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execute_test.cc 10 kB

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  1. /**
  2. * Copyright 2020-2021 Huawei Technologies Co., Ltd
  3. *
  4. * Licensed under the Apache License, Version 2.0 (the "License");
  5. * you may not use this file except in compliance with the License.
  6. * You may obtain a copy of the License at
  7. *
  8. * http://www.apache.org/licenses/LICENSE-2.0
  9. *
  10. * Unless required by applicable law or agreed to in writing, software
  11. * distributed under the License is distributed on an "AS IS" BASIS,
  12. * WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  13. * See the License for the specific language governing permissions and
  14. * limitations under the License.
  15. */
  16. #include "common/common.h"
  17. #include "include/api/types.h"
  18. #include "minddata/dataset/core/de_tensor.h"
  19. #include "minddata/dataset/include/dataset/execute.h"
  20. #include "minddata/dataset/include/dataset/transforms.h"
  21. #include "minddata/dataset/include/dataset/vision.h"
  22. #include "minddata/dataset/include/dataset/text.h"
  23. #include "utils/log_adapter.h"
  24. using namespace mindspore::dataset;
  25. using mindspore::LogStream;
  26. using mindspore::ExceptionType::NoExceptionType;
  27. using mindspore::MsLogLevel::INFO;
  28. class MindDataTestExecute : public UT::DatasetOpTesting {
  29. protected:
  30. };
  31. TEST_F(MindDataTestExecute, TestComposeTransforms) {
  32. MS_LOG(INFO) << "Doing TestComposeTransforms.";
  33. // Read images
  34. auto image = ReadFileToTensor("data/dataset/apple.jpg");
  35. // Transform params
  36. std::shared_ptr<TensorTransform> decode = std::make_shared<vision::Decode>();
  37. std::shared_ptr<TensorTransform> center_crop(new vision::CenterCrop({30}));
  38. std::shared_ptr<TensorTransform> rescale = std::make_shared<vision::Rescale>(1. / 3, 0.5);
  39. auto transform = Execute({decode, center_crop, rescale});
  40. Status rc = transform(image, &image);
  41. EXPECT_EQ(rc, Status::OK());
  42. EXPECT_EQ(30, image.Shape()[0]);
  43. EXPECT_EQ(30, image.Shape()[1]);
  44. }
  45. TEST_F(MindDataTestExecute, TestTransformInput1) {
  46. MS_LOG(INFO) << "Doing MindDataTestExecute-TestTransformInput1.";
  47. // Test Execute with transform op input using API constructors, with std::shared_ptr<TensorTransform pointers,
  48. // instantiated via mix of make_shared and new
  49. // Read images
  50. auto image = ReadFileToTensor("data/dataset/apple.jpg");
  51. // Define transform operations
  52. std::shared_ptr<TensorTransform> decode = std::make_shared<vision::Decode>();
  53. std::shared_ptr<TensorTransform> resize(new vision::Resize({224, 224}));
  54. std::shared_ptr<TensorTransform> normalize(
  55. new vision::Normalize({0.485 * 255, 0.456 * 255, 0.406 * 255}, {0.229 * 255, 0.224 * 255, 0.225 * 255}));
  56. std::shared_ptr<TensorTransform> hwc2chw = std::make_shared<vision::HWC2CHW>();
  57. mindspore::dataset::Execute Transform({decode, resize, normalize, hwc2chw});
  58. // Apply transform on image
  59. Status rc = Transform(image, &image);
  60. // Check image info
  61. ASSERT_TRUE(rc.IsOk());
  62. ASSERT_EQ(image.Shape().size(), 3);
  63. ASSERT_EQ(image.Shape()[0], 3);
  64. ASSERT_EQ(image.Shape()[1], 224);
  65. ASSERT_EQ(image.Shape()[2], 224);
  66. }
  67. TEST_F(MindDataTestExecute, TestTransformInput2) {
  68. MS_LOG(INFO) << "Doing MindDataTestExecute-TestTransformInput2.";
  69. // Test Execute with transform op input using API constructors, with std::shared_ptr<TensorTransform pointers,
  70. // instantiated via new
  71. // With this way of creating TensorTransforms, we don't need to explicitly delete the object created with the
  72. // "new" keyword. When the shared pointer goes out of scope the object destructor will be called.
