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# Copyright 2023 HuggingFace Inc.
#
# 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.
import inspect
import json
import os
import pathlib
import tempfile
import time
import warnings
import numpy as np
import requests
from packaging import version
from transformers import AutoImageProcessor, BatchFeature
from transformers.image_utils import AnnotationFormat, AnnotionFormat
from transformers.testing_utils import (
check_json_file_has_correct_format,
is_flaky,
require_torch,
require_torch_accelerator,
require_vision,
slow,
torch_device,
)
from transformers.utils import is_torch_available, is_vision_available
if is_torch_available():
import torch
if is_vision_available():
from PIL import Image
def prepare_image_inputs(
batch_size,
min_resolution,
max_resolution,
num_channels,
size_divisor=None,
equal_resolution=False,
numpify=False,
torchify=False,
):
"""This function prepares a list of PIL images, or a list of numpy arrays if one specifies numpify=True,
or a list of PyTorch tensors if one specifies torchify=True.
One can specify whether the images are of the same resolution or not.
"""
assert not (numpify and torchify), "You cannot specify both numpy and PyTorch tensors at the same time"
image_inputs = []
for i in range(batch_size):
if equal_resolution:
width = height = max_resolution
else:
# To avoid getting image width/height 0
if size_divisor is not None:
# If `size_divisor` is defined, the image needs to have width/size >= `size_divisor`
min_resolution = max(size_divisor, min_resolution)
width, height = np.random.choice(np.arange(min_resolution, max_resolution), 2)
image_inputs.append(np.random.randint(255, size=(num_channels, width, height), dtype=np.uint8))
if not numpify and not torchify:
# PIL expects the channel dimension as last dimension
image_inputs = [Image.fromarray(np.moveaxis(image, 0, -1)) for image in image_inputs]
if torchify:
image_inputs = [torch.from_numpy(image) for image in image_inputs]
if numpify:
# Numpy images are typically in channels last format
image_inputs = [image.transpose(1, 2, 0) for image in image_inputs]
return image_inputs
def prepare_video(num_frames, num_channels, width=10, height=10, numpify=False, torchify=False):
"""This function prepares a video as a list of PIL images/NumPy arrays/PyTorch tensors."""
video = []
for i in range(num_frames):
video.append(np.random.randint(255, size=(num_channels, width, height), dtype=np.uint8))
if not numpify and not torchify:
# PIL expects the channel dimension as last dimension
video = [Image.fromarray(np.moveaxis(frame, 0, -1)) for frame in video]
if torchify:
video = [torch.from_numpy(frame) for frame in video]
return video
def prepare_video_inputs(
batch_size,
num_frames,
num_channels,
min_resolution,
max_resolution,
equal_resolution=False,
numpify=False,
torchify=False,
):
"""This function prepares a batch of videos: a list of list of PIL images, or a list of list of numpy arrays if
one specifies numpify=True, or a list of list of PyTorch tensors if one specifies torchify=True.
One can specify whether the videos are of the same resolution or not.
