("eps") ? n.attr("eps") : 0.001f;
  1956. std::vector<float> gamma_data = n.weight(0);
  1957. std::vector<float> beta_data = n.weight(1);
  1958. fprintf(pp, " 0=%d", (int)gamma_data.size());
  1959. fprintf(pp, " 1=%e", eps);
  1960. fwrite(gamma_data.data(), sizeof(float), gamma_data.size(), bp);
  1961. fwrite(beta_data.data(), sizeof(float), beta_data.size(), bp);
  1962. }
  1963. else if (n.op == "L2Normalization")
  1964. {
  1965. std::string mode = n.attr("mode");
  1966. float eps = n.has_attr("eps") ? n.attr("eps") : 1e-10f;
  1967. int across_spatial = 0;
  1968. int across_channel = 1;
  1969. int channel_shared = 1;
  1970. int scale_data_size = 1;
  1971. if (mode == "instance")
  1972. {
  1973. across_spatial = 1;
  1974. across_channel = 1;
  1975. }
  1976. else if (mode == "channel")
  1977. {
  1978. across_spatial = 0;
  1979. across_channel = 1;
  1980. }
  1981. else if (mode == "spatial")
  1982. {
  1983. across_spatial = 1;
  1984. across_channel = 0;
  1985. }
  1986. fprintf(pp, " 0=%d", across_spatial);
  1987. fprintf(pp, " 4=%d", across_channel);
  1988. fprintf(pp, " 1=%d", channel_shared);
  1989. fprintf(pp, " 2=%e", eps);
  1990. fprintf(pp, " 3=%d", scale_data_size);
  1991. const float scale_data[1] = {1.f};
  1992. fwrite(scale_data, sizeof(float), 1, bp);
  1993. }
  1994. else if (n.op == "LeakyReLU")
  1995. {
  1996. std::string type = n.attr("act_type");
  1997. if (type == "elu")
  1998. {
  1999. float slope = n.has_attr("slope") ? n.attr("slope") : 0.25f;
  2000. fprintf(pp, " 0=%e", slope);
  2001. }
  2002. else if (type == "leaky" || type.empty())
  2003. {
  2004. float slope = n.has_attr("slope") ? n.attr("slope") : 0.25f;
  2005. fprintf(pp, " 0=%e", slope);
  2006. }
  2007. else if (type == "prelu")
  2008. {
  2009. std::vector<float> weight_data = n.weight(0);
  2010. fprintf(pp, " 0=%d", (int)weight_data.size());
  2011. fwrite(weight_data.data(), sizeof(float), weight_data.size(), bp);
  2012. }
  2013. }
  2014. else if (n.op == "LinearRegressionOutput")
  2015. {
  2016. // noop
  2017. }
  2018. else if (n.op == "log")
  2019. {
  2020. int op_type = 8;
  2021. fprintf(pp, " 0=%d", op_type);
  2022. }
  2023. else if (n.op == "LogisticRegressionOutput")
  2024. {
  2025. // noop
  2026. }
  2027. else if (n.op == "MAERegressionOutput")
  2028. {
  2029. // noop
  2030. }
  2031. else if (n.op == "max" || n.op == "mean" || n.op == "min" || n.op == "prod" || n.op == "sum")
  2032. {
  2033. int operation = -233;
  2034. if (n.op == "max") operation = 4;
  2035. if (n.op == "mean") operation = 3;
  2036. if (n.op == "min") operation = 5;
  2037. if (n.op == "prod") operation = 6;
  2038. if (n.op == "sum") operation = 0;
  2039. std::vector<int> axis = n.attr("axis");
  2040. int keepdims = n.attr("keepdims");
  2041. fprintf(pp, " 0=%d", operation);
  2042. if (axis.empty())
  2043. {
  2044. // if axis not set, reduce all axis by default
  2045. fprintf(pp, " 1=%d", 1);
  2046. }
  2047. else
  2048. {
  2049. // if axis set, reduce according to axis
  2050. fprintf(pp, " 1=%d", 0);
