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- // Tencent is pleased to support the open source community by making ncnn available.
- //
- // Copyright (C) 2019 THL A29 Limited, a Tencent company. All rights reserved.
- //
- // Licensed under the BSD 3-Clause License (the "License"); you may not use this file except
- // in compliance with the License. You may obtain a copy of the License at
- //
- // https://opensource.org/licenses/BSD-3-Clause
- //
- // Unless required by applicable law or agreed to in writing, software distributed
- // under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR
- // CONDITIONS OF ANY KIND, either express or implied. See the License for the
- // specific language governing permissions and limitations under the License.
-
- #include <algorithm>
- #include <set>
- #include <vector>
-
- // ncnn public header
- #include "datareader.h"
- #include "net.h"
- #include "layer.h"
-
- // ncnn private header
- #include "layer/batchnorm.h"
- #include "layer/bias.h"
- #include "layer/binaryop.h"
- #include "layer/clip.h"
- #include "layer/concat.h"
- #include "layer/convolution.h"
- #include "layer/convolutiondepthwise.h"
- #include "layer/crop.h"
- #include "layer/deconvolution.h"
- #include "layer/deconvolutiondepthwise.h"
- #include "layer/detectionoutput.h"
- #include "layer/dropout.h"
- #include "layer/eltwise.h"
- #include "layer/elu.h"
- #include "layer/exp.h"
- #include "layer/expanddims.h"
- #include "layer/flatten.h"
- #include "layer/hardsigmoid.h"
- #include "layer/hardswish.h"
- #include "layer/innerproduct.h"
- #include "layer/input.h"
- #include "layer/instancenorm.h"
- #include "layer/interp.h"
- #include "layer/log.h"
- #include "layer/lrn.h"
- #include "layer/memorydata.h"
- #include "layer/mvn.h"
- #include "layer/normalize.h"
- #include "layer/padding.h"
- #include "layer/permute.h"
- #include "layer/pooling.h"
- #include "layer/power.h"
- #include "layer/prelu.h"
- #include "layer/priorbox.h"
- #include "layer/proposal.h"
- #include "layer/psroipooling.h"
- #include "layer/quantize.h"
- #include "layer/reduction.h"
- #include "layer/relu.h"
- #include "layer/reorg.h"
- #include "layer/requantize.h"
- #include "layer/reshape.h"
- #include "layer/roialign.h"
- #include "layer/roipooling.h"
- #include "layer/scale.h"
- #include "layer/slice.h"
- #include "layer/shufflechannel.h"
- #include "layer/softmax.h"
- #include "layer/squeeze.h"
- #include "layer/threshold.h"
- #include "layer/unaryop.h"
- #include "layer/yolodetectionoutput.h"
- #include "layer/yolov3detectionoutput.h"
-
- #if defined(__aarch64__) && defined(LINUX)
- #include <locale>
- #include <chrono>
- #include <random>
- #include <limits>
- #include <cassert>
-
- #define TEXT_GREEN "\033[32m"
- #define TEXT_YELLOW "\033[33m"
- #define TEXT_RED "\033[31m"
- #define CLR "\033[0m"
-
- #endif // defined(__aarch64__) && defined(LINUX)
-
- class DataReaderFromEmpty : public ncnn::DataReader
- {
- public:
- virtual int scan(const char* format, void* p) const { return 0; }
- virtual int read(void* /*buf*/, int size) const { return size; }
- };
-
- class NetOptimize : public ncnn::Net
- {
- public:
- // 0=fp32 1=fp16
- int storage_type;
-
- public:
- int fuse_batchnorm_scale();
- int fuse_convolution_batchnorm();
- int fuse_convolutiondepthwise_batchnorm();
- int fuse_deconvolution_batchnorm();
- int fuse_deconvolutiondepthwise_batchnorm();
- int fuse_innerproduct_batchnorm();
- int fuse_innerproduct_dropout();
- int fuse_convolution_activation();
- int fuse_convolutiondepthwise_activation();
- int fuse_deconvolution_activation();
- int fuse_deconvolutiondepthwise_activation();
- int fuse_innerproduct_activation();
-
- int eliminate_dropout();
- int eliminate_noop();
- int eliminate_flatten_after_global_pooling();
- int eliminate_reshape_after_global_pooling();
- int eliminate_flatten_after_innerproduct();
- int eliminate_reshape_before_binaryop();
-
- int replace_convolution_with_innerproduct_after_global_pooling();
- int replace_convolution_with_innerproduct_after_innerproduct();
-
- public:
- int fprintf_param_int_array(int id, const ncnn::Mat& m, FILE* pp);
- int fprintf_param_float_array(int id, const ncnn::Mat& m, FILE* pp);
-
- int fwrite_weight_tag_data(int tag, const ncnn::Mat& data, FILE* bp);
- int fwrite_weight_data(const ncnn::Mat& data, FILE* bp);
-
- int save(const char* parampath, const char* binpath);
-
- #if defined(__aarch64__) && defined(LINUX)
- void gauss_random(ncnn::Mat &m);
- void find_fastest_fp32_conv(const char* name, int w, int h, int c);
- int support_fp32_conv_type(const ncnn::Convolution* op, const ncnn::Mat& mat, const int type);
- #endif
- };
-
- #if defined(__aarch64__) && defined(LINUX)
- void NetOptimize::gauss_random(ncnn::Mat &m)
- {
- std::random_device rd;
- std::mt19937 gen(rd());
- std::normal_distribution<float> d(1.0f, 1.0f);
- int size = m.total();
- for (int i = 0; i < size; ++i)
- {
- m[i] = d(gen);
- }
- }
-
- void NetOptimize::find_fastest_fp32_conv(const char* dataname, int w, int h, int c)
- {
- ncnn::PoolAllocator allocator;
- allocator.clear();
-
- ncnn::Option opt;
- // embeded system generally use single thread
- opt.num_threads = 1;
-
- const int layer_count = layers.size();
- ncnn::Extractor ex = create_extractor();
-
- ncnn::Mat input(w, h, c);
- if (ex.input(dataname, input) < 0)
- {
- fprintf(stderr, "set input failed, check dataname.\n");
- return;
- }
-
- const char* IMPL_NAME[6] = {"baseline", "winograd", "pointwise", "im2col", "direct", "conv3x3s2"};
- for (int i = 0; i < layer_count; ++i)
- {
- ncnn::Layer* layer = layers[i];
- if (layer->type == "Convolution")
- {
- ncnn::Convolution* op = (ncnn::Convolution*)layer;
-
- ncnn::Mat bottom_blob;
- ncnn::Mat top_blob;
-
- ex.extract(layer->bottoms[0], bottom_blob);
- ex.extract(layer->tops[0], top_blob);
-
- if (bottom_blob.empty() || top_blob.empty())
- {
- continue;
- }
-
- ncnn::Mat weight_blob(op->kernel_w, op->kernel_h, bottom_blob.c * top_blob.c);
-
- fprintf(stdout, TEXT_GREEN "Input [w h nc]: %d %d %d\n" CLR, bottom_blob.w, bottom_blob.h, bottom_blob.c);
- fprintf(stdout, TEXT_GREEN "Kernel [w h nc]: %d %d %d\n" CLR, op->kernel_w, op->kernel_h, bottom_blob.c * top_blob.c);
- fprintf(stdout, TEXT_GREEN "Output [w h nc]: %d %d %d\n" CLR, top_blob.w, top_blob.h, top_blob.c);
-
- // randomize input and kernel
- gauss_random(bottom_blob);
-
- // try every implementation
- double min_cost = std::numeric_limits<double>::max();
- int best_type = 0;
-
- // how much conv implementation type ncnn has ?