  73. // Read image, construct MSTensor from dataset tensor
  74. std::shared_ptr<mindspore::dataset::Tensor> de_tensor;
  75. mindspore::dataset::Tensor::CreateFromFile("data/dataset/apple.jpg", &de_tensor);
  76. auto image = mindspore::MSTensor(std::make_shared<mindspore::dataset::DETensor>(de_tensor));
  77. // Define transform operations
  78. std::shared_ptr<TensorTransform> decode(new vision::Decode());
  79. std::shared_ptr<TensorTransform> resize(new vision::Resize({224, 224}));
  80. std::shared_ptr<TensorTransform> normalize(
  81. new vision::Normalize({0.485 * 255, 0.456 * 255, 0.406 * 255}, {0.229 * 255, 0.224 * 255, 0.225 * 255}));
  82. std::shared_ptr<TensorTransform> hwc2chw(new vision::HWC2CHW());
  83. mindspore::dataset::Execute Transform({decode, resize, normalize, hwc2chw});
  84. // Apply transform on image
  85. Status rc = Transform(image, &image);
  86. // Check image info
  87. ASSERT_TRUE(rc.IsOk());
  88. ASSERT_EQ(image.Shape().size(), 3);
  89. ASSERT_EQ(image.Shape()[0], 3);
  90. ASSERT_EQ(image.Shape()[1], 224);
  91. ASSERT_EQ(image.Shape()[2], 224);
  92. }
  93. TEST_F(MindDataTestExecute, TestTransformInput3) {
  94. MS_LOG(INFO) << "Doing MindDataTestExecute-TestTransformInput3.";
  95. // Test Execute with transform op input using API constructors, with auto pointers
  96. // Read image, construct MSTensor from dataset tensor
  97. std::shared_ptr<mindspore::dataset::Tensor> de_tensor;
  98. mindspore::dataset::Tensor::CreateFromFile("data/dataset/apple.jpg", &de_tensor);
  99. auto image = mindspore::MSTensor(std::make_shared<mindspore::dataset::DETensor>(de_tensor));
  100. // Define transform operations
  101. auto decode = vision::Decode();
  102. mindspore::dataset::Execute Transform1(decode);
  103. auto resize = vision::Resize({224, 224});
  104. mindspore::dataset::Execute Transform2(resize);
  105. // Apply transform on image
  106. Status rc;
  107. rc = Transform1(image, &image);
  108. ASSERT_TRUE(rc.IsOk());
  109. rc = Transform2(image, &image);
  110. ASSERT_TRUE(rc.IsOk());
  111. // Check image info
  112. ASSERT_EQ(image.Shape().size(), 3);
  113. ASSERT_EQ(image.Shape()[0], 224);
  114. ASSERT_EQ(image.Shape()[1], 224);
  115. ASSERT_EQ(image.Shape()[2], 3);
  116. }
  117. TEST_F(MindDataTestExecute, TestTransformInputSequential) {
  118. MS_LOG(INFO) << "Doing MindDataTestExecute-TestTransformInputSequential.";
  119. // Test Execute with transform op input using API constructors, with auto pointers;
  120. // Apply 2 transformations sequentially, including single non-vector Transform op input
  121. // Read image, construct MSTensor from dataset tensor
  122. std::shared_ptr<mindspore::dataset::Tensor> de_tensor;
  123. mindspore::dataset::Tensor::CreateFromFile("data/dataset/apple.jpg", &de_tensor);
  124. auto image = mindspore::MSTensor(std::make_shared<mindspore::dataset::DETensor>(de_tensor));
  125. // Define transform#1 operations
  126. std::shared_ptr<TensorTransform> decode(new vision::Decode());
  127. std::shared_ptr<TensorTransform> resize(new vision::Resize({224, 224}));
  128. std::shared_ptr<TensorTransform> normalize(
  129. new vision::Normalize({0.485 * 255, 0.456 * 255, 0.406 * 255}, {0.229 * 255, 0.224 * 255, 0.225 * 255}));
  130. std::vector<std::shared_ptr<TensorTransform>> op_list = {decode, resize, normalize};
  131. mindspore::dataset::Execute Transform(op_list);
  132. // Apply transform#1 on image
  133. Status rc = Transform(image, &image);
  134. // Define transform#2 operations
  135. std::shared_ptr<TensorTransform> hwc2chw(new vision::HWC2CHW());
