/** * 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 "common/common.h" #include "minddata/dataset/include/datasets.h" #include "minddata/dataset/include/transforms.h" #include "minddata/dataset/include/vision.h" #include "minddata/dataset/engine/ir/datasetops/source/image_folder_node.h" #include "minddata/dataset/engine/ir/datasetops/batch_node.h" using namespace mindspore::dataset::api; using mindspore::dataset::BorderType; using mindspore::dataset::Tensor; class MindDataTestPipeline : public UT::DatasetOpTesting { protected: }; // Tests for vision ops (in alphabetical order) TEST_F(MindDataTestPipeline, TestCenterCrop) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCenterCrop with single integer input."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 5)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 3; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create centre crop object with square crop std::shared_ptr centre_out1 = vision::CenterCrop({30}); EXPECT_NE(centre_out1, nullptr); // Create a Map operation on ds ds = ds->Map({centre_out1}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 15); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestCenterCropFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCenterCrop with invalid parameters."; // center crop height value negative std::shared_ptr center_crop = mindspore::dataset::api::vision::CenterCrop({-32, 32}); EXPECT_EQ(center_crop, nullptr); // center crop width value negative center_crop = mindspore::dataset::api::vision::CenterCrop({32, -32}); EXPECT_EQ(center_crop, nullptr); // 0 value would result in nullptr center_crop = mindspore::dataset::api::vision::CenterCrop({0, 32}); EXPECT_EQ(center_crop, nullptr); // center crop with 3 values center_crop = mindspore::dataset::api::vision::CenterCrop({10, 20, 30}); EXPECT_EQ(center_crop, nullptr); } TEST_F(MindDataTestPipeline, TestCropFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCrop with invalid parameters."; // wrong width std::shared_ptr crop = mindspore::dataset::api::vision::Crop({0, 0}, {32, -32}); EXPECT_EQ(crop, nullptr); // wrong height crop = mindspore::dataset::api::vision::Crop({0, 0}, {-32, -32}); EXPECT_EQ(crop, nullptr); // zero height crop = mindspore::dataset::api::vision::Crop({0, 0}, {0, 32}); EXPECT_EQ(crop, nullptr); } TEST_F(MindDataTestPipeline, TestCutMixBatchSuccess1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutMixBatchSuccess1."; // Testing CutMixBatch on a batch of CHW images // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; int number_of_classes = 10; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr hwc_to_chw = vision::HWC2CHW(); EXPECT_NE(hwc_to_chw, nullptr); // Create a Map operation on ds ds = ds->Map({hwc_to_chw}, {"image"}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(number_of_classes); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr cutmix_batch_op = vision::CutMixBatch(mindspore::dataset::ImageBatchFormat::kNCHW, 1.0, 1.0); EXPECT_NE(cutmix_batch_op, nullptr); // Create a Map operation on ds ds = ds->Map({cutmix_batch_op}, {"image", "label"}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; auto label = row["label"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); MS_LOG(INFO) << "Label shape: " << label->shape(); EXPECT_EQ(image->shape().AsVector().size() == 4 && batch_size == image->shape()[0] && 3 == image->shape()[1] && 32 == image->shape()[2] && 32 == image->shape()[3], true); EXPECT_EQ(label->shape().AsVector().size() == 2 && batch_size == label->shape()[0] && number_of_classes == label->shape()[1], true); iter->GetNextRow(&row); } EXPECT_EQ(i, 2); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestCutMixBatchSuccess2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutMixBatchSuccess2."; // Calling CutMixBatch on a batch of HWC images with default values of alpha and prob // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; int number_of_classes = 10; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(number_of_classes); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr cutmix_batch_op = vision::CutMixBatch(mindspore::dataset::ImageBatchFormat::kNHWC); EXPECT_NE(cutmix_batch_op, nullptr); // Create a Map operation on ds ds = ds->Map({cutmix_batch_op}, {"image", "label"}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; auto label = row["label"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); MS_LOG(INFO) << "Label shape: " << label->shape(); EXPECT_EQ(image->shape().AsVector().size() == 4 && batch_size == image->shape()[0] && 32 == image->shape()[1] && 