From: @luoyang42 Reviewed-by: @jonyguo,@liucunwei Signed-off-by: @jonyguo,@liucunweitags/v1.3.0
| @@ -366,12 +366,14 @@ install( | |||||
| ## Public header files for minddata | ## Public header files for minddata | ||||
| install( | install( | ||||
| FILES ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/constants.h | |||||
| FILES ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/config.h | |||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/constants.h | |||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/execute.h | |||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/text.h | |||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/transforms.h | ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/transforms.h | ||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/vision.h | ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/vision.h | ||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/vision_lite.h | ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/vision_lite.h | ||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/vision_ascend.h | ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/vision_ascend.h | ||||
| ${CMAKE_SOURCE_DIR}/mindspore/ccsrc/minddata/dataset/include/dataset/execute.h | |||||
| DESTINATION ${INSTALL_BASE_DIR}/include/dataset | DESTINATION ${INSTALL_BASE_DIR}/include/dataset | ||||
| COMPONENT mindspore | COMPONENT mindspore | ||||
| ) | ) | ||||
| @@ -7,7 +7,6 @@ if(ENABLE_PYTHON) | |||||
| python/bindings/dataset/core/bindings.cc | python/bindings/dataset/core/bindings.cc | ||||
| python/bindings/dataset/engine/cache/bindings.cc | python/bindings/dataset/engine/cache/bindings.cc | ||||
| python/bindings/dataset/engine/datasetops/bindings.cc | python/bindings/dataset/engine/datasetops/bindings.cc | ||||
| python/bindings/dataset/engine/datasetops/source/bindings.cc | |||||
| python/bindings/dataset/engine/gnn/bindings.cc | python/bindings/dataset/engine/gnn/bindings.cc | ||||
| python/bindings/dataset/engine/ir/consumer/bindings.cc | python/bindings/dataset/engine/ir/consumer/bindings.cc | ||||
| python/bindings/dataset/engine/ir/datasetops/bindings.cc | python/bindings/dataset/engine/ir/datasetops/bindings.cc | ||||
| @@ -14,7 +14,7 @@ | |||||
| * limitations under the License. | * limitations under the License. | ||||
| */ | */ | ||||
| #include "minddata/dataset/include/audio.h" | |||||
| #include "minddata/dataset/include/dataset/audio.h" | |||||
| #include "minddata/dataset/audio/ir/kernels/audio_ir.h" | #include "minddata/dataset/audio/ir/kernels/audio_ir.h" | ||||
| @@ -1,171 +0,0 @@ | |||||
| /** | |||||
| * Copyright 2020 Huawei Technologies Co., Ltd | |||||
| * | |||||
| * Licensed under the Apache License, Version 2.0 (the "License"); | |||||
| * you may not use this file except in compliance with the License. | |||||
| * You may obtain a copy of the License at | |||||
| * | |||||
| * http://www.apache.org/licenses/LICENSE-2.0 | |||||
| * | |||||
| * 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 "minddata/dataset/api/python/pybind_register.h" | |||||
| #include "pybind11/pybind11.h" | |||||
| #include "pybind11/stl_bind.h" | |||||
| #include "minddata/dataset/engine/datasetops/dataset_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/cifar_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/clue_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/csv_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/coco_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/image_folder_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/io_block.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/manifest_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/mindrecord_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/mnist_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/text_file_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/tf_reader_op.h" | |||||