- for (int type = 1; type <= 5; ++type)
- {
- int support = support_fp32_conv_type(op, bottom_blob, type);
- if (support < 1)
- {
- // implementation type mismatch convolution configuration, skip
- continue;
- }
-
- op->impl_type = type;
-
- auto start = std::chrono::high_resolution_clock::now();
- const int NREPEATS = 20;
- op->create_pipeline(opt);
- for (int repeat = 0; repeat < NREPEATS; ++repeat)
- {
- op->forward(top_blob, bottom_blob, opt);
- }
- op->destroy_pipeline(opt);
-
- auto stop = std::chrono::high_resolution_clock::now();
- double cur_cost = std::chrono::duration<double, std::micro>(stop-start).count() / NREPEATS;
- fprintf(stdout, TEXT_GREEN "%s cost %0.3lfms \n" CLR, IMPL_NAME[type], cur_cost/1000);
- if (cur_cost < min_cost)
- {
- min_cost = cur_cost;
- best_type = type;
- }
- }
- op->impl_type = best_type;
-
- fprintf(stdout, TEXT_YELLOW "%d: %s use %s \n\n" CLR, i, layer->name.c_str(), IMPL_NAME[op->impl_type]);
- }
- }
- }
-
- int NetOptimize::support_fp32_conv_type(const ncnn::Convolution* op, const ncnn::Mat& bottom, const int type)
- {
- // not baseline, then k_h == k_w and s_h == s_w
- // no dilation conv shall be allowed
- if (op->kernel_w != op->kernel_h ||
- op->stride_w != op->stride_h ||
- op->dilation_w != op->dilation_h ||
- op->dilation_h != 1)
- {
- return -1;
- }
-
- // (kernel, stride) in {(1, 1), (1, 2), (2, 1), (3, 1), (3, 2), (4, 4), (5, 1), (5, 2), (7, 1), (7, 2)}
- const int support_table[7][4] =
- {
- {1, 1, 0, 0},
- {1, 0, 0, 0},
- {1, 1, 0, 0},
- {0, 0, 0, 1},
- {1, 1, 0, 0},
- {0, 0, 0, 0},
- {1, 1, 0, 0}
- };
- // kernel_size x stride
- const int kernel = op->kernel_h,
- stride = op->stride_h;
- // if match prequisation
- switch(type)
- {
- case 1:
- // winograd
- if (kernel != 3 || stride != 1){
- return -1;
- }
- break;
- case 2:
- // pointwise
- // input_h == 1, input_w == 1, dilation == 1, stride == 1
- if (bottom.h != 1 || bottom.w != 1 || stride != 1)
- {
- return -1;
- }
- break;
- case 3:
- // im2col
- break;
- case 4:
- // direct conv
- if (support_table[kernel-1][stride-1] == 0)
- {
- return -1;
- }
- break;
- case 5:
- // conv3x3s2
- // kernel == 3 and stride == 2
- if (kernel != 3 || stride != 2)
- {
- return -1;
- }
- break;
- default:
- fprintf(stderr, TEXT_RED "unrecognize convolution impl type: %d" CLR, type);
- break;
- }
-
- return 1;
- }
- #endif // defined(__aarch64__) && defined(LINUX)
-
- int NetOptimize::fuse_batchnorm_scale()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "BatchNorm")
- continue;
-
- // BatchNorm - Scale
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Scale")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse BatchNorm - Scale to BatchNorm
- ncnn::BatchNorm* batchnorm = (ncnn::BatchNorm*)layers[i];
- ncnn::Scale* scale = (ncnn::Scale*)layers[j];
-
- fprintf(stderr, "fuse_batchnorm_scale %s %s\n", batchnorm->name.c_str(), scale->name.c_str());
-
- {
- // v = ((v - mean) / sqrt(var + eps) * slope + bias) * s + b
- // = (v - mean) / sqrt(var + eps) * (slope * s) + (bias * s + b)
-
- int channels = batchnorm->channels;
-
- float* slope = batchnorm->slope_data;
- float* bias = batchnorm->bias_data;
-
- for (int q=0; q<channels; q++)
- {
- slope[q] = slope[q] * scale->scale_data[q];
- if (scale->bias_term)
- bias[q] = bias[q] * scale->scale_data[q] + scale->bias_data[q];
- else
- bias[q] = bias[q] * scale->scale_data[q];
- }
- }
-
- int top_blob_index_final = scale->tops[0];
- batchnorm->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- scale->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_convolution_batchnorm()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Convolution")
- continue;
-
- // Convolution - BatchNorm
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "BatchNorm")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse Convolution - BatchNorm to Convolution
- ncnn::Convolution* convolution = (ncnn::Convolution*)layers[i];
- ncnn::BatchNorm* batchnorm = (ncnn::BatchNorm*)layers[j];
-
- fprintf(stderr, "fuse_convolution_batchnorm %s %s\n", convolution->name.c_str(), batchnorm->name.c_str());
-
- {
- int channels = batchnorm->channels;
- float eps = batchnorm->eps;
-
- // a = bias - slope * mean / sqrt(var + eps)
- // b = slope / sqrt(var + eps)
- // value = value * b + a
-
- std::vector<float> a(channels);
- std::vector<float> b(channels);
- for (int i=0; i<channels; i++)
- {
- float sqrt_var = sqrt(batchnorm->var_data[i] + eps);
- a[i] = batchnorm->bias_data[i] - batchnorm->slope_data[i] * batchnorm->mean_data[i] / sqrt_var;
- b[i] = batchnorm->slope_data[i] / sqrt_var;
- }
-
- if (convolution->bias_term == 0)
- {
- // init bias as zero
- convolution->bias_term = 1;
- convolution->bias_data = ncnn::Mat(channels);
- convolution->bias_data.fill(0.f);
- }
-
- const int weight_per_outch = convolution->weight_data_size / channels;
-
- float* weight = convolution->weight_data;
- float* bias = convolution->bias_data;
- for (int i=0; i<channels; i++)
- {
- float* conv_weight_outch = weight + weight_per_outch * i;
- for (int j=0; j<weight_per_outch; j++)
- {
- conv_weight_outch[j] *= b[i];
- }
-
- bias[i] = bias[i] * b[i] + a[i];
- }
- }
-
- int top_blob_index_final = batchnorm->tops[0];
- convolution->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- batchnorm->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_convolutiondepthwise_batchnorm()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "ConvolutionDepthWise")
- continue;
-
- // ConvolutionDepthWise - BatchNorm
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "BatchNorm")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse ConvolutionDepthWise - BatchNorm to ConvolutionDepthWise
- ncnn::ConvolutionDepthWise* convolutiondepthwise = (ncnn::ConvolutionDepthWise*)layers[i];
- ncnn::BatchNorm* batchnorm = (ncnn::BatchNorm*)layers[j];
-
- fprintf(stderr, "fuse_convolutiondepthwise_batchnorm %s %s\n", convolutiondepthwise->name.c_str(), batchnorm->name.c_str());
-
- {
- int channels = batchnorm->channels;
- float eps = batchnorm->eps;
-
- // a = bias - slope * mean / sqrt(var + eps)
- // b = slope / sqrt(var + eps)
- // value = value * b + a
-
- std::vector<float> a(channels);
- std::vector<float> b(channels);
- for (int i=0; i<channels; i++)
- {
- float sqrt_var = sqrt(batchnorm->var_data[i] + eps);
- a[i] = batchnorm->bias_data[i] - batchnorm->slope_data[i] * batchnorm->mean_data[i] / sqrt_var;
- b[i] = batchnorm->slope_data[i] / sqrt_var;
- }
-
- if (convolutiondepthwise->bias_term == 0)
- {
- // init bias as zero
- convolutiondepthwise->bias_term = 1;
- convolutiondepthwise->bias_data = ncnn::Mat(channels);
- convolutiondepthwise->bias_data.fill(0.f);
- }
-
- const int weight_per_outch = convolutiondepthwise->weight_data_size / channels;
-
- float* weight = convolutiondepthwise->weight_data;
- float* bias = convolutiondepthwise->bias_data;
- for (int i=0; i<channels; i++)
- {
- float* conv_weight_outch = weight + weight_per_outch * i;
- for (int j=0; j<weight_per_outch; j++)
- {
- conv_weight_outch[j] *= b[i];
- }
-
- bias[i] = bias[i] * b[i] + a[i];
- }
- }
-
- int top_blob_index_final = batchnorm->tops[0];
- convolutiondepthwise->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- batchnorm->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_deconvolution_batchnorm()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Deconvolution")
- continue;
-
- // Deconvolution - BatchNorm
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "BatchNorm")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse Deconvolution - BatchNorm to Deconvolution
- ncnn::Deconvolution* deconvolution = (ncnn::Deconvolution*)layers[i];
- ncnn::BatchNorm* batchnorm = (ncnn::BatchNorm*)layers[j];
-
- fprintf(stderr, "fuse_deconvolution_batchnorm %s %s\n", deconvolution->name.c_str(), batchnorm->name.c_str());
-
- {
- int channels = batchnorm->channels;
- float eps = batchnorm->eps;
-
- // a = bias - slope * mean / sqrt(var + eps)
- // b = slope / sqrt(var + eps)
- // value = value * b + a
-
- std::vector<float> a(channels);
- std::vector<float> b(channels);
- for (int i=0; i<channels; i++)
- {
- float sqrt_var = sqrt(batchnorm->var_data[i] + eps);
- a[i] = batchnorm->bias_data[i] - batchnorm->slope_data[i] * batchnorm->mean_data[i] / sqrt_var;
- b[i] = batchnorm->slope_data[i] / sqrt_var;
