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- # Copyright 2021 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.
- # ==============================================================================
- """
- Testing RandomEqualize op in DE
- """
- import numpy as np
-
- import mindspore.dataset as ds
- from mindspore.dataset.vision.c_transforms import Decode, Resize, RandomEqualize, Equalize
- from mindspore import log as logger
- from util import visualize_list, visualize_image, diff_mse
-
- image_file = "../data/dataset/testImageNetData/train/class1/1_1.jpg"
- data_dir = "../data/dataset/testImageNetData/train/"
-
-
- def test_random_equalize_pipeline(plot=False):
- """
- Test RandomEqualize pipeline
- """
- logger.info("Test RandomEqualize pipeline")
-
- # Original Images
- data_set = ds.ImageFolderDataset(dataset_dir=data_dir, shuffle=False)
- transforms_original = [Decode(), Resize(size=[224, 224])]
- ds_original = data_set.map(operations=transforms_original, input_columns="image")
- ds_original = ds_original.batch(512)
-
- for idx, (image, _) in enumerate(ds_original):
- if idx == 0:
- images_original = image.asnumpy()
- else:
- images_original = np.append(images_original,
- image.asnumpy(),
- axis=0)
-
- # Randomly Equalized Images
- data_set1 = ds.ImageFolderDataset(dataset_dir=data_dir, shuffle=False)
- transform_random_equalize = [Decode(), Resize(size=[224, 224]), RandomEqualize(0.6)]
- ds_random_equalize = data_set1.map(operations=transform_random_equalize, input_columns="image")
- ds_random_equalize = ds_random_equalize.batch(512)
- for idx, (image, _) in enumerate(ds_random_equalize):
- if idx == 0:
- images_random_equalize = image.asnumpy()
- else:
- images_random_equalize = np.append(images_random_equalize,
- image.asnumpy(),
- axis=0)
- if plot:
- visualize_list(images_original, images_random_equalize)
-
- num_samples = images_original.shape[0]
- mse = np.zeros(num_samples)
- for i in range(num_samples):
- mse[i] = diff_mse(images_random_equalize[i], images_original[i])
- logger.info("MSE= {}".format(str(np.mean(mse))))
-
-
- def test_random_equalize_eager():
- """
- Test RandomEqualize eager.
- """
- img = np.fromfile(image_file, dtype=np.uint8)
- logger.info("Image.type: {}, Image.shape: {}".format(type(img), img.shape))
-
- img = Decode()(img)
- img_equalized = Equalize()(img)
- img_random_equalized = RandomEqualize(1.0)(img)
- logger.info("Image.type: {}, Image.shape: {}".format(type(img_random_equalized), img_random_equalized.shape))
-
- assert img_random_equalized.all() == img_equalized.all()
-
-
- def test_random_equalize_comp(plot=False):
- """
- Test RandomEqualize op compared with Equalize op.
- """
- random_equalize_op = RandomEqualize(prob=1.0)
- equalize_op = Equalize()
-
- dataset1 = ds.ImageFolderDataset(data_dir, 1, shuffle=False, decode=True)
- for item in dataset1.create_dict_iterator(num_epochs=1, output_numpy=True):
- image = item['image']
- dataset1.map(operations=random_equalize_op, input_columns=['image'])
- dataset2 = ds.ImageFolderDataset(data_dir, 1, shuffle=False, decode=True)
- dataset2.map(operations=equalize_op, input_columns=['image'])
- for item1, item2 in zip(dataset1.create_dict_iterator(num_epochs=1, output_numpy=True),
- dataset2.create_dict_iterator(num_epochs=1, output_numpy=True)):
- image_random_equalized = item1['image']
- image_equalized = item2['image']
-
- mse = diff_mse(image_equalized, image_random_equalized)
- assert mse == 0
- logger.info("mse: {}".format(mse))
- if plot:
- visualize_image(image, image_random_equalized, mse, image_equalized)
-
-
- def test_random_equalize_invalid_prob():
- """
- Test eager. prob out of range.
- """
- logger.info("test_random_equalize_invalid_prob")
- dataset = ds.ImageFolderDataset(data_dir, 1, shuffle=False, decode=True)
- try:
- random_equalize_op = RandomEqualize(1.5)
- dataset = dataset.map(operations=random_equalize_op, input_columns=['image'])
- except ValueError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert "Input prob is not within the required interval of [0.0, 1.0]." in str(e)
-
-
- if __name__ == "__main__":
- test_random_equalize_pipeline(plot=True)
- test_random_equalize_eager()
- test_random_equalize_comp(plot=True)
- test_random_equalize_invalid_prob()
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