  2051. fprintf(pp, " -23303=%zd", axis.size());
  2052. for (size_t j = 0; j < axis.size(); j++)
  2053. {
  2054. if (axis[j] == 0 || axis[j] > 3 || axis[j] < -3)
  2055. fprintf(stderr, "Unsupported reduction axis !\n");
  2056. fprintf(pp, ",%d", axis[j]);
  2057. }
  2058. }
  2059. fprintf(pp, " 4=%d", keepdims);
  2060. }
  2061. else if (n.op == "maximum")
  2062. {
  2063. int op_type = 4;
  2064. fprintf(pp, " 0=%d", op_type);
  2065. }
  2066. else if (n.op == "minimum")
  2067. {
  2068. int op_type = 5;
  2069. fprintf(pp, " 0=%d", op_type);
  2070. }
  2071. else if (n.op == "negative")
  2072. {
  2073. int op_type = 1;
  2074. fprintf(pp, " 0=%d", op_type);
  2075. }
  2076. else if (n.op == "Pad")
  2077. {
  2078. std::string mode = n.attr("mode");
  2079. std::vector<int> pad_width = n.attr("pad_width");
  2080. float constant_value = n.attr("constant_value");
  2081. int type = 0;
  2082. if (mode == "constant")
  2083. {
  2084. type = 0;
  2085. }
  2086. else if (mode == "edge")
  2087. {
  2088. type = 1;
  2089. }
  2090. else if (mode == "reflect")
  2091. {
  2092. type = 2;
  2093. }
  2094. if (pad_width.size() != 8)
  2095. {
  2096. fprintf(stderr, "Unsupported pad_width !\n");
  2097. }
  2098. int channel_before = pad_width[2];
  2099. int channel_after = pad_width[3];
  2100. int top = pad_width[4];
  2101. int bottom = pad_width[5];
  2102. int left = pad_width[6];
  2103. int right = pad_width[7];
  2104. fprintf(pp, " 0=%d", top);
  2105. fprintf(pp, " 1=%d", bottom);
  2106. fprintf(pp, " 2=%d", left);
  2107. fprintf(pp, " 3=%d", right);
  2108. fprintf(pp, " 4=%d", type);
  2109. fprintf(pp, " 5=%e", constant_value);
  2110. fprintf(pp, " 7=%d", channel_before);
  2111. fprintf(pp, " 8=%d", channel_after);
  2112. }
  2113. else if (n.op == "Pooling")
  2114. {
  2115. std::string pool_type = n.attr("pool_type");
  2116. std::vector<int> kernel = n.attr("kernel");
  2117. std::vector<int> stride = n.attr("stride");
  2118. std::vector<int> pad = n.attr("pad");
  2119. std::string pooling_convention = n.attr("pooling_convention");
  2120. int global_pool = n.attr("global_pool");
  2121. int pool = 0;
  2122. if (pool_type == "max")
  2123. {
  2124. pool = 0;
  2125. }
  2126. else if (pool_type == "avg")
  2127. {
  2128. pool = 1;
  2129. }
  2130. int pad_mode = 1;
  2131. if (pooling_convention == "valid")
  2132. {
  2133. pad_mode = 1;
  2134. }
  2135. else if (pooling_convention == "full")
  2136. {
  2137. pad_mode = 0;
  2138. }
  2139. fprintf(pp, " 0=%d", pool);
  2140. if (kernel.size() == 1)
  2141. {
  2142. fprintf(pp, " 1=%d", kernel[0]);
  2143. }
  2144. else if (kernel.size() == 2)
  2145. {
  2146. fprintf(pp, " 1=%d", kernel[1]);
  2147. fprintf(pp, " 11=%d", kernel[0]);
  2148. }
  2149. if (stride.size() == 1)
  2150. {
  2151. fprintf(pp, " 2=%d", stride[0]);
  2152. }
  2153. else if (stride.size() == 2)
  2154. {
  2155. fprintf(pp, " 2=%d", stride[1]);
  2156. fprintf(pp, " 12=%d", stride[0]);
  2157. }
  2158. if (pad.size() == 1)
  2159. {
  2160. fprintf(pp, " 3=%d", pad[0]);
  2161. }
  2162. else if (pad.size() == 2)