- }
-
- if (deconvolution->bias_term == 0)
- {
- // init bias as zero
- deconvolution->bias_term = 1;
- deconvolution->bias_data = ncnn::Mat(channels);
- deconvolution->bias_data.fill(0.f);
- }
-
- const int weight_per_outch = deconvolution->weight_data_size / channels;
-
- float* weight = deconvolution->weight_data;
- float* bias = deconvolution->bias_data;
- for (int i=0; i<channels; i++)
- {
- float* conv_weight_outch = weight + weight_per_outch * i;
- for (int j=0; j<weight_per_outch; j++)
- {
- conv_weight_outch[j] *= b[i];
- }
-
- bias[i] = bias[i] * b[i] + a[i];
- }
- }
-
- int top_blob_index_final = batchnorm->tops[0];
- deconvolution->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- batchnorm->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_deconvolutiondepthwise_batchnorm()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "DeconvolutionDepthWise")
- continue;
-
- // DeconvolutionDepthWise - BatchNorm
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "BatchNorm")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse DeconvolutionDepthWise - BatchNorm to DeconvolutionDepthWise
- ncnn::DeconvolutionDepthWise* deconvolutiondepthwise = (ncnn::DeconvolutionDepthWise*)layers[i];
- ncnn::BatchNorm* batchnorm = (ncnn::BatchNorm*)layers[j];
-
- fprintf(stderr, "fuse_deconvolutiondepthwise_batchnorm %s %s\n", deconvolutiondepthwise->name.c_str(), batchnorm->name.c_str());
-
- {
- int channels = batchnorm->channels;
- float eps = batchnorm->eps;
-
- // a = bias - slope * mean / sqrt(var + eps)
- // b = slope / sqrt(var + eps)
- // value = value * b + a
-
- std::vector<float> a(channels);
- std::vector<float> b(channels);
- for (int i=0; i<channels; i++)
- {
- float sqrt_var = sqrt(batchnorm->var_data[i] + eps);
- a[i] = batchnorm->bias_data[i] - batchnorm->slope_data[i] * batchnorm->mean_data[i] / sqrt_var;
- b[i] = batchnorm->slope_data[i] / sqrt_var;
- }
-
- if (deconvolutiondepthwise->bias_term == 0)
- {
- // init bias as zero
- deconvolutiondepthwise->bias_term = 1;
- deconvolutiondepthwise->bias_data = ncnn::Mat(channels);
- deconvolutiondepthwise->bias_data.fill(0.f);
- }
-
- const int weight_per_outch = deconvolutiondepthwise->weight_data_size / channels;
-
- float* weight = deconvolutiondepthwise->weight_data;
- float* bias = deconvolutiondepthwise->bias_data;
- for (int i=0; i<channels; i++)
- {
- float* conv_weight_outch = weight + weight_per_outch * i;
- for (int j=0; j<weight_per_outch; j++)
- {
- conv_weight_outch[j] *= b[i];
- }
-
- bias[i] = bias[i] * b[i] + a[i];
- }
- }
-
- int top_blob_index_final = batchnorm->tops[0];
- deconvolutiondepthwise->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- batchnorm->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_innerproduct_batchnorm()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "InnerProduct")
- continue;
-
- // InnerProduct - BatchNorm
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "BatchNorm")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse InnerProduct - BatchNorm to InnerProduct
- ncnn::InnerProduct* innerproduct = (ncnn::InnerProduct*)layers[i];
- ncnn::BatchNorm* batchnorm = (ncnn::BatchNorm*)layers[j];
-
- fprintf(stderr, "fuse_innerproduct_batchnorm %s %s\n", innerproduct->name.c_str(), batchnorm->name.c_str());
-
- {
- int channels = batchnorm->channels;
- float eps = batchnorm->eps;
-
- // a = bias - slope * mean / sqrt(var + eps)
- // b = slope / sqrt(var + eps)
- // value = value * b + a
-
- std::vector<float> a(channels);
- std::vector<float> b(channels);
- for (int i=0; i<channels; i++)
- {
- float sqrt_var = sqrt(batchnorm->var_data[i] + eps);
- a[i] = batchnorm->bias_data[i] - batchnorm->slope_data[i] * batchnorm->mean_data[i] / sqrt_var;
- b[i] = batchnorm->slope_data[i] / sqrt_var;
- }
-
- if (innerproduct->bias_term == 0)
- {
- // init bias as zero
- innerproduct->bias_term = 1;
- innerproduct->bias_data = ncnn::Mat(channels);
- innerproduct->bias_data.fill(0.f);
- }
-
- const int weight_per_outch = innerproduct->weight_data_size / channels;
-
- float* weight = innerproduct->weight_data;
- float* bias = innerproduct->bias_data;
- for (int i=0; i<channels; i++)
- {
- float* conv_weight_outch = weight + weight_per_outch * i;
- for (int j=0; j<weight_per_outch; j++)
- {
- conv_weight_outch[j] *= b[i];
- }
-
- bias[i] = bias[i] * b[i] + a[i];
- }
- }
-
- int top_blob_index_final = batchnorm->tops[0];
- innerproduct->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- batchnorm->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_innerproduct_dropout()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "InnerProduct")
- continue;
-
- // InnerProduct - Dropout
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Dropout")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse InnerProduct - Dropout to InnerProduct
- ncnn::InnerProduct* innerproduct = (ncnn::InnerProduct*)layers[i];
- ncnn::Dropout* dropout = (ncnn::Dropout*)layers[j];
-
- fprintf(stderr, "fuse_innerproduct_dropout %s %s\n", innerproduct->name.c_str(), dropout->name.c_str());
-
- float scale = dropout->scale;
- if (scale != 1.f)
- {
- const int num_output = innerproduct->num_output;
- const int weight_per_outch = innerproduct->weight_data_size / num_output;
-
- float* weight = innerproduct->weight_data;
- for (int i=0; i<num_output; i++)
- {
- float* conv_weight_outch = weight + weight_per_outch * i;
- for (int j=0; j<weight_per_outch; j++)
- {
- conv_weight_outch[j] *= scale;
- }
- }
-
- if (innerproduct->bias_term)
- {
- float* bias = innerproduct->bias_data;
- for (int i=0; i<num_output; i++)
- {
- bias[i] *= scale;
- }
- }
- }
-
- int top_blob_index_final = dropout->tops[0];
- innerproduct->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- dropout->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_convolution_activation()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Convolution")
- continue;
-
- // Convolution - Activation
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "ReLU" && layers[j]->type != "Clip" && layers[j]->type != "Sigmoid")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse Convolution - Activation to Convolution
- ncnn::Convolution* convolution = (ncnn::Convolution*)layers[i];
- ncnn::Layer* activation = layers[j];
-
- fprintf(stderr, "fuse_convolution_activation %s %s\n", convolution->name.c_str(), activation->name.c_str());
-
- if (activation->type == "ReLU")
- {
- ncnn::ReLU* relu = (ncnn::ReLU*)activation;
-
- if (relu->slope == 0.f)
- {
- convolution->activation_type = 1;
- }
- else
- {
- convolution->activation_type = 2;
- convolution->activation_params = ncnn::Mat(1);
- convolution->activation_params[0] = relu->slope;
- }
- }
- else if (activation->type == "Clip")
- {
- ncnn::Clip* clip = (ncnn::Clip*)activation;
-
- convolution->activation_type = 3;
- convolution->activation_params = ncnn::Mat(2);
- convolution->activation_params[0] = clip->min;
- convolution->activation_params[1] = clip->max;
- }
- else if (activation->type == "Sigmoid")
- {
- convolution->activation_type = 4;
- }
-
- int top_blob_index_final = activation->tops[0];
- convolution->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- activation->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_convolutiondepthwise_activation()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "ConvolutionDepthWise")
- continue;
-
- // ConvolutionDepthWise - Activation
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "ReLU" && layers[j]->type != "Clip" && layers[j]->type != "Sigmoid")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse ConvolutionDepthWise - Activation to ConvolutionDepthWise
- ncnn::ConvolutionDepthWise* convolutiondepthwise = (ncnn::ConvolutionDepthWise*)layers[i];
- ncnn::Layer* activation = layers[j];
-
- fprintf(stderr, "fuse_convolutiondepthwise_activation %s %s\n", convolutiondepthwise->name.c_str(), activation->name.c_str());
-
- if (activation->type == "ReLU")
- {
- ncnn::ReLU* relu = (ncnn::ReLU*)activation;
-
- if (relu->slope == 0.f)
- {
- convolutiondepthwise->activation_type = 1;
- }
- else
- {
- convolutiondepthwise->activation_type = 2;
- convolutiondepthwise->activation_params = ncnn::Mat(1);
- convolutiondepthwise->activation_params[0] = relu->slope;
- }
- }
- else if (activation->type == "Clip")