  136. mindspore::dataset::Execute Transform2(hwc2chw);
  137. // Apply transform#2 on image
  138. rc = Transform2(image, &image);
  139. // Check image info
  140. ASSERT_TRUE(rc.IsOk());
  141. ASSERT_EQ(image.Shape().size(), 3);
  142. ASSERT_EQ(image.Shape()[0], 3);
  143. ASSERT_EQ(image.Shape()[1], 224);
  144. ASSERT_EQ(image.Shape()[2], 224);
  145. }
  146. TEST_F(MindDataTestExecute, TestTransformDecodeResizeCenterCrop1) {
  147. MS_LOG(INFO) << "Doing MindDataTestExecute-TestTransformDecodeResizeCenterCrop1.";
  148. // Test Execute with Decode, Resize and CenterCrop transform ops input using API constructors, with shared pointers
  149. // Read image, construct MSTensor from dataset tensor
  150. std::shared_ptr<mindspore::dataset::Tensor> de_tensor;
  151. mindspore::dataset::Tensor::CreateFromFile("data/dataset/apple.jpg", &de_tensor);
  152. auto image = mindspore::MSTensor(std::make_shared<mindspore::dataset::DETensor>(de_tensor));
  153. // Define transform operations
  154. std::vector<int32_t> resize_paras = {256, 256};
  155. std::vector<int32_t> crop_paras = {224, 224};
  156. std::shared_ptr<TensorTransform> decode(new vision::Decode());
  157. std::shared_ptr<TensorTransform> resize(new vision::Resize(resize_paras));
  158. std::shared_ptr<TensorTransform> centercrop(new vision::CenterCrop(crop_paras));
  159. std::shared_ptr<TensorTransform> hwc2chw(new vision::HWC2CHW());
  160. std::vector<std::shared_ptr<TensorTransform>> op_list = {decode, resize, centercrop, hwc2chw};
  161. mindspore::dataset::Execute Transform(op_list, MapTargetDevice::kCpu);
  162. // Apply transform on image
  163. Status rc = Transform(image, &image);
  164. // Check image info
  165. ASSERT_TRUE(rc.IsOk());
  166. ASSERT_EQ(image.Shape().size(), 3);
  167. ASSERT_EQ(image.Shape()[0], 3);
  168. ASSERT_EQ(image.Shape()[1], 224);
  169. ASSERT_EQ(image.Shape()[2], 224);
  170. }
  171. TEST_F(MindDataTestExecute, TestUniformAugment) {
  172. // Read images
  173. auto image = ReadFileToTensor("data/dataset/apple.jpg");
  174. std::vector<mindspore::MSTensor> image2;
  175. // Transform params
  176. std::shared_ptr<TensorTransform> decode = std::make_shared<vision::Decode>();
  177. std::shared_ptr<TensorTransform> resize_op(new vision::Resize({16, 16}));
  178. std::shared_ptr<TensorTransform> vertical = std::make_shared<vision::RandomVerticalFlip>();
  179. std::shared_ptr<TensorTransform> horizontal = std::make_shared<vision::RandomHorizontalFlip>();
  180. std::shared_ptr<TensorTransform> uniform_op(new vision::UniformAugment({resize_op, vertical, horizontal}, 3));
  181. auto transform1 = Execute({decode});
  182. Status rc = transform1(image, &image);
  183. ASSERT_TRUE(rc.IsOk());
  184. auto transform2 = Execute({uniform_op});
  185. rc = transform2({image}, &image2);
  186. ASSERT_TRUE(rc.IsOk());
  187. }
  188. TEST_F(MindDataTestExecute, TestBasicTokenizer) {
  189. std::shared_ptr<Tensor> de_tensor;
  190. Tensor::CreateScalar<std::string>("Welcome to China.", &de_tensor);
  191. auto txt = mindspore::MSTensor(std::make_shared<mindspore::dataset::DETensor>(de_tensor));
  192. std::vector<mindspore::MSTensor> txt_result;
  193. // Transform params
  194. std::shared_ptr<TensorTransform> tokenizer =
  195. std::make_shared<text::BasicTokenizer>(false, false, NormalizeForm::kNone, false, true);
  196. // BasicTokenizer has 3 outputs so we need a vector to receive its result
  197. auto transform1 = Execute({tokenizer});
  198. Status rc = transform1({txt}, &txt_result);
  199. ASSERT_EQ(txt_result.size(), 3);
  200. ASSERT_TRUE(rc.IsOk());
  201. }