  2163. {
  2164. fprintf(pp, " 3=%d", pad[1]);
  2165. fprintf(pp, " 13=%d", pad[0]);
  2166. }
  2167. fprintf(pp, " 4=%d", global_pool);
  2168. fprintf(pp, " 5=%d", pad_mode);
  2169. if (pool_type == "avg")
  2170. {
  2171. int avgpool_count_include_pad = n.has_attr("count_include_pad") ? n.attr("count_include_pad") : 0;
  2172. fprintf(pp, " 6=%d", avgpool_count_include_pad);
  2173. }
  2174. }
  2175. else if (n.op == "reciprocal")
  2176. {
  2177. int op_type = 15;
  2178. fprintf(pp, " 0=%d", op_type);
  2179. }
  2180. else if (n.op == "relu")
  2181. {
  2182. // no param
  2183. }
  2184. else if (n.op == "Reshape")
  2185. {
  2186. std::vector<int> shape = n.attr("shape");
  2187. if (shape.size() == 1)
  2188. {
  2189. fprintf(pp, " 0=%d", shape[0]); // should never reach here
  2190. }
  2191. else if (shape.size() == 2)
  2192. {
  2193. fprintf(pp, " 0=%d", shape[1]);
  2194. }
  2195. else if (shape.size() == 3)
  2196. {
  2197. fprintf(pp, " 0=%d", shape[2]);
  2198. fprintf(pp, " 1=%d", shape[1]);
  2199. }
  2200. else if (shape.size() == 4)
  2201. {
  2202. fprintf(pp, " 0=%d", shape[3]);
  2203. fprintf(pp, " 1=%d", shape[2]);
  2204. fprintf(pp, " 2=%d", shape[1]);
  2205. }
  2206. else if (shape.size() == 5)
  2207. {
  2208. fprintf(pp, " 0=%d", shape[4] * shape[3]);
  2209. fprintf(pp, " 1=%d", shape[2]);
  2210. fprintf(pp, " 2=%d", shape[1]);
  2211. }
  2212. }
  2213. else if (n.op == "ShuffleChannel")
  2214. {
  2215. int group = n.attr("group");
  2216. fprintf(pp, " 0=%d", group);
  2217. }
  2218. else if (n.op == "sigmoid")
  2219. {
  2220. // no param
  2221. }
  2222. else if (n.op == "sin")
  2223. {
  2224. int op_type = 9;
  2225. fprintf(pp, " 0=%d", op_type);
  2226. }
  2227. else if (n.op == "slice")
  2228. {
  2229. std::vector<int> begin = n.attr("begin");
  2230. std::vector<int> end = n.attr("end");
  2231. std::vector<int> step = n.attr("step"); // TODO
  2232. // skip N-dim
  2233. begin.erase(begin.begin());
  2234. end.erase(end.begin());
  2235. if (step.size() != 0)
  2236. step.erase(step.begin());
  2237. // assert step == 1
  2238. for (size_t j = 0; j < step.size(); j++)
  2239. {
  2240. if (step[j] != 1)
  2241. fprintf(stderr, "Unsupported slice step !\n");
  2242. }
  2243. fprintf(pp, " -23309=%d", (int)begin.size());
  2244. for (size_t j = 0; j < begin.size(); j++)
  2245. {
  2246. fprintf(pp, ",%d", begin[j]);
  2247. }
  2248. fprintf(pp, " -23310=%d", (int)end.size());
  2249. for (size_t j = 0; j < end.size(); j++)
  2250. {
  2251. fprintf(pp, ",%d", end[j]);
  2252. }
  2253. }
  2254. else if (n.op == "slice_axis")
  2255. {
  2256. int axis = n.attr("axis");
  2257. int begin = n.attr("begin");
  2258. int end = n.has_attr("end") ? n.attr("end") : INT_MAX;
  2259. if (axis == 0 || axis > 3 || axis < -3)
  2260. fprintf(stderr, "Unsupported slice_axis axes !\n");
  2261. if (axis > 0)
  2262. axis = axis - 1; // -1 for skip N-dim
  2263. fprintf(pp, " -23309=1,%d", begin);
  2264. fprintf(pp, " -23310=1,%d", end);
  2265. fprintf(pp, " -23311=1,%d", axis);
  2266. }