- {
- ncnn::Clip* clip = (ncnn::Clip*)activation;
-
- convolutiondepthwise->activation_type = 3;
- convolutiondepthwise->activation_params = ncnn::Mat(2);
- convolutiondepthwise->activation_params[0] = clip->min;
- convolutiondepthwise->activation_params[1] = clip->max;
- }
- else if (activation->type == "Sigmoid")
- {
- convolutiondepthwise->activation_type = 4;
- }
-
- int top_blob_index_final = activation->tops[0];
- convolutiondepthwise->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- activation->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_deconvolution_activation()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Deconvolution")
- continue;
-
- // Deconvolution - Activation
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "ReLU" && layers[j]->type != "Clip" && layers[j]->type != "Sigmoid")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse Deconvolution - Activation to Deconvolution
- ncnn::Deconvolution* deconvolution = (ncnn::Deconvolution*)layers[i];
- ncnn::Layer* activation = layers[j];
-
- fprintf(stderr, "fuse_deconvolution_activation %s %s\n", deconvolution->name.c_str(), activation->name.c_str());
-
- if (activation->type == "ReLU")
- {
- ncnn::ReLU* relu = (ncnn::ReLU*)activation;
-
- if (relu->slope == 0.f)
- {
- deconvolution->activation_type = 1;
- }
- else
- {
- deconvolution->activation_type = 2;
- deconvolution->activation_params = ncnn::Mat(1);
- deconvolution->activation_params[0] = relu->slope;
- }
- }
- else if (activation->type == "Clip")
- {
- ncnn::Clip* clip = (ncnn::Clip*)activation;
-
- deconvolution->activation_type = 3;
- deconvolution->activation_params = ncnn::Mat(2);
- deconvolution->activation_params[0] = clip->min;
- deconvolution->activation_params[1] = clip->max;
- }
- else if (activation->type == "Sigmoid")
- {
- deconvolution->activation_type = 4;
- }
-
- int top_blob_index_final = activation->tops[0];
- deconvolution->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- activation->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_deconvolutiondepthwise_activation()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "DeconvolutionDepthWise")
- continue;
-
- // DeconvolutionDepthWise - Activation
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "ReLU" && layers[j]->type != "Clip" && layers[j]->type != "Sigmoid")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse DeconvolutionDepthWise - Activation to DeconvolutionDepthWise
- ncnn::DeconvolutionDepthWise* deconvolutiondepthwise = (ncnn::DeconvolutionDepthWise*)layers[i];
- ncnn::Layer* activation = layers[j];
-
- fprintf(stderr, "fuse_deconvolutiondepthwise_activation %s %s\n", deconvolutiondepthwise->name.c_str(), activation->name.c_str());
-
- if (activation->type == "ReLU")
- {
- ncnn::ReLU* relu = (ncnn::ReLU*)activation;
-
- if (relu->slope == 0.f)
- {
- deconvolutiondepthwise->activation_type = 1;
- }
- else
- {
- deconvolutiondepthwise->activation_type = 2;
- deconvolutiondepthwise->activation_params = ncnn::Mat(1);
- deconvolutiondepthwise->activation_params[0] = relu->slope;
- }
- }
- else if (activation->type == "Clip")
- {
- ncnn::Clip* clip = (ncnn::Clip*)activation;
-
- deconvolutiondepthwise->activation_type = 3;
- deconvolutiondepthwise->activation_params = ncnn::Mat(2);
- deconvolutiondepthwise->activation_params[0] = clip->min;
- deconvolutiondepthwise->activation_params[1] = clip->max;
- }
- else if (activation->type == "Sigmoid")
- {
- deconvolutiondepthwise->activation_type = 4;
- }
-
- int top_blob_index_final = activation->tops[0];
- deconvolutiondepthwise->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- activation->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::fuse_innerproduct_activation()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "InnerProduct")
- continue;
-
- // InnerProduct - Activation
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "ReLU" && layers[j]->type != "Clip" && layers[j]->type != "Sigmoid")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- // fuse InnerProduct - Activation to InnerProduct
- ncnn::InnerProduct* innerproduct = (ncnn::InnerProduct*)layers[i];
- ncnn::Layer* activation = layers[j];
-
- fprintf(stderr, "fuse_innerproduct_activation %s %s\n", innerproduct->name.c_str(), activation->name.c_str());
-
- if (activation->type == "ReLU")
- {
- ncnn::ReLU* relu = (ncnn::ReLU*)activation;
-
- if (relu->slope == 0.f)
- {
- innerproduct->activation_type = 1;
- }
- else
- {
- innerproduct->activation_type = 2;
- innerproduct->activation_params = ncnn::Mat(1);
- innerproduct->activation_params[0] = relu->slope;
- }
- }
- else if (activation->type == "Clip")
- {
- ncnn::Clip* clip = (ncnn::Clip*)activation;
-
- innerproduct->activation_type = 3;
- innerproduct->activation_params = ncnn::Mat(2);
- innerproduct->activation_params[0] = clip->min;
- innerproduct->activation_params[1] = clip->max;
- }
- else if (activation->type == "Sigmoid")
- {
- innerproduct->activation_type = 4;
- }
-
- int top_blob_index_final = activation->tops[0];
- innerproduct->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- activation->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::eliminate_dropout()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Dropout")
- continue;
-
- ncnn::Dropout* dropout = (ncnn::Dropout*)layers[i];
- if (dropout->scale != 1.f)
- continue;
-
- // Any - Dropout
- int bottom_blob_index = layers[i]->bottoms[0];
-
- int j = i - 1;
- for (; j>=0; j--)
- {
- if (layers[j]->type == "ncnnfused")
- continue;
-
- if (layers[j]->tops.size() != 1)
- continue;
-
- if (layers[j]->tops[0] == bottom_blob_index)
- break;
- }
-
- if (j == -1)
- continue;
-
- ncnn::Layer* any = layers[j];
-
- fprintf(stderr, "eliminate_dropout %s %s\n", any->name.c_str(), dropout->name.c_str());
-
- int top_blob_index_final = dropout->tops[0];
- any->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = j;
- dropout->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::eliminate_noop()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Noop")
- continue;
-
- ncnn::Layer* noop = layers[i];
-
- if (noop->bottoms.empty())
- {
- // Noop
- fprintf(stderr, "eliminate_noop %s\n", noop->name.c_str());
-
- int top_blob_count = noop->tops.size();
- for (int k=0; k<top_blob_count; k++)
- {
- int top_blob_index_final = noop->tops[k];
- blobs[top_blob_index_final].producer = -1;
- }
- noop->type = "ncnnfused";
-
- continue;
- }
-
- // Any - Noop
- int bottom_blob_index = layers[i]->bottoms[0];
-
- int j = i - 1;
- for (; j>=0; j--)
- {
- if (layers[j]->type == "ncnnfused")
- continue;
-
- if (layers[j]->tops.size() != 1)
- continue;
-
- if (layers[j]->tops[0] == bottom_blob_index)
- break;
- }
-
- if (j == -1)
- continue;
-
- ncnn::Layer* any = layers[j];
-
- fprintf(stderr, "eliminate_noop %s %s\n", any->name.c_str(), noop->name.c_str());
-
- int top_blob_count = std::min(noop->tops.size(), any->tops.size());
- for (int k=0; k<top_blob_count; k++)
- {
- int top_blob_index_final = noop->tops[k];
- any->tops[k] = top_blob_index_final;
- blobs[top_blob_index_final].producer = j;
- }
- noop->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::eliminate_reshape_after_global_pooling()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Pooling")
- continue;
-
- ncnn::Pooling* pooling = (ncnn::Pooling*)layers[i];
- if (pooling->global_pooling == 0)
- continue;
-
- // Pooling - Reshape
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Reshape")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- ncnn::Reshape* reshape = (ncnn::Reshape*)layers[j];
- if (reshape->h != -233 || reshape->c != -233 || reshape->permute != 0)
- continue;
-
- fprintf(stderr, "eliminate_reshape_after_global_pooling %s %s\n", pooling->name.c_str(), reshape->name.c_str());
-
- int top_blob_index_final = reshape->tops[0];
- pooling->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- reshape->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::eliminate_flatten_after_global_pooling()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Pooling")
- continue;
-
- ncnn::Pooling* pooling = (ncnn::Pooling*)layers[i];
- if (pooling->global_pooling == 0)
- continue;
-
- // Pooling - Flatten
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Flatten")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- ncnn::Flatten* flatten = (ncnn::Flatten*)layers[j];