| #include "minddata/dataset/engine/datasetops/source/voc_op.h" | |||||
| namespace mindspore { | |||||
| namespace dataset { | |||||
| PYBIND_REGISTER(CifarOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<CifarOp, DatasetOp, std::shared_ptr<CifarOp>>(*m, "CifarOp") | |||||
| .def_static("get_num_rows", [](const std::string &dir, const std::string &usage, bool isCifar10) { | |||||
| int64_t count = 0; | |||||
| THROW_IF_ERROR(CifarOp::CountTotalRows(dir, usage, isCifar10, &count)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(ClueOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<ClueOp, DatasetOp, std::shared_ptr<ClueOp>>(*m, "ClueOp") | |||||
| .def_static("get_num_rows", [](const py::list &files) { | |||||
| int64_t count = 0; | |||||
| std::vector<std::string> filenames; | |||||
| for (auto file : files) { | |||||
| file.is_none() ? (void)filenames.emplace_back("") : filenames.push_back(py::str(file)); | |||||
| } | |||||
| THROW_IF_ERROR(ClueOp::CountAllFileRows(filenames, &count)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(CsvOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<CsvOp, DatasetOp, std::shared_ptr<CsvOp>>(*m, "CsvOp") | |||||
| .def_static("get_num_rows", [](const py::list &files, bool csv_header) { | |||||
| int64_t count = 0; | |||||
| std::vector<std::string> filenames; | |||||
| for (auto file : files) { | |||||
| file.is_none() ? (void)filenames.emplace_back("") : filenames.push_back(py::str(file)); | |||||
| } | |||||
| THROW_IF_ERROR(CsvOp::CountAllFileRows(filenames, csv_header, &count)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(CocoOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<CocoOp, DatasetOp, std::shared_ptr<CocoOp>>(*m, "CocoOp") | |||||
| .def_static("get_class_indexing", | |||||
| [](const std::string &dir, const std::string &file, const std::string &task) { | |||||
| std::vector<std::pair<std::string, std::vector<int32_t>>> output_class_indexing; | |||||
| THROW_IF_ERROR(CocoOp::GetClassIndexing(dir, file, task, &output_class_indexing)); | |||||
| return output_class_indexing; | |||||
| }) | |||||
| .def_static("get_num_rows", | |||||
| [](const std::string &dir, const std::string &file, const std::string &task) { | |||||
| int64_t count = 0; | |||||
| THROW_IF_ERROR(CocoOp::CountTotalRows(dir, file, task, &count)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(ImageFolderOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<ImageFolderOp, DatasetOp, std::shared_ptr<ImageFolderOp>>(*m, "ImageFolderOp") | |||||
| .def_static("get_num_rows", | |||||
| [](const std::string &path) { | |||||
| int64_t count = 0; | |||||
| THROW_IF_ERROR(ImageFolderOp::CountRowsAndClasses(path, {}, &count, nullptr, {})); | |||||
| return count; | |||||
| }) | |||||
| .def_static("get_num_classes", [](const std::string &path, | |||||
| const std::map<std::string, int32_t> class_index) { | |||||
| int64_t num_classes = 0; | |||||
| THROW_IF_ERROR(ImageFolderOp::CountRowsAndClasses(path, {}, nullptr, &num_classes, class_index)); | |||||
| return num_classes; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(ManifestOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<ManifestOp, DatasetOp, std::shared_ptr<ManifestOp>>(*m, "ManifestOp"); | |||||
| })); | |||||
| PYBIND_REGISTER(MindRecordOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<MindRecordOp, DatasetOp, std::shared_ptr<MindRecordOp>>(*m, "MindRecordOp") | |||||
| .def_static("get_num_rows", [](const std::vector<std::string> &paths, bool load_dataset, | |||||
| const py::object &sampler, const int64_t num_padded) { | |||||
| int64_t count = 0; | |||||
| std::shared_ptr<mindrecord::ShardOperator> op; | |||||