  2267. else if (n.op == "SliceChannel")
  2268. {
  2269. int num_outputs = n.attr("num_outputs");
  2270. int squeeze_axis = n.attr("squeeze_axis"); // TODO
  2271. if (squeeze_axis)
  2272. {
  2273. fprintf(stderr, "Unsupported SliceChannel squeeze_axis !\n");
  2274. }
  2275. fprintf(pp, " -23300=%d", num_outputs);
  2276. for (int j = 0; j < num_outputs; j++)
  2277. {
  2278. fprintf(pp, ",-233");
  2279. }
  2280. }
  2281. else if (n.op == "SoftmaxActivation")
  2282. {
  2283. std::string mode = n.attr("mode");
  2284. if (mode != "channel")
  2285. {
  2286. fprintf(stderr, "Unsupported SoftmaxActivation mode !\n");
  2287. }
  2288. fprintf(pp, " 1=1");
  2289. }
  2290. else if (n.op == "SoftmaxOutput")
  2291. {
  2292. fprintf(pp, " 1=1");
  2293. }
  2294. else if (n.op == "softmax")
  2295. {
  2296. fprintf(pp, " 1=1");
  2297. }
  2298. else if (n.op == "sqrt")
  2299. {
  2300. int op_type = 5;
  2301. fprintf(pp, " 0=%d", op_type);
  2302. }
  2303. else if (n.op == "square")
  2304. {
  2305. int op_type = 4;
  2306. fprintf(pp, " 0=%d", op_type);
  2307. }
  2308. else if (n.op == "squeeze")
  2309. {
  2310. std::vector<int> axis = n.attr("axis");
  2311. if (axis.empty())
  2312. {
  2313. fprintf(pp, " 0=1");
  2314. fprintf(pp, " 1=1");
  2315. fprintf(pp, " 2=1");
  2316. }
  2317. else
  2318. {
  2319. fprintf(pp, " -23303=%zd", axis.size());
  2320. for (size_t j = 0; j < axis.size(); j++)
  2321. {
  2322. fprintf(pp, ",%d", axis[j]);
  2323. }
  2324. }
  2325. }
  2326. else if (n.op == "tan")
  2327. {
  2328. int op_type = 11;
  2329. fprintf(pp, " 0=%d", op_type);
  2330. }
  2331. else if (n.op == "tanh")
  2332. {
  2333. // no param
  2334. }
  2335. else if (n.op == "Transpose" || n.op == "transpose")
  2336. {
  2337. std::vector<int> axes = n.attr("axes");
  2338. if (axes.size() == 3)
  2339. {
  2340. if (axes[1] == 2 && axes[2] == 1)
  2341. fprintf(pp, " 0=1"); // h w c
  2342. else
  2343. fprintf(stderr, "Unsupported transpose type !\n");
  2344. }
  2345. else if (axes.size() == 4)
  2346. {
  2347. if (axes[1] == 1 && axes[2] == 2 && axes[3] == 3)
  2348. fprintf(pp, " 0=0"); // w h c
  2349. else if (axes[1] == 1 && axes[2] == 3 && axes[3] == 2)
  2350. fprintf(pp, " 0=1"); // h w c
  2351. else if (axes[1] == 2 && axes[2] == 1 && axes[3] == 3)
  2352. fprintf(pp, " 0=2"); // w c h
  2353. else if (axes[1] == 2 && axes[2] == 3 && axes[3] == 1)
  2354. fprintf(pp, " 0=3"); // c w h
  2355. else if (axes[1] == 3 && axes[2] == 1 && axes[3] == 2)
  2356. fprintf(pp, " 0=4"); // h c w
  2357. else if (axes[1] == 3 && axes[2] == 2 && axes[3] == 1)
  2358. fprintf(pp, " 0=5"); // c h w
  2359. }
  2360. else if (axes.size() == 5)
  2361. {
  2362. if (axes[1] == 1 && axes[2] == 2 && axes[3] == 3 && axes[4] == 4)
  2363. fprintf(pp, " 0=0"); // wx h c
  2364. else if (axes[1] == 1 && axes[2] == 3 && axes[3] == 4 && axes[4] == 2)
  2365. fprintf(pp, " 0=1"); // h wx c
  2366. else if (axes[1] == 2 && axes[2] == 1 && axes[3] == 3 && axes[4] == 4)
  2367. fprintf(pp, " 0=2"); // wx c h