-
- fprintf(stderr, "eliminate_flatten_after_global_pooling %s %s\n", pooling->name.c_str(), flatten->name.c_str());
-
- int top_blob_index_final = flatten->tops[0];
- pooling->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- flatten->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::eliminate_flatten_after_innerproduct()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "InnerProduct")
- continue;
-
- // InnerProduct - Flatten
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Flatten")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- ncnn::InnerProduct* innerproduct = (ncnn::InnerProduct*)layers[i];
- ncnn::Flatten* flatten = (ncnn::Flatten*)layers[j];
-
- fprintf(stderr, "eliminate_flatten_after_innerproduct %s %s\n", innerproduct->name.c_str(), flatten->name.c_str());
-
- int top_blob_index_final = flatten->tops[0];
- innerproduct->tops[0] = top_blob_index_final;
- blobs[top_blob_index_final].producer = i;
- flatten->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::eliminate_reshape_before_binaryop()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Reshape")
- continue;
-
- ncnn::Reshape* reshape = (ncnn::Reshape*)layers[i];
- if (reshape->w != 1 || reshape->h != 1 || reshape->permute != 0)
- continue;
-
- // Reshape - BinaryOp
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "BinaryOp")
- continue;
-
- if (layers[j]->bottoms.size() != 2)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index || layers[j]->bottoms[1] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- ncnn::BinaryOp* binaryop = (ncnn::BinaryOp*)layers[j];
-
- fprintf(stderr, "eliminate_reshape_before_binaryop %s %s\n", reshape->name.c_str(), binaryop->name.c_str());
-
- int bottom_blob_index_final = reshape->bottoms[0];
- if (layers[j]->bottoms[0] == top_blob_index)
- binaryop->bottoms[0] = bottom_blob_index_final;
- if (layers[j]->bottoms[1] == top_blob_index)
- binaryop->bottoms[1] = bottom_blob_index_final;
- blobs[bottom_blob_index_final].consumers.erase(std::find(blobs[bottom_blob_index_final].consumers.begin(), blobs[bottom_blob_index_final].consumers.end(), i));
- blobs[bottom_blob_index_final].consumers.push_back(j);
- reshape->type = "ncnnfused";
- }
-
- return 0;
- }
-
- int NetOptimize::replace_convolution_with_innerproduct_after_global_pooling()
- {
- const int layer_count = layers.size();
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "Pooling")
- continue;
-
- ncnn::Pooling* pooling = (ncnn::Pooling*)layers[i];
- if (pooling->global_pooling == 0)
- continue;
-
- // Pooling - Convolution
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Convolution")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- ncnn::Convolution* convolution = (ncnn::Convolution*)layers[j];
-
- fprintf(stderr, "replace_convolution_with_innerproduct_after_global_pooling %s %s\n", pooling->name.c_str(), convolution->name.c_str());
-
- ncnn::InnerProduct* innerproduct = (ncnn::InnerProduct*)ncnn::create_layer("InnerProduct");
-
- innerproduct->type = "InnerProduct";
- innerproduct->name = convolution->name;
- innerproduct->bottoms = convolution->bottoms;
- innerproduct->tops = convolution->tops;
-
- ncnn::ParamDict pd;
- innerproduct->load_param(pd);
-
- innerproduct->num_output = convolution->num_output;
- innerproduct->bias_term = convolution->bias_term;
- innerproduct->weight_data_size = convolution->weight_data_size;
-
- innerproduct->weight_data = convolution->weight_data;
- innerproduct->bias_data = convolution->bias_data;
-
- innerproduct->activation_type = convolution->activation_type;
- innerproduct->activation_params = convolution->activation_params;
-
- layers[j] = innerproduct;
- delete convolution;
- }
-
- return 0;
- }
-
- int NetOptimize::replace_convolution_with_innerproduct_after_innerproduct()
- {
- const int layer_count = layers.size();
- for (;;)
- {
- bool replaced = false;
-
- for (int i=0; i<layer_count; i++)
- {
- if (layers[i]->type != "InnerProduct")
- continue;
-
- // InnerProduct - Convolution
- int top_blob_index = layers[i]->tops[0];
-
- int j = i + 1;
- for (; j<layer_count; j++)
- {
- if (layers[j]->type != "Convolution")
- continue;
-
- if (layers[j]->bottoms.size() != 1)
- continue;
-
- if (layers[j]->bottoms[0] == top_blob_index)
- break;
- }
-
- if (j == layer_count)
- continue;
-
- ncnn::InnerProduct* innerproduct = (ncnn::InnerProduct*)layers[i];
- ncnn::Convolution* convolution = (ncnn::Convolution*)layers[j];
-
- fprintf(stderr, "replace_convolution_with_innerproduct_after_innerproduct %s %s\n", innerproduct->name.c_str(), convolution->name.c_str());
-
- ncnn::InnerProduct* innerproduct2 = (ncnn::InnerProduct*)ncnn::create_layer("InnerProduct");
-
- innerproduct2->type = "InnerProduct";
- innerproduct2->name = convolution->name;
- innerproduct2->bottoms = convolution->bottoms;
- innerproduct2->tops = convolution->tops;
-
- ncnn::ParamDict pd;
- innerproduct2->load_param(pd);
-
- innerproduct2->num_output = convolution->num_output;
- innerproduct2->bias_term = convolution->bias_term;
- innerproduct2->weight_data_size = convolution->weight_data_size;
-
- innerproduct2->weight_data = convolution->weight_data;
- innerproduct2->bias_data = convolution->bias_data;
-
- innerproduct2->activation_type = convolution->activation_type;
- innerproduct2->activation_params = convolution->activation_params;
-
- layers[j] = innerproduct2;
- delete convolution;
-
- replaced = true;
- }
-
- if (!replaced)
- break;
- }
-
- return 0;
- }
-
- int NetOptimize::fprintf_param_int_array(int id, const ncnn::Mat& m, FILE* pp)
- {
- const int count = m.w;
- const int* ptr = m;
-
- fprintf(pp, " -%d=%d", 23300 + id, count);
- for (int i=0; i<count; i++)
- {
- fprintf(pp, ",%d", ptr[i]);
- }
-
- return 0;
- }
-
- int NetOptimize::fprintf_param_float_array(int id, const ncnn::Mat& m, FILE* pp)
- {
- const int count = m.w;
- const float* ptr = m;
-
- fprintf(pp, " -%d=%d", 23300 + id, count);
- for (int i=0; i<count; i++)
- {
- fprintf(pp, ",%e", ptr[i]);
- }
-
- return 0;
- }
-
- static inline size_t alignSize(size_t sz, int n)
- {
- return (sz + n-1) & -n;
- }
-
- int NetOptimize::fwrite_weight_tag_data(int tag, const ncnn::Mat& data, FILE* bp)
- {
- int p0 = ftell(bp);
-
- ncnn::Mat data_flattened = data.reshape(data.w * data.h * data.c);
- if (storage_type == 1 && tag == 0)
- {
- tag = 0x01306B47; // fp16 magic
- fwrite(&tag, sizeof(int), 1, bp);
- ncnn::Mat data_flattened_fp16;
- ncnn::cast_float32_to_float16(data_flattened, data_flattened_fp16);
- fwrite(data_flattened_fp16.data, data_flattened_fp16.elemsize, data_flattened_fp16.w, bp);
- }
- else
- {
- fwrite(&tag, sizeof(int), 1, bp);
- fwrite(data_flattened.data, data_flattened.elemsize, data_flattened.w, bp);
- }
-
- // padding to 32bit align
- int nwrite = ftell(bp) - p0;
- int nalign = alignSize(nwrite, 4);
- unsigned char padding[4] = {0x00, 0x00, 0x00, 0x00};
- fwrite(padding, sizeof(unsigned char), nalign - nwrite, bp);
-
- return 0;
- }
-
- int NetOptimize::fwrite_weight_data(const ncnn::Mat& data, FILE* bp)
- {
- int p0 = ftell(bp);
-
- ncnn::Mat data_flattened = data.reshape(data.w * data.h * data.c);
- fwrite(data_flattened.data, data_flattened.elemsize, data_flattened.w, bp);
-
- // padding to 32bit align
- int nwrite = ftell(bp) - p0;
- int nalign = alignSize(nwrite, 4);
- unsigned char padding[4] = {0x00, 0x00, 0x00, 0x00};
- fwrite(padding, sizeof(unsigned char), nalign - nwrite, bp);
-
- return 0;
- }
-
- int NetOptimize::save(const char* parampath, const char* binpath)
- {
- FILE* pp = fopen(parampath, "wb");
- FILE* bp = fopen(binpath, "wb");
-
- fprintf(pp, "7767517\n");
-
- const int layer_count = layers.size();
-
- int layer_count_fused = 0;
- std::set<std::string> blob_names;
- for (int i=0; i<layer_count; i++)
- {
- const ncnn::Layer* layer = layers[i];
- if (layer->type == "ncnnfused")
- continue;
-
- layer_count_fused++;
-
- int bottom_count = layer->bottoms.size();
- for (int j=0; j<bottom_count; j++)
- {
- int bottom_blob_index = layer->bottoms[j];
- blob_names.insert(blobs[bottom_blob_index].name);
- }
-
- int top_count = layer->tops.size();
- for (int j=0; j<top_count; j++)
- {
- int top_blob_index = layer->tops[j];
- blob_names.insert(blobs[top_blob_index].name);
- }
- }
-