32 == image->shape()[2] && 3 == image->shape()[3], true); EXPECT_EQ(label->shape().AsVector().size() == 2 && batch_size == label->shape()[0] && number_of_classes == label->shape()[1], true); iter->GetNextRow(&row); } EXPECT_EQ(i, 2); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestCutMixBatchFail1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutMixBatchFail1 with invalid negative alpha parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr cutmix_batch_op = vision::CutMixBatch(mindspore::dataset::ImageBatchFormat::kNHWC, -1, 0.5); EXPECT_EQ(cutmix_batch_op, nullptr); } TEST_F(MindDataTestPipeline, TestCutMixBatchFail2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutMixBatchFail2 with invalid negative prob parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr cutmix_batch_op = vision::CutMixBatch(mindspore::dataset::ImageBatchFormat::kNHWC, 1, -0.5); EXPECT_EQ(cutmix_batch_op, nullptr); } TEST_F(MindDataTestPipeline, TestCutMixBatchFail3) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutMixBatchFail3 with invalid zero alpha parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr cutmix_batch_op = vision::CutMixBatch(mindspore::dataset::ImageBatchFormat::kNHWC, 0.0, 0.5); EXPECT_EQ(cutmix_batch_op, nullptr); } TEST_F(MindDataTestPipeline, TestCutMixBatchFail4) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutMixBatchFail4 with invalid greater than 1 prob parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 10; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr cutmix_batch_op = vision::CutMixBatch(mindspore::dataset::ImageBatchFormat::kNHWC, 1, 1.5); EXPECT_EQ(cutmix_batch_op, nullptr); } TEST_F(MindDataTestPipeline, TestCutOutFail1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutOutFail1 with invalid parameters."; // Create object for the tensor op // Invalid negative length std::shared_ptr cutout_op = vision::CutOut(-10); EXPECT_EQ(cutout_op, nullptr); // Invalid negative number of patches cutout_op = vision::CutOut(10, -1); EXPECT_EQ(cutout_op, nullptr); } TEST_F(MindDataTestPipeline, DISABLED_TestCutOutFail2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutOutFail2 with invalid params, boundary cases."; // Create object for the tensor op // Invalid zero length std::shared_ptr cutout_op = vision::CutOut(0); EXPECT_EQ(cutout_op, nullptr); // Invalid zero number of patches cutout_op = vision::CutOut(10, 0); EXPECT_EQ(cutout_op, nullptr); } TEST_F(MindDataTestPipeline, TestCutOut) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestCutOut."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr cut_out1 = vision::CutOut(30, 5); EXPECT_NE(cut_out1, nullptr); std::shared_ptr cut_out2 = vision::CutOut(30); EXPECT_NE(cut_out2, nullptr); // Create a Map operation on ds ds = ds->Map({cut_out1, cut_out2}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestDecode) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestDecode."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, false, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr decode = vision::Decode(true); EXPECT_NE(decode, nullptr); // Create a Map operation on ds ds = ds->Map({decode}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestHwcToChw) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestHwcToChw."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr channel_swap = vision::HWC2CHW(); EXPECT_NE(channel_swap, nullptr); // Create a Map operation on ds ds = ds->Map({channel_swap}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); // check if the image is in NCHW EXPECT_EQ(batch_size == image->shape()[0] && 3 == image->shape()[1] && 2268 == image->shape()[2] && 4032 == image->shape()[3], true); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestMixUpBatchFail1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestMixUpBatchFail1 with negative alpha parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr mixup_batch_op = vision::MixUpBatch(-1); EXPECT_EQ(mixup_batch_op, nullptr); } TEST_F(MindDataTestPipeline, TestMixUpBatchFail2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestMixUpBatchFail2 with zero alpha parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr mixup_batch_op = vision::MixUpBatch(0.0); EXPECT_EQ(mixup_batch_op, nullptr); } TEST_F(MindDataTestPipeline, TestMixUpBatchSuccess1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestMixUpBatchSuccess1 with explicit alpha parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr mixup_batch_op = vision::MixUpBatch(2.0); EXPECT_NE(mixup_batch_op, nullptr); // Create a Map operation on