| if (py::hasattr(sampler, "create_for_minddataset")) { | |||||
| auto create = sampler.attr("create_for_minddataset"); | |||||
| op = create().cast<std::shared_ptr<mindrecord::ShardOperator>>(); | |||||
| } | |||||
| THROW_IF_ERROR(MindRecordOp::CountTotalRows(paths, load_dataset, op, &count, num_padded)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(MnistOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<MnistOp, DatasetOp, std::shared_ptr<MnistOp>>(*m, "MnistOp") | |||||
| .def_static("get_num_rows", [](const std::string &dir, const std::string &usage) { | |||||
| int64_t count = 0; | |||||
| THROW_IF_ERROR(MnistOp::CountTotalRows(dir, usage, &count)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(TextFileOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<TextFileOp, DatasetOp, std::shared_ptr<TextFileOp>>(*m, "TextFileOp") | |||||
| .def_static("get_num_rows", [](const py::list &files) { | |||||
| int64_t count = 0; | |||||
| std::vector<std::string> filenames; | |||||
| for (auto file : files) { | |||||
| !file.is_none() ? filenames.push_back(py::str(file)) : (void)filenames.emplace_back(""); | |||||
| } | |||||
| THROW_IF_ERROR(TextFileOp::CountAllFileRows(filenames, &count)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(TFReaderOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<TFReaderOp, DatasetOp, std::shared_ptr<TFReaderOp>>(*m, "TFReaderOp") | |||||
| .def_static( | |||||
| "get_num_rows", [](const py::list &files, int64_t numParallelWorkers, bool estimate = false) { | |||||
| int64_t count = 0; | |||||
| std::vector<std::string> filenames; | |||||
| for (auto l : files) { | |||||
| !l.is_none() ? filenames.push_back(py::str(l)) : (void)filenames.emplace_back(""); | |||||
| } | |||||
| THROW_IF_ERROR(TFReaderOp::CountTotalRows(&count, filenames, numParallelWorkers, estimate)); | |||||
| return count; | |||||
| }); | |||||
| })); | |||||
| PYBIND_REGISTER(VOCOp, 1, ([](const py::module *m) { | |||||
| (void)py::class_<VOCOp, DatasetOp, std::shared_ptr<VOCOp>>(*m, "VOCOp") | |||||
| .def_static("get_class_indexing", [](const std::string &dir, const std::string &task_type, | |||||
| const std::string &task_mode, const py::dict &dict) { | |||||
| std::map<std::string, int32_t> output_class_indexing; | |||||
| THROW_IF_ERROR(VOCOp::GetClassIndexing(dir, task_type, task_mode, dict, &output_class_indexing)); | |||||
| return output_class_indexing; | |||||
| }); | |||||
| })); | |||||
| } // namespace dataset | |||||
| } // namespace mindspore | |||||
| @@ -14,8 +14,8 @@ | |||||
| * limitations under the License. | * limitations under the License. | ||||
| */ | */ | ||||
| #ifndef MINDSPORE_CCSRC_MINDDATA_DATASET_INCLUDE_AUDIO_H_ | |||||
| #define MINDSPORE_CCSRC_MINDDATA_DATASET_INCLUDE_AUDIO_H_ | |||||
| #ifndef MINDSPORE_CCSRC_MINDDATA_DATASET_INCLUDE_DATASET_AUDIO_H_ | |||||
| #define MINDSPORE_CCSRC_MINDDATA_DATASET_INCLUDE_DATASET_AUDIO_H_ | |||||
| namespace mindspore { | namespace mindspore { | ||||
| namespace dataset { | namespace dataset { | ||||
| @@ -24,4 +24,4 @@ namespace audio {} // namespace audio | |||||
| } // namespace dataset | } // namespace dataset | ||||
| } // namespace mindspore | } // namespace mindspore | ||||
| #endif // MINDSPORE_CCSRC_MINDDATA_DATASET_INCLUDE_AUDIO_H_ | |||||
| #endif // MINDSPORE_CCSRC_MINDDATA_DATASET_INCLUDE_DATASET_AUDIO_H_ | |||||
| @@ -719,9 +719,9 @@ class RandomCropDecodeResize(ImageTensorOperation): | |||||
| size (Union[int, sequence]): The size of the output image. | size (Union[int, sequence]): The size of the output image. | ||||
| If size is an integer, a square crop of size (size, size) is returned. | If size is an integer, a square crop of size (size, size) is returned. | ||||
| If size is a sequence of length 2, it should be (height, width). | If size is a sequence of length 2, it should be (height, width). | ||||