- int blob_count_fused = blob_names.size();
-
- fprintf(pp, "%d %d\n", layer_count_fused, blob_count_fused);
-
- for (int i=0; i<layer_count; i++)
- {
- const ncnn::Layer* layer = layers[i];
- if (layer->type == "ncnnfused")
- continue;
-
- int bottom_count = layer->bottoms.size();
- int top_count = layer->tops.size();
-
- fprintf(pp, "%-24s %-24s %d %d", layer->type.c_str(), layer->name.c_str(), bottom_count, top_count);
-
- for (int j=0; j<bottom_count; j++)
- {
- int bottom_blob_index = layer->bottoms[j];
- fprintf(pp, " %s", blobs[bottom_blob_index].name.c_str());
- }
- for (int j=0; j<top_count; j++)
- {
- int top_blob_index = layer->tops[j];
- fprintf(pp, " %s", blobs[top_blob_index].name.c_str());
- }
-
- ncnn::Layer* layer_default = ncnn::create_layer(layer->typeindex);
-
- ncnn::ParamDict pd;
- layer_default->load_param(pd);
-
- #define fprintf_param_value(format, phase) \
- { if (op->phase != op_default->phase) fprintf(pp, format, op->phase); }
-
- if (layer->type == "BatchNorm")
- {
- ncnn::BatchNorm* op = (ncnn::BatchNorm*)layer;
- ncnn::BatchNorm* op_default = (ncnn::BatchNorm*)layer_default;
-
- fprintf_param_value(" 0=%d", channels)
- fprintf_param_value(" 1=%e", eps)
-
- fwrite_weight_data(op->slope_data, bp);
- fwrite_weight_data(op->mean_data, bp);
- fwrite_weight_data(op->var_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "Bias")
- {
- ncnn::Bias* op = (ncnn::Bias*)layer;
- ncnn::Bias* op_default = (ncnn::Bias*)layer_default;
-
- fprintf_param_value(" 0=%d", bias_data_size)
-
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "BinaryOp")
- {
- ncnn::BinaryOp* op = (ncnn::BinaryOp*)layer;
- ncnn::BinaryOp* op_default = (ncnn::BinaryOp*)layer_default;
-
- fprintf_param_value(" 0=%d", op_type)
- fprintf_param_value(" 1=%d", with_scalar)
- fprintf_param_value(" 2=%e", b)
- }
- else if (layer->type == "Clip")
- {
- ncnn::Clip* op = (ncnn::Clip*)layer;
- ncnn::Clip* op_default = (ncnn::Clip*)layer_default;
-
- fprintf_param_value(" 0=%e", min)
- fprintf_param_value(" 1=%e", max)
- }
- else if (layer->type == "Concat")
- {
- ncnn::Concat* op = (ncnn::Concat*)layer;
- ncnn::Concat* op_default = (ncnn::Concat*)layer_default;
-
- fprintf_param_value(" 0=%d", axis)
- }
- else if (layer->type == "Convolution")
- {
- ncnn::Convolution* op = (ncnn::Convolution*)layer;
- ncnn::Convolution* op_default = (ncnn::Convolution*)layer_default;
-
- fprintf_param_value(" 0=%d", num_output)
- fprintf_param_value(" 1=%d", kernel_w)
- { if (op->kernel_h != op->kernel_w) fprintf(pp, " 11=%d", op->kernel_h); }
- fprintf_param_value(" 2=%d", dilation_w)
- { if (op->dilation_h != op->dilation_w) fprintf(pp, " 12=%d", op->dilation_h); }
- fprintf_param_value(" 3=%d", stride_w)
- { if (op->stride_h != op->stride_w) fprintf(pp, " 13=%d", op->stride_h); }
- fprintf_param_value(" 4=%d", pad_left)
- { if (op->pad_top != op->pad_left) fprintf(pp, " 14=%d", op->pad_top); }
- { if (op->pad_right != op->pad_left) fprintf(pp, " 15=%d", op->pad_right); }
- { if (op->pad_bottom != op->pad_top) fprintf(pp, " 16=%d", op->pad_bottom); }
- fprintf_param_value(" 18=%e", pad_value)
- fprintf_param_value(" 5=%d", bias_term)
- fprintf_param_value(" 6=%d", weight_data_size)
- fprintf_param_value(" 8=%d", int8_scale_term)
- fprintf_param_value(" 9=%d", activation_type)
- { if (!op->activation_params.empty()) fprintf_param_float_array(10, op->activation_params, pp); }
- fprintf_param_value(" 17=%d", impl_type)
-
- fwrite_weight_tag_data(0, op->weight_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "ConvolutionDepthWise")
- {
- ncnn::ConvolutionDepthWise* op = (ncnn::ConvolutionDepthWise*)layer;
- ncnn::ConvolutionDepthWise* op_default = (ncnn::ConvolutionDepthWise*)layer_default;
-
- fprintf_param_value(" 0=%d", num_output)
- fprintf_param_value(" 1=%d", kernel_w)
- { if (op->kernel_h != op->kernel_w) fprintf(pp, " 11=%d", op->kernel_h); }
- fprintf_param_value(" 2=%d", dilation_w)
- { if (op->dilation_h != op->dilation_w) fprintf(pp, " 12=%d", op->dilation_h); }
- fprintf_param_value(" 3=%d", stride_w)
- { if (op->stride_h != op->stride_w) fprintf(pp, " 13=%d", op->stride_h); }
- fprintf_param_value(" 4=%d", pad_left)
- { if (op->pad_top != op->pad_left) fprintf(pp, " 14=%d", op->pad_top); }
- { if (op->pad_right != op->pad_left) fprintf(pp, " 15=%d", op->pad_right); }
- { if (op->pad_bottom != op->pad_top) fprintf(pp, " 16=%d", op->pad_bottom); }
- fprintf_param_value(" 18=%e", pad_value)
- fprintf_param_value(" 5=%d", bias_term)
- fprintf_param_value(" 6=%d", weight_data_size)
- fprintf_param_value(" 7=%d", group)
- fprintf_param_value(" 8=%d", int8_scale_term)
- fprintf_param_value(" 9=%d", activation_type)
- { if (!op->activation_params.empty()) fprintf_param_float_array(10, op->activation_params, pp); }
-
- fwrite_weight_tag_data(0, op->weight_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "Crop")
- {
- ncnn::Crop* op = (ncnn::Crop*)layer;
- ncnn::Crop* op_default = (ncnn::Crop*)layer_default;
-
- fprintf_param_value(" 0=%d", woffset)
- fprintf_param_value(" 1=%d", hoffset)
- fprintf_param_value(" 2=%d", coffset)
- fprintf_param_value(" 3=%d", outw)
- fprintf_param_value(" 4=%d", outh)
- fprintf_param_value(" 5=%d", outc)
- fprintf_param_value(" 6=%d", woffset2)
- fprintf_param_value(" 7=%d", hoffset2)
- fprintf_param_value(" 8=%d", coffset2)
- { if (!op->starts.empty()) fprintf_param_int_array(9, op->starts, pp); }
- { if (!op->ends.empty()) fprintf_param_int_array(10, op->ends, pp); }
- { if (!op->axes.empty()) fprintf_param_int_array(11, op->axes, pp); }
- }
- else if (layer->type == "Deconvolution")
- {
- ncnn::Deconvolution* op = (ncnn::Deconvolution*)layer;
- ncnn::Deconvolution* op_default = (ncnn::Deconvolution*)layer_default;
-
- fprintf_param_value(" 0=%d", num_output)
- fprintf_param_value(" 1=%d", kernel_w)
- { if (op->kernel_h != op->kernel_w) fprintf(pp, " 11=%d", op->kernel_h); }
- fprintf_param_value(" 2=%d", dilation_w)
- { if (op->dilation_h != op->dilation_w) fprintf(pp, " 12=%d", op->dilation_h); }
- fprintf_param_value(" 3=%d", stride_w)
- { if (op->stride_h != op->stride_w) fprintf(pp, " 13=%d", op->stride_h); }
- fprintf_param_value(" 4=%d", pad_left)
- { if (op->pad_top != op->pad_left) fprintf(pp, " 14=%d", op->pad_top); }
- { if (op->pad_right != op->pad_left) fprintf(pp, " 15=%d", op->pad_right); }
- { if (op->pad_bottom != op->pad_top) fprintf(pp, " 16=%d", op->pad_bottom); }
- fprintf_param_value(" 18=%d", output_pad_right)
- { if (op->output_pad_bottom != op->output_pad_right) fprintf(pp, " 19=%d", op->output_pad_bottom); }
- fprintf_param_value(" 20=%d", output_w)
- { if (op->output_h != op->output_w) fprintf(pp, " 21=%d", op->output_h); }
- fprintf_param_value(" 5=%d", bias_term)
- fprintf_param_value(" 6=%d", weight_data_size)
- fprintf_param_value(" 9=%d", activation_type)
- { if (!op->activation_params.empty()) fprintf_param_float_array(10, op->activation_params, pp); }
-
- fwrite_weight_tag_data(0, op->weight_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "DeconvolutionDepthWise")
- {
- ncnn::DeconvolutionDepthWise* op = (ncnn::DeconvolutionDepthWise*)layer;
- ncnn::DeconvolutionDepthWise* op_default = (ncnn::DeconvolutionDepthWise*)layer_default;
-
- fprintf_param_value(" 0=%d", num_output)
- fprintf_param_value(" 1=%d", kernel_w)
- { if (op->kernel_h != op->kernel_w) fprintf(pp, " 11=%d", op->kernel_h); }
- fprintf_param_value(" 2=%d", dilation_w)
- { if (op->dilation_h != op->dilation_w) fprintf(pp, " 12=%d", op->dilation_h); }
- fprintf_param_value(" 3=%d", stride_w)
- { if (op->stride_h != op->stride_w) fprintf(pp, " 13=%d", op->stride_h); }
- fprintf_param_value(" 4=%d", pad_left)
- { if (op->pad_top != op->pad_left) fprintf(pp, " 14=%d", op->pad_top); }
- { if (op->pad_right != op->pad_left) fprintf(pp, " 15=%d", op->pad_right); }
- { if (op->pad_bottom != op->pad_top) fprintf(pp, " 16=%d", op->pad_bottom); }
- fprintf_param_value(" 18=%d", output_pad_right)
- { if (op->output_pad_bottom != op->output_pad_right) fprintf(pp, " 19=%d", op->output_pad_bottom); }
- fprintf_param_value(" 20=%d", output_w)
- { if (op->output_h != op->output_w) fprintf(pp, " 21=%d", op->output_h); }
- fprintf_param_value(" 5=%d", bias_term)
- fprintf_param_value(" 6=%d", weight_data_size)
- fprintf_param_value(" 7=%d", group)
