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test_eager_vision.py 4.6 kB

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  1. # Copyright 2020 Huawei Technologies Co., Ltd
  2. #
  3. # Licensed under the Apache License, Version 2.0 (the "License");
  4. # you may not use this file except in compliance with the License.
  5. # You may obtain a copy of the License at
  6. #
  7. # http://www.apache.org/licenses/LICENSE-2.0
  8. #
  9. # Unless required by applicable law or agreed to in writing, software
  10. # distributed under the License is distributed on an "AS IS" BASIS,
  11. # WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
  12. # See the License for the specific language governing permissions and
  13. # limitations under the License.
  14. # ==============================================================================
  15. import cv2
  16. import numpy as np
  17. from PIL import Image
  18. import mindspore.dataset.vision.c_transforms as C
  19. from mindspore import log as logger
  20. def test_eager_decode():
  21. img = np.fromfile("../data/dataset/apple.jpg", dtype=np.uint8)
  22. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  23. img = C.Decode()(img)
  24. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  25. assert img.shape == (2268, 4032, 3)
  26. fp = open("../data/dataset/apple.jpg", "rb")
  27. img2 = fp.read()
  28. img2 = C.Decode()(img2)
  29. logger.info("Image.type: {}, Image.shape: {}".format(type(img2), img2.shape))
  30. assert img2.shape == (2268, 4032, 3)
  31. def test_eager_resize():
  32. img = cv2.imread("../data/dataset/apple.jpg")
  33. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  34. img = C.Resize(size=(32, 32))(img)
  35. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  36. assert img.shape == (32, 32, 3)
  37. def test_eager_rescale():
  38. img = cv2.imread("../data/dataset/apple.jpg")
  39. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  40. pixel = img[0][0][0]
  41. rescale_factor = 0.5
  42. img = C.Rescale(rescale=rescale_factor, shift=0)(img)
  43. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  44. pixel_rescaled = img[0][0][0]
  45. assert pixel*rescale_factor == pixel_rescaled
  46. def test_eager_normalize():
  47. img = Image.open("../data/dataset/apple.jpg").convert("RGB")
  48. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.size))
  49. pixel = img.getpixel((0, 0))[0]
  50. mean_vec = [100, 100, 100]
  51. std_vec = [2, 2, 2]
  52. img = C.Normalize(mean=mean_vec, std=std_vec)(img)
  53. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  54. pixel_normalized = img[0][0][0]
  55. assert (pixel - mean_vec[0]) / std_vec[0] == pixel_normalized
  56. def test_eager_HWC2CHW():
  57. img = cv2.imread("../data/dataset/apple.jpg")
  58. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  59. channel = img.shape
  60. img = C.HWC2CHW()(img)
  61. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
  62. channel_swaped = img.shape
  63. assert channel == (channel_swaped[1], channel_swaped[2], channel_swaped[0])
  64. def test_eager_pad():
  65. img = Image.open("../data/dataset/apple.jpg").convert("RGB")
  66. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.size))
  67. img = C.Resize(size=(32, 32))(img)
  68. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.size))
  69. size = img.shape
  70. pad = 4
  71. img = C.Pad(padding=pad)(img)
  72. logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.size))
  73. size_padded = img.shape
  74. assert size_padded == (size[0] + 2 * pad, size[1] + 2 * pad, size[2])
  75. def test_eager_exceptions():
  76. try:
  77. img = "../data/dataset/apple.jpg"
  78. img = C.Decode()(img)
  79. assert False
  80. except TypeError as e:
  81. assert "Input should be an encoded image in 1-D NumPy format" in str(e)
  82. try:
  83. img = np.array(["a", "b", "c"])
  84. img = C.Decode()(img)
  85. assert False
  86. except TypeError as e:
  87. assert "Input should be an encoded image in 1-D NumPy format" in str(e)
  88. try:
  89. img = cv2.imread("../data/dataset/apple.jpg")
  90. img = C.Resize(size=(-32, 32))(img)
  91. assert False
  92. except ValueError as e:
  93. assert "not within the required interval" in str(e)
  94. try:
  95. img = "../data/dataset/apple.jpg"
  96. img = C.Pad(padding=4)(img)
  97. assert False
  98. except TypeError as e:
  99. assert "Input should be NumPy or PIL image" in str(e)
  100. if __name__ == '__main__':
  101. test_eager_decode()
  102. test_eager_resize()
  103. test_eager_rescale()
  104. test_eager_normalize()
  105. test_eager_HWC2CHW()
  106. test_eager_pad()
  107. test_eager_exceptions()