| scale (tuple, optional): Range [min, max) of respective size of the | |||||
| scale (list, tuple, optional): Range [min, max) of respective size of the | |||||
| original size to be cropped (default=(0.08, 1.0)). | original size to be cropped (default=(0.08, 1.0)). | ||||
| ratio (tuple, optional): Range [min, max) of aspect ratio to be | |||||
| ratio (list, tuple, optional): Range [min, max) of aspect ratio to be | |||||
| cropped (default=(3. / 4., 4. / 3.)). | cropped (default=(3. / 4., 4. / 3.)). | ||||
| interpolation (Inter mode, optional): Image interpolation mode (default=Inter.BILINEAR). | interpolation (Inter mode, optional): Image interpolation mode (default=Inter.BILINEAR). | ||||
| It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC]. | It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC]. | ||||
| @@ -914,9 +914,9 @@ class RandomResizedCrop(ImageTensorOperation): | |||||
| size (Union[int, sequence]): The size of the output image. | size (Union[int, sequence]): The size of the output image. | ||||
| If size is an integer, a square crop of size (size, size) is returned. | If size is an integer, a square crop of size (size, size) is returned. | ||||
| If size is a sequence of length 2, it should be (height, width). | If size is a sequence of length 2, it should be (height, width). | ||||
| scale (tuple, optional): Range [min, max) of respective size of the original | |||||
| scale (list, tuple, optional): Range [min, max) of respective size of the original | |||||
| size to be cropped (default=(0.08, 1.0)). | size to be cropped (default=(0.08, 1.0)). | ||||
| ratio (tuple, optional): Range [min, max) of aspect ratio to be cropped | |||||
| ratio (list, tuple, optional): Range [min, max) of aspect ratio to be cropped | |||||
| (default=(3. / 4., 4. / 3.)). | (default=(3. / 4., 4. / 3.)). | ||||
| interpolation (Inter mode, optional): Image interpolation mode (default=Inter.BILINEAR). | interpolation (Inter mode, optional): Image interpolation mode (default=Inter.BILINEAR). | ||||
| It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC]. | It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC]. | ||||
| @@ -968,9 +968,9 @@ class RandomResizedCropWithBBox(ImageTensorOperation): | |||||
| size (Union[int, sequence]): The size of the output image. | size (Union[int, sequence]): The size of the output image. | ||||
| If size is an integer, a square crop of size (size, size) is returned. | If size is an integer, a square crop of size (size, size) is returned. | ||||
| If size is a sequence of length 2, it should be (height, width). | If size is a sequence of length 2, it should be (height, width). | ||||
| scale (tuple, optional): Range (min, max) of respective size of the original | |||||
| scale (list, tuple, optional): Range (min, max) of respective size of the original | |||||
| size to be cropped (default=(0.08, 1.0)). | size to be cropped (default=(0.08, 1.0)). | ||||
| ratio (tuple, optional): Range (min, max) of aspect ratio to be cropped | |||||
| ratio (list, tuple, optional): Range (min, max) of aspect ratio to be cropped | |||||
| (default=(3. / 4., 4. / 3.)). | (default=(3. / 4., 4. / 3.)). | ||||
| interpolation (Inter mode, optional): Image interpolation mode (default=Inter.BILINEAR). | interpolation (Inter mode, optional): Image interpolation mode (default=Inter.BILINEAR). | ||||
| It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC]. | It can be any of [Inter.BILINEAR, Inter.NEAREST, Inter.BICUBIC]. | ||||
| @@ -1390,9 +1390,9 @@ class SoftDvppDecodeRandomCropResizeJpeg(ImageTensorOperation): | |||||
| size (Union[int, sequence]): The size of the output image. | size (Union[int, sequence]): The size of the output image. | ||||
