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- # 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.
- # ==============================================================================
- """
- Testing Normalize op in DE
- """
- import numpy as np
- import mindspore.dataset as ds
- import mindspore.dataset.transforms.py_transforms
- import mindspore.dataset.vision.c_transforms as c_vision
- import mindspore.dataset.vision.py_transforms as py_vision
- from mindspore import log as logger
- from util import diff_mse, visualize_image
-
- DATA_DIR = ["../data/dataset/test_tf_file_3_images/train-0000-of-0001.data"]
- SCHEMA_DIR = "../data/dataset/test_tf_file_3_images/datasetSchema.json"
-
- GENERATE_GOLDEN = False
-
-
- def normalizepad_np(image, mean, std):
- """
- Apply the normalize+pad
- """
- # DE decodes the image in RGB by default, hence
- # the values here are in RGB
- image = np.array(image, np.float32)
- image = image - np.array(mean)
- image = image * (1.0 / np.array(std))
- zeros = np.zeros([image.shape[0], image.shape[1], 1], dtype=np.float32)
- output = np.concatenate((image, zeros), axis=2)
- return output
-
-
- def test_normalizepad_op_c(plot=False):
- """
- Test NormalizePad in cpp transformations
- """
- logger.info("Test Normalize in cpp")
- mean = [121.0, 115.0, 100.0]
- std = [70.0, 68.0, 71.0]
- # define map operations
- decode_op = c_vision.Decode()
- normalizepad_op = c_vision.NormalizePad(mean, std)
-
- # First dataset
- data1 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image"], shuffle=False)
- data1 = data1.map(operations=decode_op, input_columns=["image"])
- data1 = data1.map(operations=normalizepad_op, input_columns=["image"])
-
- # Second dataset
- data2 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image"], shuffle=False)
- data2 = data2.map(operations=decode_op, input_columns=["image"])
-
- num_iter = 0
- for item1, item2 in zip(data1.create_dict_iterator(num_epochs=1, output_numpy=True),
- data2.create_dict_iterator(num_epochs=1, output_numpy=True)):
- image_de_normalized = item1["image"]
- image_original = item2["image"]
- image_np_normalized = normalizepad_np(image_original, mean, std)
- mse = diff_mse(image_de_normalized, image_np_normalized)
- logger.info("image_{}, mse: {}".format(num_iter + 1, mse))
- assert mse < 0.01
- if plot:
- visualize_image(image_original, image_de_normalized, mse, image_np_normalized)
- num_iter += 1
-
-
- def test_normalizepad_op_py(plot=False):
- """
- Test NormalizePad in python transformations
- """
- logger.info("Test Normalize in python")
- mean = [0.475, 0.45, 0.392]
- std = [0.275, 0.267, 0.278]
- # define map operations
- transforms = [
- py_vision.Decode(),
- py_vision.ToTensor()
- ]
- transform = mindspore.dataset.transforms.py_transforms.Compose(transforms)
- normalizepad_op = py_vision.NormalizePad(mean, std)
-
- # First dataset
- data1 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image"], shuffle=False)
- data1 = data1.map(operations=transform, input_columns=["image"])
- data1 = data1.map(operations=normalizepad_op, input_columns=["image"])
-
- # Second dataset
- data2 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image"], shuffle=False)
- data2 = data2.map(operations=transform, input_columns=["image"])
-
- num_iter = 0
- for item1, item2 in zip(data1.create_dict_iterator(num_epochs=1, output_numpy=True),
- data2.create_dict_iterator(num_epochs=1, output_numpy=True)):
- image_de_normalized = (item1["image"].transpose(1, 2, 0) * 255).astype(np.uint8)
- image_np_normalized = (normalizepad_np(item2["image"].transpose(1, 2, 0), mean, std) * 255).astype(np.uint8)
- image_original = (item2["image"].transpose(1, 2, 0) * 255).astype(np.uint8)
- mse = diff_mse(image_de_normalized, image_np_normalized)
- logger.info("image_{}, mse: {}".format(num_iter + 1, mse))
- assert mse < 0.01
- if plot:
- visualize_image(image_original, image_de_normalized, mse, image_np_normalized)
- num_iter += 1
-
-
- def test_decode_normalizepad_op():
- """
- Test Decode op followed by NormalizePad op
- """
- logger.info("Test [Decode, Normalize] in one Map")
-
- data1 = ds.TFRecordDataset(DATA_DIR, SCHEMA_DIR, columns_list=["image", "label"], num_parallel_workers=1,
- shuffle=False)
-
- # define map operations
- decode_op = c_vision.Decode()
- normalizepad_op = c_vision.NormalizePad([121.0, 115.0, 100.0], [70.0, 68.0, 71.0], "float16")
-
- # apply map operations on images
- data1 = data1.map(operations=[decode_op, normalizepad_op], input_columns=["image"])
-
- num_iter = 0
- for item in data1.create_dict_iterator(num_epochs=1, output_numpy=True):
- logger.info("Looping inside iterator {}".format(num_iter))
- assert item["image"].dtype == np.float16
- num_iter += 1
-
-
- def test_normalizepad_exception_unequal_size_c():
- """
- Test NormalizePad in c transformation: len(mean) != len(std)
- expected to raise ValueError
- """
- logger.info("test_normalize_exception_unequal_size_c")
- try:
- _ = c_vision.NormalizePad([100, 250, 125], [50, 50, 75, 75])
- except ValueError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert str(e) == "Length of mean and std must be equal."
-
- try:
- _ = c_vision.NormalizePad([100, 250, 125], [50, 50, 75], 1)
- except TypeError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert str(e) == "dtype should be string."
-
- try:
- _ = c_vision.NormalizePad([100, 250, 125], [50, 50, 75], "")
- except ValueError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert str(e) == "dtype only support float32 or float16."
-
-
- def test_normalizepad_exception_unequal_size_py():
- """
- Test NormalizePad in python transformation: len(mean) != len(std)
- expected to raise ValueError
- """
- logger.info("test_normalizepad_exception_unequal_size_py")
- try:
- _ = py_vision.NormalizePad([0.50, 0.30, 0.75], [0.18, 0.32, 0.71, 0.72])
- except ValueError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert str(e) == "Length of mean and std must be equal."
-
- try:
- _ = py_vision.NormalizePad([0.50, 0.30, 0.75], [0.18, 0.32, 0.71], 1)
- except TypeError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert str(e) == "dtype should be string."
-
- try:
- _ = py_vision.NormalizePad([0.50, 0.30, 0.75], [0.18, 0.32, 0.71], "")
- except ValueError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert str(e) == "dtype only support float32 or float16."
-
-
- def test_normalizepad_exception_invalid_range_py():
- """
- Test NormalizePad in python transformation: value is not in range [0,1]
- expected to raise ValueError
- """
- logger.info("test_normalizepad_exception_invalid_range_py")
- try:
- _ = py_vision.NormalizePad([0.75, 1.25, 0.5], [0.1, 0.18, 1.32])
- except ValueError as e:
- logger.info("Got an exception in DE: {}".format(str(e)))
- assert "Input mean_value is not within the required interval of [0.0, 1.0]." in str(e)
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