ds ds = ds->Map({mixup_batch_op}, {"image", "label"}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 2); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestMixUpBatchSuccess2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestMixUpBatchSuccess1 with default alpha parameter."; // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 5; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr one_hot_op = transforms::OneHot(10); EXPECT_NE(one_hot_op, nullptr); // Create a Map operation on ds ds = ds->Map({one_hot_op}, {"label"}); EXPECT_NE(ds, nullptr); std::shared_ptr mixup_batch_op = vision::MixUpBatch(); EXPECT_NE(mixup_batch_op, nullptr); // Create a Map operation on ds ds = ds->Map({mixup_batch_op}, {"image", "label"}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 2); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestNormalize) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestNormalize."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr normalize = vision::Normalize({121.0, 115.0, 100.0}, {70.0, 68.0, 71.0}); EXPECT_NE(normalize, nullptr); // Create a Map operation on ds ds = ds->Map({normalize}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestNormalizeFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestNormalizeFail with invalid parameters."; // std value at 0.0 std::shared_ptr normalize = mindspore::dataset::api::vision::Normalize({121.0, 115.0, 100.0}, {0.0, 68.0, 71.0}); EXPECT_EQ(normalize, nullptr); // normalize with 2 values (not 3 values) for mean normalize = mindspore::dataset::api::vision::Normalize({121.0, 115.0}, {70.0, 68.0, 71.0}); EXPECT_EQ(normalize, nullptr); // normalize with 2 values (not 3 values) for standard deviation normalize = mindspore::dataset::api::vision::Normalize({121.0, 115.0, 100.0}, {68.0, 71.0}); EXPECT_EQ(normalize, nullptr); } TEST_F(MindDataTestPipeline, TestPad) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestPad."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr pad_op1 = vision::Pad({1, 2, 3, 4}, {0}, BorderType::kSymmetric); EXPECT_NE(pad_op1, nullptr); std::shared_ptr pad_op2 = vision::Pad({1}, {1, 1, 1}, BorderType::kEdge); EXPECT_NE(pad_op2, nullptr); std::shared_ptr pad_op3 = vision::Pad({1, 4}); EXPECT_NE(pad_op3, nullptr); // Create a Map operation on ds ds = ds->Map({pad_op1, pad_op2, pad_op3}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomAffineFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomAffineFail with invalid parameters."; // Create objects for the tensor ops std::shared_ptr affine = vision::RandomAffine({0.0, 0.0}, {}); EXPECT_EQ(affine, nullptr); // Invalid number of values for translate affine = vision::RandomAffine({0.0, 0.0}, {1, 1, 1, 1, 1}); EXPECT_EQ(affine, nullptr); // Invalid number of values for shear affine = vision::RandomAffine({30.0, 30.0}, {0.0, 0.0}, {2.0, 2.0}, {10.0}); EXPECT_EQ(affine, nullptr); } TEST_F(MindDataTestPipeline, TestRandomAffineSuccess1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomAffineSuccess1 with non-default parameters."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr affine = vision::RandomAffine({30.0, 30.0}, {-1.0, 1.0, -1.0, 1.0}, {2.0, 2.0}, {10.0, 10.0, 20.0, 20.0}); EXPECT_NE(affine, nullptr); // Create a Map operation on ds ds = ds->Map({affine}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomAffineSuccess2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomAffineSuccess2 with default parameters."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr affine = vision::RandomAffine({0.0, 0.0}); EXPECT_NE(affine, nullptr); // Create a Map operation on ds ds = ds->Map({affine}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomColor) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomColor with non-default parameters."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops // Valid case: Set lower bound and upper bound to be the same value zero std::shared_ptr random_color_op_1 = vision::RandomColor(0.0, 0.0); EXPECT_NE(random_color_op_1, nullptr); // Failure case: Set invalid lower bound greater than upper bound std::shared_ptr random_color_op_2 = vision::RandomColor(1.0, 0.1); EXPECT_EQ(random_color_op_2, nullptr); // Valid case: Set lower bound as zero and less than upper bound std::shared_ptr random_color_op_3 = vision::RandomColor(0.0, 1.1); EXPECT_NE(random_color_op_3, nullptr); // Failure case: Set invalid negative lower bound std::shared_ptr random_color_op_4 = vision::RandomColor(-0.5, 0.5); EXPECT_EQ(random_color_op_2, nullptr); // Create a Map operation on ds ds = ds->Map({random_color_op_1, random_color_op_3}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomColorAdjust) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomColorAdjust."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops // Use single value for vectors std::shared_ptr random_color_adjust1 = vision::RandomColorAdjust({1.0}, {0.0}, {0.5}, {0.5}); EXPECT_NE(random_color_adjust1, nullptr); // Use same 2 values for vectors std::shared_ptr random_color_adjust2 = vision::RandomColorAdjust({1.0, 1.0}, {0.0, 0.0}, {0.5, 0.5}, {0.5, 0.5}); EXPECT_NE(random_color_adjust2, nullptr); // Use different 2 value for vectors std::shared_ptr random_color_adjust3 = vision::RandomColorAdjust({0.5, 1.0}, {0.0, 0.5}, {0.25, 0.5}, {0.25, 0.5}); EXPECT_NE(random_color_adjust3, nullptr); // Use default input values std::shared_ptr random_color_adjust4 = vision::RandomColorAdjust(); EXPECT_NE(random_color_adjust4, nullptr); // Use subset of explictly set parameters std::shared_ptr random_color_adjust5 = vision::RandomColorAdjust({0.0, 0.5}, {0.25}); EXPECT_NE(random_color_adjust5, nullptr); // Create a Map operation on ds ds = ds->Map( {random_color_adjust1, random_color_adjust2, random_color_adjust3, random_color_adjust4, random_color_adjust5}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, DISABLED_TestRandomHorizontalFlipFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomHorizontalFlipFail with invalid parameters."; // Create object for the tensor op // Invalid zero input std::shared_ptr random_horizontal_flip_op = vision::RandomHorizontalFlip(0); EXPECT_EQ(random_horizontal_flip_op, nullptr); // Invalid >1 input random_horizontal_flip_op = vision::RandomHorizontalFlip(2); EXPECT_EQ(random_horizontal_flip_op, nullptr); } TEST_F(MindDataTestPipeline, TestRandomHorizontalAndVerticalFlip) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomHorizontalAndVerticalFlip for horizontal and vertical flips."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_vertical_flip_op = vision::RandomVerticalFlip(0.75); EXPECT_NE(random_vertical_flip_op, nullptr); std::shared_ptr random_horizontal_flip_op = vision::RandomHorizontalFlip(0.5); EXPECT_NE(random_horizontal_flip_op, nullptr); // Create a Map operation on ds ds = ds->Map({random_vertical_flip_op, random_horizontal_flip_op}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomPosterizeFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomPosterizeFail with invalid parameters."; // Create objects for the tensor ops // Invalid max > 8 std::shared_ptr posterize = vision::RandomPosterize({1, 9}); EXPECT_EQ(posterize, nullptr); // Invalid min < 1 posterize = vision::RandomPosterize({0, 8}); EXPECT_EQ(posterize, nullptr); // min > max posterize = vision::RandomPosterize({8, 1}); EXPECT_EQ(posterize, nullptr); // empty posterize = vision::RandomPosterize({}); EXPECT_EQ(posterize, nullptr); } TEST_F(MindDataTestPipeline, TestRandomPosterizeSuccess1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomPosterizeSuccess1 with non-default parameters."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr posterize = vision::RandomPosterize({1, 4}); EXPECT_NE(posterize, nullptr); // Create a Map operation on ds ds = ds->Map({posterize}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomPosterizeSuccess2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomPosterizeSuccess2 with default parameters."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr posterize = vision::RandomPosterize(); EXPECT_NE(posterize, nullptr); // Create a Map operation on ds ds = ds->Map({posterize}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomResizedCropSuccess1) { // Testing RandomResizedCrop with default values // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_resized_crop = vision::RandomResizedCrop({5}); EXPECT_NE(random_resized_crop, nullptr); // Create a Map operation on ds ds = ds->Map({random_resized_crop}, {"image"}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); EXPECT_EQ(image->shape()[0] == 5 && image->shape()[1] == 5, true); iter->GetNextRow(&row); } EXPECT_EQ(i, 10); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomResizedCropSuccess2) { // Testing RandomResizedCrop with non-default values // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_resized_crop = vision::RandomResizedCrop({5, 10}, {0.25, 0.75}, {0.5, 1.25}, mindspore::dataset::InterpolationMode::kArea, 20); EXPECT_NE(random_resized_crop, nullptr); // Create a Map operation on ds ds = ds->Map({random_resized_crop}, {"image"}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); EXPECT_EQ(image->shape()[0] == 