"""
assert not (numpify and torchify), "You cannot specify both numpy and PyTorch tensors at the same time"
video_inputs = []
for _ in range(batch_size):
if equal_resolution:
width = height = max_resolution
else:
width, height = np.random.choice(np.arange(min_resolution, max_resolution), 2)
video = prepare_video(
num_frames=num_frames,
num_channels=num_channels,
width=width,
height=height,
numpify=numpify,
torchify=torchify,
)
video_inputs.append(video)
return video_inputs
class ImageProcessingTestMixin:
test_cast_dtype = None
image_processing_class = None
fast_image_processing_class = None
image_processors_list = None
test_slow_image_processor = True
test_fast_image_processor = True
def setUp(self):
image_processor_list = []
if self.test_slow_image_processor and self.image_processing_class:
image_processor_list.append(self.image_processing_class)
if self.test_fast_image_processor and self.fast_image_processing_class:
image_processor_list.append(self.fast_image_processing_class)
self.image_processor_list = image_processor_list
@require_vision
@require_torch
def test_slow_fast_equivalence(self):
if not self.test_slow_image_processor or not self.test_fast_image_processor:
self.skipTest(reason="Skipping slow/fast equivalence test")
if self.image_processing_class is None or self.fast_image_processing_class is None:
self.skipTest(reason="Skipping slow/fast equivalence test as one of the image processors is not defined")
dummy_image = Image.open(
requests.get("http://images.cocodataset.org/val2017/000000039769.jpg", stream=True).raw
)
image_processor_slow = self.image_processing_class(**self.image_processor_dict)
image_processor_fast = self.fast_image_processing_class(**self.image_processor_dict)
encoding_slow = image_processor_slow(dummy_image, return_tensors="pt")
encoding_fast = image_processor_fast(dummy_image, return_tensors="pt")
torch.testing.assert_close(encoding_slow.pixel_values, encoding_fast.pixel_values, atol=1e-1, rtol=1e-3)
self.assertLessEqual(
torch.mean(torch.abs(encoding_slow.pixel_values - encoding_fast.pixel_values)).item(), 5e-3
)
@require_vision
@require_torch
def test_slow_fast_equivalence_batched(self):
if not self.test_slow_image_processor or not self.test_fast_image_processor:
self.skipTest(reason="Skipping slow/fast equivalence test")
if self.image_processing_class is None or self.fast_image_processing_class is None:
self.skipTest(reason="Skipping slow/fast equivalence test as one of the image processors is not defined")
if hasattr(self.image_processor_tester, "do_center_crop") and self.image_processor_tester.do_center_crop:
self.skipTest(
reason="Skipping as do_center_crop is True and center_crop functions are not equivalent for fast and slow processors"
)
dummy_images = self.image_processor_tester.prepare_image_inputs(equal_resolution=False, torchify=True)
image_processor_slow = self.image_processing_class(**self.image_processor_dict)
image_processor_fast = self.fast_image_processing_class(**self.image_processor_dict)
encoding_slow = image_processor_slow(dummy_images, return_tensors="pt")
encoding_fast = image_processor_fast(dummy_images, return_tensors="pt")
torch.testing.assert_close(encoding_slow.pixel_values, encoding_fast.pixel_values, atol=1e-1, rtol=1e-3)
self.assertLessEqual(
torch.mean(torch.abs(encoding_slow.pixel_values - encoding_fast.pixel_values)).item(), 5e-3
)
@require_vision
@require_torch
@is_flaky()
def test_fast_is_faster_than_slow(self):
if not self.test_slow_image_processor or not self.test_fast_image_processor:
self.skipTest(reason="Skipping speed test")
if self.image_processing_class is None or self.fast_image_processing_class is None:
self.skipTest(reason="Skipping speed test as one of the image processors is not defined")
def measure_time(image_processor, image):
# Warmup
for _ in range(5):
_ = image_processor(image, return_tensors="pt")
all_times = []
for _ in range(10):
start = time.time()
_ = image_processor(image, return_tensors="pt")
all_times.append(time.time() - start)
# Take the average of the fastest 3 runs
avg_time = sum(sorted(all_times[:3])) / 3.0
return avg_time
dummy_images = [torch.randint(0, 255, (3, 224, 224), dtype=torch.uint8) for _ in range(4)]
image_processor_slow = self.image_processing_class(**self.image_processor_dict)
image_processor_fast = self.fast_image_processing_class(**self.image_processor_dict)
fast_time = measure_time(image_processor_fast, dummy_images)
slow_time = measure_time(image_processor_slow, dummy_images)
self.assertLessEqual(fast_time, slow_time)