| If size is an integer, a square crop of size (size, size) is returned. | If size is an integer, a square crop of size (size, size) is returned. | ||||
| If size is a sequence of length 2, it should be (height, width). | If size is a sequence of length 2, it should be (height, width). | ||||
| scale (tuple, optional): Range [min, max) of respective size of the | |||||
| scale (list, tuple, optional): Range [min, max) of respective size of the | |||||
| original size to be cropped (default=(0.08, 1.0)). | original size to be cropped (default=(0.08, 1.0)). | ||||
| ratio (tuple, optional): Range [min, max) of aspect ratio to be | |||||
| ratio (list, tuple, optional): Range [min, max) of aspect ratio to be | |||||
| cropped (default=(3. / 4., 4. / 3.)). | cropped (default=(3. / 4., 4. / 3.)). | ||||
| max_attempts (int, optional): The maximum number of attempts to propose a valid crop_area (default=10). | max_attempts (int, optional): The maximum number of attempts to propose a valid crop_area (default=10). | ||||
| If exceeded, fall back to use center_crop instead. | If exceeded, fall back to use center_crop instead. | ||||
| @@ -19,6 +19,7 @@ | |||||
| #include "minddata/dataset/include/dataset/execute.h" | #include "minddata/dataset/include/dataset/execute.h" | ||||
| #include "minddata/dataset/include/dataset/transforms.h" | #include "minddata/dataset/include/dataset/transforms.h" | ||||
| #include "minddata/dataset/include/dataset/vision.h" | #include "minddata/dataset/include/dataset/vision.h" | ||||
| #include "minddata/dataset/include/dataset/text.h" | |||||
| #include "utils/log_adapter.h" | #include "utils/log_adapter.h" | ||||
| using namespace mindspore::dataset; | using namespace mindspore::dataset; | ||||
| @@ -206,3 +207,42 @@ TEST_F(MindDataTestExecute, TestTransformDecodeResizeCenterCrop1) { | |||||
| ASSERT_EQ(image.Shape()[1], 224); | ASSERT_EQ(image.Shape()[1], 224); | ||||
| ASSERT_EQ(image.Shape()[2], 224); | ASSERT_EQ(image.Shape()[2], 224); | ||||
| } | } | ||||
| TEST_F(MindDataTestExecute, TestUniformAugment) { | |||||
| // Read images | |||||
| auto image = ReadFileToTensor("data/dataset/apple.jpg"); | |||||
| std::vector<mindspore::MSTensor> image2; | |||||
| // Transform params | |||||
| std::shared_ptr<TensorTransform> decode = std::make_shared<vision::Decode>(); | |||||
| std::shared_ptr<TensorTransform> resize_op(new vision::Resize({16, 16})); | |||||
| std::shared_ptr<TensorTransform> vertical = std::make_shared<vision::RandomVerticalFlip>(); | |||||
| std::shared_ptr<TensorTransform> horizontal = std::make_shared<vision::RandomHorizontalFlip>(); | |||||
| std::shared_ptr<TensorTransform> uniform_op(new vision::UniformAugment({resize_op, vertical, horizontal}, 3)); | |||||
| auto transform1 = Execute({decode}); | |||||
| Status rc = transform1(image, &image); | |||||
| ASSERT_TRUE(rc.IsOk()); | |||||
| auto transform2 = Execute({uniform_op}); | |||||
| rc = transform2({image}, &image2); | |||||
| ASSERT_TRUE(rc.IsOk()); | |||||
| } | |||||
| TEST_F(MindDataTestExecute, TestBasicTokenizer) { | |||||
| std::shared_ptr<Tensor> de_tensor; | |||||
| Tensor::CreateScalar<std::string>("Welcome to China.", &de_tensor); | |||||
| auto txt = mindspore::MSTensor(std::make_shared<mindspore::dataset::DETensor>(de_tensor)); | |||||
| std::vector<mindspore::MSTensor> txt_result; | |||||
| // Transform params | |||||
| std::shared_ptr<TensorTransform> tokenizer = | |||||
| std::make_shared<text::BasicTokenizer>(false, false, NormalizeForm::kNone, false, true); | |||||
| // BasicTokenizer has 3 outputs so we need a vector to receive its result | |||||
| auto transform1 = Execute({tokenizer}); | |||||
| Status rc = transform1({txt}, &txt_result); | |||||
| ASSERT_EQ(txt_result.size(), 3); | |||||
| ASSERT_TRUE(rc.IsOk()); | |||||
| } | |||||