5 && image->shape()[1] == 10, true); iter->GetNextRow(&row); } EXPECT_EQ(i, 10); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomResizedCropFail1) { // This should fail because size has negative value // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_resized_crop = vision::RandomResizedCrop({5, -10}); EXPECT_EQ(random_resized_crop, nullptr); } TEST_F(MindDataTestPipeline, TestRandomResizedCropFail2) { // This should fail because scale isn't in {min, max} format // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_resized_crop = vision::RandomResizedCrop({5, 10}, {4, 3}); EXPECT_EQ(random_resized_crop, nullptr); } TEST_F(MindDataTestPipeline, TestRandomResizedCropFail3) { // This should fail because ratio isn't in {min, max} format // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_resized_crop = vision::RandomResizedCrop({5, 10}, {4, 5}, {7, 6}); EXPECT_EQ(random_resized_crop, nullptr); } TEST_F(MindDataTestPipeline, TestRandomResizedCropFail4) { // This should fail because scale has a size of more than 2 // Create a Cifar10 Dataset std::string folder_path = datasets_root_path_ + "/testCifar10Data/"; std::shared_ptr ds = Cifar10(folder_path, "all", RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_resized_crop = vision::RandomResizedCrop({5, 10, 20}, {4, 5}, {7, 6}); EXPECT_EQ(random_resized_crop, nullptr); } TEST_F(MindDataTestPipeline, TestRandomRotation) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomRotation."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_rotation_op = vision::RandomRotation({-180, 180}); EXPECT_NE(random_rotation_op, nullptr); // Create a Map operation on ds ds = ds->Map({random_rotation_op}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomSharpness) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomSharpness."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 2; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops // Valid case: Input start degree and end degree std::shared_ptr random_sharpness_op_1 = vision::RandomSharpness({0.4, 2.3}); EXPECT_NE(random_sharpness_op_1, nullptr); // Failure case: Empty degrees vector std::shared_ptr random_sharpness_op_2 = vision::RandomSharpness({}); EXPECT_EQ(random_sharpness_op_2, nullptr); // Valid case: Use default input values std::shared_ptr random_sharpness_op_3 = vision::RandomSharpness(); EXPECT_NE(random_sharpness_op_3, nullptr); // Failure case: Single degree value std::shared_ptr random_sharpness_op_4 = vision::RandomSharpness({0.1}); EXPECT_EQ(random_sharpness_op_4, nullptr); // Create a Map operation on ds ds = ds->Map({random_sharpness_op_1, random_sharpness_op_3}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomSolarizeSucess1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomSolarizeSucess1."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::vector threshold = {10, 100}; std::shared_ptr random_solarize = mindspore::dataset::api::vision::RandomSolarize(threshold); EXPECT_NE(random_solarize, nullptr); // Create a Map operation on ds ds = ds->Map({random_solarize}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 10); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomSolarizeSucess2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomSolarizeSuccess2 with default parameters."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 10)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_solarize = mindspore::dataset::api::vision::RandomSolarize(); EXPECT_NE(random_solarize, nullptr); // Create a Map operation on ds ds = ds->Map({random_solarize}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 10); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, TestRandomSolarizeFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomSolarizeFail with invalid parameters."; std::vector threshold = {13, 1}; std::shared_ptr random_solarize = mindspore::dataset::api::vision::RandomSolarize(threshold); EXPECT_EQ(random_solarize, nullptr); threshold = {1, 2, 3}; random_solarize = mindspore::dataset::api::vision::RandomSolarize(threshold); EXPECT_EQ(random_solarize, nullptr); threshold = {1}; random_solarize = mindspore::dataset::api::vision::RandomSolarize(threshold); EXPECT_EQ(random_solarize, nullptr); threshold = {}; random_solarize = mindspore::dataset::api::vision::RandomSolarize(threshold); EXPECT_EQ(random_solarize, nullptr); } TEST_F(MindDataTestPipeline, DISABLED_TestRandomVerticalFlipFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestRandomVerticalFlipFail with invalid parameters."; // Create object for the tensor op // Invalid zero input std::shared_ptr