def test_image_processor_to_json_string(self):
for image_processing_class in self.image_processor_list:
image_processor = image_processing_class(**self.image_processor_dict)
obj = json.loads(image_processor.to_json_string())
for key, value in self.image_processor_dict.items():
self.assertEqual(obj[key], value)
def test_image_processor_to_json_file(self):
for image_processing_class in self.image_processor_list:
image_processor_first = image_processing_class(**self.image_processor_dict)
with tempfile.TemporaryDirectory() as tmpdirname:
json_file_path = os.path.join(tmpdirname, "image_processor.json")
image_processor_first.to_json_file(json_file_path)
image_processor_second = image_processing_class.from_json_file(json_file_path)
self.assertEqual(image_processor_second.to_dict(), image_processor_first.to_dict())
def test_image_processor_from_and_save_pretrained(self):
for image_processing_class in self.image_processor_list:
image_processor_first = image_processing_class(**self.image_processor_dict)
with tempfile.TemporaryDirectory() as tmpdirname:
saved_file = image_processor_first.save_pretrained(tmpdirname)[0]
check_json_file_has_correct_format(saved_file)
image_processor_second = image_processing_class.from_pretrained(tmpdirname)
self.assertEqual(image_processor_second.to_dict(), image_processor_first.to_dict())
def test_image_processor_save_load_with_autoimageprocessor(self):
for i, image_processing_class in enumerate(self.image_processor_list):
image_processor_first = image_processing_class(**self.image_processor_dict)
with tempfile.TemporaryDirectory() as tmpdirname:
saved_file = image_processor_first.save_pretrained(tmpdirname)[0]
check_json_file_has_correct_format(saved_file)
use_fast = i == 1 or not self.test_slow_image_processor
image_processor_second = AutoImageProcessor.from_pretrained(tmpdirname, use_fast=use_fast)
self.assertEqual(image_processor_second.to_dict(), image_processor_first.to_dict())
def test_save_load_fast_slow(self):
"Test that we can load a fast image processor from a slow one and vice-versa."
if self.image_processing_class is None or self.fast_image_processing_class is None:
self.skipTest("Skipping slow/fast save/load test as one of the image processors is not defined")
image_processor_dict = self.image_processor_tester.prepare_image_processor_dict()
image_processor_slow_0 = self.image_processing_class(**image_processor_dict)
# Load fast image processor from slow one
with tempfile.TemporaryDirectory() as tmpdirname:
image_processor_slow_0.save_pretrained(tmpdirname)
image_processor_fast_0 = self.fast_image_processing_class.from_pretrained(tmpdirname)
image_processor_fast_1 = self.fast_image_processing_class(**image_processor_dict)
# Load slow image processor from fast one
with tempfile.TemporaryDirectory() as tmpdirname:
image_processor_fast_1.save_pretrained(tmpdirname)
image_processor_slow_1 = self.image_processing_class.from_pretrained(tmpdirname)
dict_slow_0 = image_processor_slow_0.to_dict()
dict_slow_1 = image_processor_slow_1.to_dict()
difference = {
key: dict_slow_0.get(key) if key in dict_slow_0 else dict_slow_1.get(key)
for key in set(dict_slow_0) ^ set(dict_slow_1)
}
dict_slow_0 = {key: dict_slow_0[key] for key in set(dict_slow_0) & set(dict_slow_1)}
dict_slow_1 = {key: dict_slow_1[key] for key in set(dict_slow_0) & set(dict_slow_1)}
# check that all additional keys are None, except for `default_to_square` and `data_format` which are only set in fast processors
self.assertTrue(
all(value is None for key, value in difference.items() if key not in ["default_to_square", "data_format"])
)
# check that the remaining keys are the same
self.assertEqual(dict_slow_0, dict_slow_1)
dict_fast_0 = image_processor_fast_0.to_dict()
dict_fast_1 = image_processor_fast_1.to_dict()
difference = {
key: dict_fast_0.get(key) if key in dict_fast_0 else dict_fast_1.get(key)
for key in set(dict_fast_0) ^ set(dict_fast_1)
}
dict_fast_0 = {key: dict_fast_0[key] for key in set(dict_fast_0) & set(dict_fast_1)}
dict_fast_1 = {key: dict_fast_1[key] for key in set(dict_fast_0) & set(dict_fast_1)}
# check that all additional keys are None, except for `default_to_square` and `data_format` which are only set in fast processors
self.assertTrue(
all(value is None for key, value in difference.items() if key not in ["default_to_square", "data_format"])
)
# check that the remaining keys are the same
self.assertEqual(dict_fast_0, dict_fast_1)
def test_save_load_fast_slow_auto(self):
"Test that we can load a fast image processor from a slow one and vice-versa using AutoImageProcessor."