  2368. else if (axes[1] == 2 && axes[2] == 3 && axes[3] == 4 && axes[4] == 1)
  2369. fprintf(pp, " 0=3"); // c wx h
  2370. else if (axes[1] == 3 && axes[2] == 4 && axes[3] == 1 && axes[4] == 2)
  2371. fprintf(pp, " 0=4"); // h c wx
  2372. else if (axes[1] == 3 && axes[2] == 4 && axes[3] == 2 && axes[4] == 1)
  2373. fprintf(pp, " 0=5"); // c h wx
  2374. else
  2375. fprintf(stderr, "Unsupported transpose type !\n");
  2376. }
  2377. else
  2378. {
  2379. fprintf(stderr, "Unsupported transpose type !\n");
  2380. }
  2381. }
  2382. else if (n.op == "UpSampling")
  2383. {
  2384. int scale = n.attr("scale");
  2385. std::string sample_type = n.attr("sample_type");
  2386. if (sample_type == "nearest")
  2387. {
  2388. fprintf(pp, " 0=1");
  2389. fprintf(pp, " 1=%e", (float)scale);
  2390. fprintf(pp, " 2=%e", (float)scale);
  2391. }
  2392. else if (sample_type == "bilinear")
  2393. {
  2394. // DeconvolutionDepthWise
  2395. int num_filter = n.attr("num_filter");
  2396. std::vector<float> weight_data = n.weight(0);
  2397. int kernel = scale * 2 - scale % 2;
  2398. int stride = scale;
  2399. int pad = (scale - 1) / 2;
  2400. fprintf(pp, " 0=%d", num_filter);
  2401. fprintf(pp, " 1=%d", kernel);
  2402. fprintf(pp, " 2=1");
  2403. fprintf(pp, " 3=%d", stride);
  2404. fprintf(pp, " 4=%d", pad);
  2405. fprintf(pp, " 5=0");
  2406. fprintf(pp, " 6=%d", (int)weight_data.size());
  2407. fprintf(pp, " 7=%d", num_filter);
  2408. int quantize_tag = 0;
  2409. fwrite(&quantize_tag, sizeof(int), 1, bp);
  2410. fwrite(weight_data.data(), sizeof(float), weight_data.size(), bp);
  2411. }
  2412. }
  2413. else
  2414. {
  2415. // TODO op specific params
  2416. std::map<std::string, std::string>::const_iterator attr_it = n.attrs.begin();
  2417. for (; attr_it != n.attrs.end(); attr_it++)
  2418. {
  2419. fprintf(stderr, "# %s=%s\n", attr_it->first.c_str(), attr_it->second.c_str());
  2420. // fprintf(pp, " %s=%s", attr_it->first.c_str(), attr_it->second.c_str());
  2421. }
  2422. }
  2423. fprintf(pp, "\n");
  2424. for (int j = 0; j < n.output_size; j++)
  2425. {
  2426. int input_uid = i | (j << 16);
  2427. if (node_reference.find(input_uid) != node_reference.end())
  2428. {
  2429. int refcount = node_reference[input_uid];
  2430. if (refcount > 1)
  2431. {
  2432. std::string output_name = n.name;
  2433. char splitname[256];
  2434. sprintf(splitname, "splitncnn_%d", internal_split);
  2435. fprintf(pp, "%-16s %-32s %d %d", "Split", splitname, 1, refcount);
  2436. if (j == 0)
  2437. {
  2438. fprintf(pp, " %s", output_name.c_str());
  2439. }
  2440. else
  2441. {
  2442. fprintf(pp, " %s_subncnn_%d", output_name.c_str(), j);
  2443. }
  2444. for (int k = 0; k < refcount; k++)
  2445. {
  2446. if (j == 0)
  2447. {
  2448. fprintf(pp, " %s_splitncnn_%d", output_name.c_str(), k);
  2449. }
  2450. else
  2451. {
  2452. fprintf(pp, " %s_subncnn_%d_splitncnn_%d", output_name.c_str(), j, k);
  2453. }
  2454. }
  2455. fprintf(pp, "\n");
  2456. internal_split++;
  2457. }
  2458. }
  2459. }
  2460. }
  2461. fclose(pp);
  2462. fclose(bp);
  2463. return 0;
  2464. }