- fprintf_param_value(" 9=%d", activation_type)
- { if (!op->activation_params.empty()) fprintf_param_float_array(10, op->activation_params, pp); }
-
- fwrite_weight_tag_data(0, op->weight_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "DetectionOutput")
- {
- ncnn::DetectionOutput* op = (ncnn::DetectionOutput*)layer;
- ncnn::DetectionOutput* op_default = (ncnn::DetectionOutput*)layer_default;
-
- fprintf_param_value(" 0=%d", num_class)
- fprintf_param_value(" 1=%e", nms_threshold)
- fprintf_param_value(" 2=%d", nms_top_k)
- fprintf_param_value(" 3=%d", keep_top_k)
- fprintf_param_value(" 4=%e", confidence_threshold)
- fprintf_param_value(" 5=%e", variances[0])
- fprintf_param_value(" 6=%e", variances[1])
- fprintf_param_value(" 7=%e", variances[2])
- fprintf_param_value(" 8=%e", variances[3])
- }
- else if (layer->type == "Dropout")
- {
- ncnn::Dropout* op = (ncnn::Dropout*)layer;
- ncnn::Dropout* op_default = (ncnn::Dropout*)layer_default;
-
- fprintf_param_value(" 0=%e", scale)
- }
- else if (layer->type == "Eltwise")
- {
- ncnn::Eltwise* op = (ncnn::Eltwise*)layer;
- ncnn::Eltwise* op_default = (ncnn::Eltwise*)layer_default;
-
- fprintf_param_value(" 0=%d", op_type)
- { if (!op->coeffs.empty()) fprintf_param_float_array(1, op->coeffs, pp); }
- }
- else if (layer->type == "ELU")
- {
- ncnn::ELU* op = (ncnn::ELU*)layer;
- ncnn::ELU* op_default = (ncnn::ELU*)layer_default;
-
- fprintf_param_value(" 0=%e", alpha)
- }
- else if (layer->type == "Exp")
- {
- ncnn::Exp* op = (ncnn::Exp*)layer;
- ncnn::Exp* op_default = (ncnn::Exp*)layer_default;
-
- fprintf_param_value(" 0=%e", base)
- fprintf_param_value(" 1=%e", scale)
- fprintf_param_value(" 2=%e", shift)
- }
- else if (layer->type == "ExpandDims")
- {
- ncnn::ExpandDims* op = (ncnn::ExpandDims*)layer;
- ncnn::ExpandDims* op_default = (ncnn::ExpandDims*)layer_default;
-
- fprintf_param_value(" 0=%d", expand_w)
- fprintf_param_value(" 1=%d", expand_h)
- fprintf_param_value(" 2=%d", expand_c)
- { if (!op->axes.empty()) fprintf_param_int_array(0, op->axes, pp); }
- }
- else if (layer->type == "HardSigmoid")
- {
- ncnn::HardSigmoid* op = (ncnn::HardSigmoid*)layer;
- ncnn::HardSigmoid* op_default = (ncnn::HardSigmoid*)layer_default;
-
- fprintf_param_value(" 0=%e", alpha)
- fprintf_param_value(" 1=%e", beta)
- }
- else if (layer->type == "HardSwish")
- {
- ncnn::HardSwish* op = (ncnn::HardSwish*)layer;
- ncnn::HardSwish* op_default = (ncnn::HardSwish*)layer_default;
-
- fprintf_param_value(" 0=%e", alpha)
- fprintf_param_value(" 1=%e", beta)
- }
- else if (layer->type == "InnerProduct")
- {
- ncnn::InnerProduct* op = (ncnn::InnerProduct*)layer;
- ncnn::InnerProduct* op_default = (ncnn::InnerProduct*)layer_default;
-
- fprintf_param_value(" 0=%d", num_output)
- fprintf_param_value(" 1=%d", bias_term)
- fprintf_param_value(" 2=%d", weight_data_size)
- fprintf_param_value(" 8=%d", int8_scale_term)
- fprintf_param_value(" 9=%d", activation_type)
- { if (!op->activation_params.empty()) fprintf_param_float_array(10, op->activation_params, pp); }
-
- fwrite_weight_tag_data(0, op->weight_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "Input")
- {
- ncnn::Input* op = (ncnn::Input*)layer;
- ncnn::Input* op_default = (ncnn::Input*)layer_default;
-
- fprintf_param_value(" 0=%d", w)
- fprintf_param_value(" 1=%d", h)
- fprintf_param_value(" 2=%d", c)
- }
- else if (layer->type == "InstanceNorm")
- {
- ncnn::InstanceNorm* op = (ncnn::InstanceNorm*)layer;
- ncnn::InstanceNorm* op_default = (ncnn::InstanceNorm*)layer_default;
-
- fprintf_param_value(" 0=%d", channels)
- fprintf_param_value(" 1=%e", eps)
-
- fwrite_weight_data(op->gamma_data, bp);
- fwrite_weight_data(op->beta_data, bp);
- }
- else if (layer->type == "Interp")
- {
- ncnn::Interp* op = (ncnn::Interp*)layer;
- ncnn::Interp* op_default = (ncnn::Interp*)layer_default;
-
- fprintf_param_value(" 0=%d", resize_type)
- fprintf_param_value(" 1=%e", height_scale)
- fprintf_param_value(" 2=%e", width_scale)
- fprintf_param_value(" 3=%d", output_height)
- fprintf_param_value(" 4=%d", output_width)
- }
- else if (layer->type == "Log")
- {
- ncnn::Log* op = (ncnn::Log*)layer;
- ncnn::Log* op_default = (ncnn::Log*)layer_default;
-
- fprintf_param_value(" 0=%e", base)
- fprintf_param_value(" 1=%e", scale)
- fprintf_param_value(" 2=%e", shift)
- }
- else if (layer->type == "LRN")
- {
- ncnn::LRN* op = (ncnn::LRN*)layer;
- ncnn::LRN* op_default = (ncnn::LRN*)layer_default;
-
- fprintf_param_value(" 0=%d", region_type)
- fprintf_param_value(" 1=%d", local_size)
- fprintf_param_value(" 2=%e", alpha)
- fprintf_param_value(" 3=%e", beta)
- fprintf_param_value(" 4=%e", bias)
- }
- else if (layer->type == "MemoryData")
- {
- ncnn::MemoryData* op = (ncnn::MemoryData*)layer;
- ncnn::MemoryData* op_default = (ncnn::MemoryData*)layer_default;
-
- fprintf_param_value(" 0=%d", w)
- fprintf_param_value(" 1=%d", h)
- fprintf_param_value(" 2=%d", c)
- fwrite_weight_data(op->data, bp);
- }
- else if (layer->type == "MVN")
- {
- ncnn::MVN* op = (ncnn::MVN*)layer;
- ncnn::MVN* op_default = (ncnn::MVN*)layer_default;
-
- fprintf_param_value(" 0=%d", normalize_variance)
- fprintf_param_value(" 1=%d", across_channels)
- fprintf_param_value(" 2=%e", eps)
- }
- else if (layer->type == "Normalize")
- {
- ncnn::Normalize* op = (ncnn::Normalize*)layer;
- ncnn::Normalize* op_default = (ncnn::Normalize*)layer_default;
-
- fprintf_param_value(" 0=%d", across_spatial)
- fprintf_param_value(" 1=%d", channel_shared)
- fprintf_param_value(" 2=%e", eps)
- fprintf_param_value(" 3=%d", scale_data_size)
- fprintf_param_value(" 4=%d", across_channel)
-
- fwrite_weight_data(op->scale_data, bp);
- }
- else if (layer->type == "Padding")
- {
- ncnn::Padding* op = (ncnn::Padding*)layer;
- ncnn::Padding* op_default = (ncnn::Padding*)layer_default;
-
- fprintf_param_value(" 0=%d", top)
- fprintf_param_value(" 1=%d", bottom)
- fprintf_param_value(" 2=%d", left)
- fprintf_param_value(" 3=%d", right)
- fprintf_param_value(" 4=%d", type)
- fprintf_param_value(" 5=%e", value)
- }
- else if (layer->type == "Permute")
- {
- ncnn::Permute* op = (ncnn::Permute*)layer;
- ncnn::Permute* op_default = (ncnn::Permute*)layer_default;
-
- fprintf_param_value(" 0=%d", order_type)
- }
- else if (layer->type == "Pooling")
- {
- ncnn::Pooling* op = (ncnn::Pooling*)layer;
- ncnn::Pooling* op_default = (ncnn::Pooling*)layer_default;
-
- fprintf_param_value(" 0=%d", pooling_type)
- fprintf_param_value(" 1=%d", kernel_w)
- { if (op->kernel_h != op->kernel_w) fprintf(pp, " 11=%d", op->kernel_h); }
- fprintf_param_value(" 2=%d", stride_w)
- { if (op->stride_h != op->stride_w) fprintf(pp, " 12=%d", op->stride_h); }
- fprintf_param_value(" 3=%d", pad_left)
- { if (op->pad_top != op->pad_left) fprintf(pp, " 13=%d", op->pad_top); }
- { if (op->pad_right != op->pad_left) fprintf(pp, " 14=%d", op->pad_right); }
- { if (op->pad_bottom != op->pad_top) fprintf(pp, " 15=%d", op->pad_bottom); }
- fprintf_param_value(" 4=%d", global_pooling)
- fprintf_param_value(" 5=%d", pad_mode)
- }
- else if (layer->type == "Power")
- {
- ncnn::Power* op = (ncnn::Power*)layer;
- ncnn::Power* op_default = (ncnn::Power*)layer_default;
-
- fprintf_param_value(" 0=%e", power)
- fprintf_param_value(" 1=%e", scale)
- fprintf_param_value(" 2=%e", shift)
- }
- else if (layer->type == "PReLU")
- {
- ncnn::PReLU* op = (ncnn::PReLU*)layer;
- ncnn::PReLU* op_default = (ncnn::PReLU*)layer_default;
-
- fprintf_param_value(" 0=%d", num_slope)
-
- fwrite_weight_data(op->slope_data, bp);
- }
- else if (layer->type == "PriorBox")
- {
- ncnn::PriorBox* op = (ncnn::PriorBox*)layer;
- ncnn::PriorBox* op_default = (ncnn::PriorBox*)layer_default;
-
- { if (!op->min_sizes.empty()) fprintf_param_float_array(0, op->min_sizes, pp); }
- { if (!op->max_sizes.empty()) fprintf_param_float_array(1, op->max_sizes, pp); }
- { if (!op->aspect_ratios.empty()) fprintf_param_float_array(2, op->aspect_ratios, pp); }
- fprintf_param_value(" 3=%e", variances[0])
- fprintf_param_value(" 4=%e", variances[1])
- fprintf_param_value(" 5=%e", variances[2])
- fprintf_param_value(" 6=%e", variances[3])
- fprintf_param_value(" 7=%d", flip)
- fprintf_param_value(" 8=%d", clip)
- fprintf_param_value(" 9=%d", image_width)
- fprintf_param_value(" 10=%d", image_height)
- fprintf_param_value(" 11=%e", step_width)