if self.image_processing_class is None or self.fast_image_processing_class is None:
self.skipTest("Skipping slow/fast save/load test as one of the image processors is not defined")
image_processor_dict = self.image_processor_tester.prepare_image_processor_dict()
image_processor_slow_0 = self.image_processing_class(**image_processor_dict)
# Load fast image processor from slow one
with tempfile.TemporaryDirectory() as tmpdirname:
image_processor_slow_0.save_pretrained(tmpdirname)
image_processor_fast_0 = AutoImageProcessor.from_pretrained(tmpdirname, use_fast=True)
image_processor_fast_1 = self.fast_image_processing_class(**image_processor_dict)
# Load slow image processor from fast one
with tempfile.TemporaryDirectory() as tmpdirname:
image_processor_fast_1.save_pretrained(tmpdirname)
image_processor_slow_1 = AutoImageProcessor.from_pretrained(tmpdirname, use_fast=False)
dict_slow_0 = image_processor_slow_0.to_dict()
dict_slow_1 = image_processor_slow_1.to_dict()
difference = {
key: dict_slow_0.get(key) if key in dict_slow_0 else dict_slow_1.get(key)
for key in set(dict_slow_0) ^ set(dict_slow_1)
}
dict_slow_0 = {key: dict_slow_0[key] for key in set(dict_slow_0) & set(dict_slow_1)}
dict_slow_1 = {key: dict_slow_1[key] for key in set(dict_slow_0) & set(dict_slow_1)}
# check that all additional keys are None, except for `default_to_square` and `data_format` which are only set in fast processors
self.assertTrue(
all(value is None for key, value in difference.items() if key not in ["default_to_square", "data_format"])
)
# check that the remaining keys are the same
self.assertEqual(dict_slow_0, dict_slow_1)
dict_fast_0 = image_processor_fast_0.to_dict()
dict_fast_1 = image_processor_fast_1.to_dict()
difference = {
key: dict_fast_0.get(key) if key in dict_fast_0 else dict_fast_1.get(key)
for key in set(dict_fast_0) ^ set(dict_fast_1)
}
dict_fast_0 = {key: dict_fast_0[key] for key in set(dict_fast_0) & set(dict_fast_1)}
dict_fast_1 = {key: dict_fast_1[key] for key in set(dict_fast_0) & set(dict_fast_1)}
# check that all additional keys are None, except for `default_to_square` and `data_format` which are only set in fast processors
self.assertTrue(
all(value is None for key, value in difference.items() if key not in ["default_to_square", "data_format"])
)
# check that the remaining keys are the same
self.assertEqual(dict_fast_0, dict_fast_1)
def test_init_without_params(self):
for image_processing_class in self.image_processor_list:
image_processor = image_processing_class()
self.assertIsNotNone(image_processor)
@require_torch
@require_vision
def test_cast_dtype_device(self):
for image_processing_class in self.image_processor_list:
if self.test_cast_dtype is not None:
# Initialize image_processor
image_processor = image_processing_class(**self.image_processor_dict)
# create random PyTorch tensors
image_inputs = self.image_processor_tester.prepare_image_inputs(equal_resolution=False, torchify=True)
encoding = image_processor(image_inputs, return_tensors="pt")
# for layoutLM compatibility
self.assertEqual(encoding.pixel_values.device, torch.device("cpu"))
self.assertEqual(encoding.pixel_values.dtype, torch.float32)
encoding = image_processor(image_inputs, return_tensors="pt").to(torch.float16)
self.assertEqual(encoding.pixel_values.device, torch.device("cpu"))
self.assertEqual(encoding.pixel_values.dtype, torch.float16)
encoding = image_processor(image_inputs, return_tensors="pt").to("cpu", torch.bfloat16)
self.assertEqual(encoding.pixel_values.device, torch.device("cpu"))
self.assertEqual(encoding.pixel_values.dtype, torch.bfloat16)
with self.assertRaises(TypeError):
_ = image_processor(image_inputs, return_tensors="pt").to(torch.bfloat16, "cpu")
# Try with text + image feature
encoding = image_processor(image_inputs, return_tensors="pt")