random_vertical_flip_op = vision::RandomVerticalFlip(0); EXPECT_EQ(random_vertical_flip_op, nullptr); // Invalid >1 input random_vertical_flip_op = vision::RandomVerticalFlip(1.1); EXPECT_EQ(random_vertical_flip_op, nullptr); } TEST_F(MindDataTestPipeline, TestResizeFail) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestResize with invalid parameters."; // negative resize value std::shared_ptr resize_op = mindspore::dataset::api::vision::Resize({30, -30}); EXPECT_EQ(resize_op, nullptr); // zero resize value resize_op = mindspore::dataset::api::vision::Resize({0, 30}); EXPECT_EQ(resize_op, nullptr); // resize with 3 values resize_op = mindspore::dataset::api::vision::Resize({30, 20, 10}); EXPECT_EQ(resize_op, nullptr); } TEST_F(MindDataTestPipeline, TestResize1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestResize1 with single integer input."; // Create an ImageFolder Dataset std::string folder_path = datasets_root_path_ + "/testPK/data/"; std::shared_ptr ds = ImageFolder(folder_path, true, RandomSampler(false, 6)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 4; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create resize object with single integer input std::shared_ptr resize_op = vision::Resize({30}); EXPECT_NE(resize_op, nullptr); // Create a Map operation on ds ds = ds->Map({resize_op}); EXPECT_NE(ds, nullptr); // Create a Batch operation on ds int32_t batch_size = 1; ds = ds->Batch(batch_size); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 24); // Manually terminate the pipeline iter->Stop(); } TEST_F(MindDataTestPipeline, DISABLED_TestUniformAugmentFail1) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestUniformAugmentFail1 with invalid zero num_ops parameter."; // Create a Mnist Dataset std::string folder_path = datasets_root_path_ + "/testMnistData/"; std::shared_ptr ds = Mnist(folder_path, "all", RandomSampler(false, 20)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_crop_op = vision::RandomCrop({28, 28}); EXPECT_NE(random_crop_op, nullptr); std::shared_ptr center_crop_op = vision::CenterCrop({16, 16}); EXPECT_NE(center_crop_op, nullptr); // Try UniformAugment with invalid zero num_ops value std::shared_ptr uniform_aug_op = vision::UniformAugment({random_crop_op, center_crop_op}, 0); EXPECT_EQ(uniform_aug_op, nullptr); } TEST_F(MindDataTestPipeline, DISABLED_TestUniformAugmentFail2) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestUniformAugmentFail2 with invalid negative num_ops parameter."; // Create a Mnist Dataset std::string folder_path = datasets_root_path_ + "/testMnistData/"; std::shared_ptr ds = Mnist(folder_path, "all", RandomSampler(false, 20)); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr random_crop_op = vision::RandomCrop({28, 28}); EXPECT_NE(random_crop_op, nullptr); std::shared_ptr center_crop_op = vision::CenterCrop({16, 16}); EXPECT_NE(center_crop_op, nullptr); // Try UniformAugment with invalid negative num_ops value std::shared_ptr uniform_aug_op = vision::UniformAugment({random_crop_op, center_crop_op}, -1); EXPECT_EQ(uniform_aug_op, nullptr); } TEST_F(MindDataTestPipeline, TestUniformAugWithOps) { MS_LOG(INFO) << "Doing MindDataTestPipeline-TestUniformAugWithOps."; // Create a Mnist Dataset std::string folder_path = datasets_root_path_ + "/testMnistData/"; std::shared_ptr ds = Mnist(folder_path, "all", RandomSampler(false, 20)); EXPECT_NE(ds, nullptr); // Create a Repeat operation on ds int32_t repeat_num = 1; ds = ds->Repeat(repeat_num); EXPECT_NE(ds, nullptr); // Create objects for the tensor ops std::shared_ptr resize_op = vision::Resize({30, 30}); EXPECT_NE(resize_op, nullptr); std::shared_ptr random_crop_op = vision::RandomCrop({28, 28}); EXPECT_NE(random_crop_op, nullptr); std::shared_ptr center_crop_op = vision::CenterCrop({16, 16}); EXPECT_NE(center_crop_op, nullptr); std::shared_ptr uniform_aug_op = vision::UniformAugment({random_crop_op, center_crop_op}, 2); EXPECT_NE(uniform_aug_op, nullptr); // Create a Map operation on ds ds = ds->Map({resize_op, uniform_aug_op}); EXPECT_NE(ds, nullptr); // Create an iterator over the result of the above dataset // This will trigger the creation of the Execution Tree and launch it. std::shared_ptr iter = ds->CreateIterator(); EXPECT_NE(iter, nullptr); // Iterate the dataset and get each row std::unordered_map> row; iter->GetNextRow(&row); uint64_t i = 0; while (row.size() != 0) { i++; auto image = row["image"]; MS_LOG(INFO) << "Tensor image shape: " << image->shape(); iter->GetNextRow(&row); } EXPECT_EQ(i, 20); // Manually terminate the pipeline iter->Stop(); }