- fprintf_param_value(" 12=%e", step_height)
- fprintf_param_value(" 13=%e", offset)
- }
- else if (layer->type == "Proposal")
- {
- ncnn::Proposal* op = (ncnn::Proposal*)layer;
- ncnn::Proposal* op_default = (ncnn::Proposal*)layer_default;
-
- fprintf_param_value(" 0=%d", feat_stride)
- fprintf_param_value(" 1=%d", base_size)
- fprintf_param_value(" 2=%d", pre_nms_topN)
- fprintf_param_value(" 3=%d", after_nms_topN)
- fprintf_param_value(" 4=%e", nms_thresh)
- fprintf_param_value(" 5=%d", min_size)
- }
- else if (layer->type == "PSROIPooling")
- {
- ncnn::PSROIPooling* op = (ncnn::PSROIPooling*)layer;
- ncnn::PSROIPooling* op_default = (ncnn::PSROIPooling*)layer_default;
-
- fprintf_param_value(" 0=%d", pooled_width)
- fprintf_param_value(" 1=%d", pooled_height)
- fprintf_param_value(" 2=%e", spatial_scale)
- fprintf_param_value(" 3=%d", output_dim)
- }
- else if (layer->type == "Quantize")
- {
- ncnn::Quantize* op = (ncnn::Quantize*)layer;
- ncnn::Quantize* op_default = (ncnn::Quantize*)layer_default;
-
- fprintf_param_value(" 0=%e", scale)
- }
- else if (layer->type == "Reduction")
- {
- ncnn::Reduction* op = (ncnn::Reduction*)layer;
- ncnn::Reduction* op_default = (ncnn::Reduction*)layer_default;
-
- fprintf_param_value(" 0=%d", operation)
- fprintf_param_value(" 1=%d", reduce_all)
- fprintf_param_value(" 2=%e", coeff)
- }
- else if (layer->type == "ReLU")
- {
- ncnn::ReLU* op = (ncnn::ReLU*)layer;
- ncnn::ReLU* op_default = (ncnn::ReLU*)layer_default;
-
- fprintf_param_value(" 0=%e", slope)
- }
- else if (layer->type == "Reorg")
- {
- ncnn::Reorg* op = (ncnn::Reorg*)layer;
- ncnn::Reorg* op_default = (ncnn::Reorg*)layer_default;
-
- fprintf_param_value(" 0=%d", stride)
- }
- else if (layer->type == "Requantize")
- {
- ncnn::Requantize* op = (ncnn::Requantize*)layer;
- ncnn::Requantize* op_default = (ncnn::Requantize*)layer_default;
-
- fprintf_param_value(" 0=%e", scale_in)
- fprintf_param_value(" 1=%e", scale_out)
- fprintf_param_value(" 2=%d", bias_term)
- fprintf_param_value(" 3=%d", bias_data_size)
- fprintf_param_value(" 4=%d", fusion_relu)
- }
- else if (layer->type == "Reshape")
- {
- ncnn::Reshape* op = (ncnn::Reshape*)layer;
- ncnn::Reshape* op_default = (ncnn::Reshape*)layer_default;
-
- fprintf_param_value(" 0=%d", w)
- fprintf_param_value(" 1=%d", h)
- fprintf_param_value(" 2=%d", c)
- fprintf_param_value(" 3=%d", permute)
- }
- else if (layer->type == "ROIAlign")
- {
- ncnn::ROIAlign* op = (ncnn::ROIAlign*)layer;
- ncnn::ROIAlign* op_default = (ncnn::ROIAlign*)layer_default;
-
- fprintf_param_value(" 0=%d", pooled_width)
- fprintf_param_value(" 1=%d", pooled_height)
- fprintf_param_value(" 2=%e", spatial_scale)
- }
- else if (layer->type == "ROIPooling")
- {
- ncnn::ROIPooling* op = (ncnn::ROIPooling*)layer;
- ncnn::ROIPooling* op_default = (ncnn::ROIPooling*)layer_default;
-
- fprintf_param_value(" 0=%d", pooled_width)
- fprintf_param_value(" 1=%d", pooled_height)
- fprintf_param_value(" 2=%e", spatial_scale)
- }
- else if (layer->type == "Scale")
- {
- ncnn::Scale* op = (ncnn::Scale*)layer;
- ncnn::Scale* op_default = (ncnn::Scale*)layer_default;
-
- fprintf_param_value(" 0=%d", scale_data_size)
- fprintf_param_value(" 1=%d", bias_term)
-
- fwrite_weight_data(op->scale_data, bp);
- fwrite_weight_data(op->bias_data, bp);
- }
- else if (layer->type == "ShuffleChannel")
- {
- ncnn::ShuffleChannel* op = (ncnn::ShuffleChannel*)layer;
- ncnn::ShuffleChannel* op_default = (ncnn::ShuffleChannel*)layer_default;
-
- fprintf_param_value(" 0=%d", group)
- }
- else if (layer->type == "Slice")
- {
- ncnn::Slice* op = (ncnn::Slice*)layer;
- ncnn::Slice* op_default = (ncnn::Slice*)layer_default;
-
- { if (!op->slices.empty()) fprintf_param_int_array(0, op->slices, pp); }
- fprintf_param_value(" 1=%d", axis)
- }
- else if (layer->type == "Softmax")
- {
- ncnn::Softmax* op = (ncnn::Softmax*)layer;
- ncnn::Softmax* op_default = (ncnn::Softmax*)layer_default;
-
- fprintf_param_value(" 0=%d", axis)
-
- // HACK
- if (op->axis != 0)
- {
- int fixbug0 = 1;
- fprintf(pp, " 1=%d", fixbug0);
- }
- }
- else if (layer->type == "Squeeze")
- {
- ncnn::Squeeze* op = (ncnn::Squeeze*)layer;
- ncnn::Squeeze* op_default = (ncnn::Squeeze*)layer_default;
-
- fprintf_param_value(" 0=%d", squeeze_w)
- fprintf_param_value(" 1=%d", squeeze_h)
- fprintf_param_value(" 2=%d", squeeze_c)
- { if (!op->axes.empty()) fprintf_param_int_array(0, op->axes, pp); }
- }
- else if (layer->type == "Threshold")
- {
- ncnn::Threshold* op = (ncnn::Threshold*)layer;
- ncnn::Threshold* op_default = (ncnn::Threshold*)layer_default;
-
- fprintf_param_value(" 0=%e", threshold)
- }
- else if (layer->type == "UnaryOp")
- {
- ncnn::UnaryOp* op = (ncnn::UnaryOp*)layer;
- ncnn::UnaryOp* op_default = (ncnn::UnaryOp*)layer_default;
-
- fprintf_param_value(" 0=%d", op_type)
- }
- else if (layer->type == "YoloDetectionOutput")
- {
- ncnn::YoloDetectionOutput* op = (ncnn::YoloDetectionOutput*)layer;
- ncnn::YoloDetectionOutput* op_default = (ncnn::YoloDetectionOutput*)layer_default;
-
- fprintf_param_value(" 0=%d", num_class)
- fprintf_param_value(" 1=%d", num_box)
- fprintf_param_value(" 2=%e", confidence_threshold)
- fprintf_param_value(" 3=%e", nms_threshold)
- { if (!op->biases.empty()) fprintf_param_float_array(4, op->biases, pp); }
- }
- else if (layer->type == "Yolov3DetectionOutput")
- {
- ncnn::Yolov3DetectionOutput* op = (ncnn::Yolov3DetectionOutput*)layer;
- ncnn::Yolov3DetectionOutput* op_default = (ncnn::Yolov3DetectionOutput*)layer_default;
-
- fprintf_param_value(" 0=%d", num_class)
- fprintf_param_value(" 1=%d", num_box)
- fprintf_param_value(" 2=%e", confidence_threshold)
- fprintf_param_value(" 3=%e", nms_threshold)
- { if (!op->biases.empty()) fprintf_param_float_array(4, op->biases, pp); }
- { if (!op->mask.empty()) fprintf_param_int_array(5, op->mask, pp); }
- { if (!op->anchors_scale.empty()) fprintf_param_float_array(6, op->anchors_scale, pp); }
- }
-
- #undef fprintf_param_value
-
- fprintf(pp, "\n");
-
- delete layer_default;
- }
-
- fclose(pp);
- fclose(bp);
-
- return 0;
- }
-
- int main(int argc, char** argv)
- {
- #if defined(__aarch64__) && defined(LINUX)
- if (argc != 10)
- {
- fprintf(stderr, "usage: %s [inparam] [inbin] [outparam] [outbin] [flag] [dataname] [w] [h] [c]\n", argv[0]);
- return -1;
- }
- const char* dataname = argv[6];
- int inw = atoi(argv[7]);
- int inh = atoi(argv[8]);
- int inc = atoi(argv[9]);
- #else
- if (argc != 6)
- {
- fprintf(stderr, "usage: %s [inparam] [inbin] [outparam] [outbin] [flag]\n", argv[0]);
- return -1;
- }
- #endif // defined(__aarch64__) && defined(LINUX)
-
- const char* inparam = argv[1];
- const char* inbin = argv[2];
- const char* outparam = argv[3];
- const char* outbin = argv[4];
- int flag = atoi(argv[5]);
-
- NetOptimize optimizer;
-
- if (flag == 65536)
- {
- optimizer.storage_type = 1;
- }
- else
- {
- optimizer.storage_type = 0;
- }
-
- optimizer.load_param(inparam);
- if (strcmp(inbin, "null") == 0)
- {
- DataReaderFromEmpty dr;
- optimizer.load_model(dr);
- }
- else
- optimizer.load_model(inbin);
-
- #if defined(__aarch64__) && defined(LINUX)
- optimizer.find_fastest_fp32_conv(dataname, inw, inh, inc);
- #endif // defined(__aarch64__) && defined(LINUX)
- optimizer.fuse_batchnorm_scale();
- optimizer.fuse_convolution_batchnorm();
- optimizer.fuse_convolutiondepthwise_batchnorm();
- optimizer.fuse_deconvolution_batchnorm();
- optimizer.fuse_deconvolutiondepthwise_batchnorm();
- optimizer.fuse_innerproduct_batchnorm();
- optimizer.fuse_innerproduct_dropout();
- optimizer.fuse_convolution_activation();
- optimizer.fuse_convolutiondepthwise_activation();
- optimizer.fuse_deconvolution_activation();
- optimizer.fuse_deconvolutiondepthwise_activation();
- optimizer.fuse_innerproduct_activation();
-
- optimizer.eliminate_dropout();
- optimizer.eliminate_noop();
- optimizer.eliminate_flatten_after_global_pooling();
- optimizer.eliminate_reshape_after_global_pooling();
- optimizer.eliminate_reshape_before_binaryop();
-
- optimizer.replace_convolution_with_innerproduct_after_global_pooling();
- optimizer.replace_convolution_with_innerproduct_after_innerproduct();
-
- optimizer.eliminate_flatten_after_innerproduct();
-
- optimizer.save(outparam, outbin);
-
- return 0;
- }
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