encoding.update({"input_ids": torch.LongTensor([[1, 2, 3], [4, 5, 6]])})
encoding = encoding.to(torch.float16)
self.assertEqual(encoding.pixel_values.device, torch.device("cpu"))
self.assertEqual(encoding.pixel_values.dtype, torch.float16)
self.assertEqual(encoding.input_ids.dtype, torch.long)
def test_call_pil(self):
for image_processing_class in self.image_processor_list:
# Initialize image_processing
image_processing = image_processing_class(**self.image_processor_dict)
# create random PIL images
image_inputs = self.image_processor_tester.prepare_image_inputs(equal_resolution=False)
for image in image_inputs:
self.assertIsInstance(image, Image.Image)
# Test not batched input
encoded_images = image_processing(image_inputs[0], return_tensors="pt").pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape([image_inputs[0]])
self.assertEqual(tuple(encoded_images.shape), (1, *expected_output_image_shape))
# Test batched
encoded_images = image_processing(image_inputs, return_tensors="pt").pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape(image_inputs)
self.assertEqual(
tuple(encoded_images.shape), (self.image_processor_tester.batch_size, *expected_output_image_shape)
)
def test_call_numpy(self):
for image_processing_class in self.image_processor_list:
# Initialize image_processing
image_processing = image_processing_class(**self.image_processor_dict)
# create random numpy tensors
image_inputs = self.image_processor_tester.prepare_image_inputs(equal_resolution=False, numpify=True)
for image in image_inputs:
self.assertIsInstance(image, np.ndarray)
# Test not batched input
encoded_images = image_processing(image_inputs[0], return_tensors="pt").pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape([image_inputs[0]])
self.assertEqual(tuple(encoded_images.shape), (1, *expected_output_image_shape))
# Test batched
encoded_images = image_processing(image_inputs, return_tensors="pt").pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape(image_inputs)
self.assertEqual(
tuple(encoded_images.shape), (self.image_processor_tester.batch_size, *expected_output_image_shape)
)
def test_call_pytorch(self):
for image_processing_class in self.image_processor_list:
# Initialize image_processing
image_processing = image_processing_class(**self.image_processor_dict)
# create random PyTorch tensors
image_inputs = self.image_processor_tester.prepare_image_inputs(equal_resolution=False, torchify=True)
for image in image_inputs:
self.assertIsInstance(image, torch.Tensor)
# Test not batched input
encoded_images = image_processing(image_inputs[0], return_tensors="pt").pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape([image_inputs[0]])
self.assertEqual(tuple(encoded_images.shape), (1, *expected_output_image_shape))
# Test batched
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape(image_inputs)
encoded_images = image_processing(image_inputs, return_tensors="pt").pixel_values
self.assertEqual(
tuple(encoded_images.shape),
(self.image_processor_tester.batch_size, *expected_output_image_shape),
)
def test_call_numpy_4_channels(self):
for image_processing_class in self.image_processor_list:
# Test that can process images which have an arbitrary number of channels
# Initialize image_processing
image_processor = image_processing_class(**self.image_processor_dict)
# create random numpy tensors
self.image_processor_tester.num_channels = 4
image_inputs = self.image_processor_tester.prepare_image_inputs(equal_resolution=False, numpify=True)
# Test not batched input
encoded_images = image_processor(
image_inputs[0],
return_tensors="pt",
input_data_format="channels_last",
image_mean=0,
image_std=1,
).pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape([image_inputs[0]])
self.assertEqual(tuple(encoded_images.shape), (1, *expected_output_image_shape))
# Test batched
encoded_images = image_processor(
image_inputs,
return_tensors="pt",
input_data_format="channels_last",
image_mean=0,
image_std=1,
).pixel_values
expected_output_image_shape = self.image_processor_tester.expected_output_image_shape(image_inputs)
self.assertEqual(
tuple(encoded_images.shape), (self.image_processor_tester.batch_size, *expected_output_image_shape)
)
def test_image_processor_preprocess_arguments(self):
is_tested = False
for image_processing_class in self.image_processor_list:
image_processor = image_processing_class(**self.image_processor_dict)
# validation done by _valid_processor_keys attribute
if hasattr(image_processor, "_valid_processor_keys") and hasattr(image_processor, "preprocess"):
preprocess_parameter_names = inspect.getfullargspec(image_processor.preprocess).args
preprocess_parameter_names.remove("self")
preprocess_parameter_names.sort()
valid_processor_keys = image_processor._valid_processor_keys
valid_processor_keys.sort()
self.assertEqual(preprocess_parameter_names, valid_processor_keys)
is_tested = True
# validation done by @filter_out_non_signature_kwargs decorator
if hasattr(image_processor.preprocess, "_filter_out_non_signature_kwargs"):
if hasattr(self.image_processor_tester, "prepare_image_inputs"):
inputs = self.image_processor_tester.prepare_image_inputs()
elif hasattr(self.image_processor_tester, "prepare_video_inputs"):
inputs = self.image_processor_tester.prepare_video_inputs()
else:
self.skipTest(reason="No valid input preparation method found")
with warnings.catch_warnings(record=True) as raised_warnings:
warnings.simplefilter("always")
image_processor(inputs, extra_argument=True)
messages = " ".join([str(w.message) for w in raised_warnings])
self.assertGreaterEqual(len(raised_warnings), 1)
self.assertIn("extra_argument", messages)
is_tested = True
if not is_tested:
self.skipTest(reason="No validation found for `preprocess` method")
@slow
@require_torch_accelerator
@require_vision
def test_can_compile_fast_image_processor(self):
if self.fast_image_processing_class is None:
self.skipTest("Skipping compilation test as fast image processor is not defined")
if version.parse(torch.__version__) < version.parse("2.3"):
self.skipTest(reason="This test requires torch >= 2.3 to run.")
torch.compiler.reset()
input_image = torch.randint(0, 255, (3, 224, 224), dtype=torch.uint8)
image_processor = self.fast_image_processing_class(**self.image_processor_dict)
output_eager = image_processor(input_image, device=torch_device, return_tensors="pt")
image_processor = torch.compile(image_processor, mode="reduce-overhead")
output_compiled = image_processor(input_image, device=torch_device, return_tensors="pt")
torch.testing.assert_close(output_eager.pixel_values, output_compiled.pixel_values, rtol=1e-4, atol=1e-4)
class AnnotationFormatTestMixin:
# this mixin adds a test to assert that usages of the
# to-be-deprecated `AnnotionFormat` continue to be
# supported for the time being
def test_processor_can_use_legacy_annotation_format(self):
image_processor_dict = self.image_processor_tester.prepare_image_processor_dict()
fixtures_path = pathlib.Path(__file__).parent / "fixtures" / "tests_samples" / "COCO"
with open(fixtures_path / "coco_annotations.txt") as f:
detection_target = json.loads(f.read())
detection_annotations = {"image_id": 39769, "annotations": detection_target}
detection_params = {
"images": Image.open(fixtures_path / "000000039769.png"),
"annotations": detection_annotations,
"return_tensors": "pt",
}
with open(fixtures_path / "coco_panoptic_annotations.txt") as f:
panoptic_target = json.loads(f.read())
panoptic_annotations = {"file_name": "000000039769.png", "image_id": 39769, "segments_info": panoptic_target}
masks_path = pathlib.Path(fixtures_path / "coco_panoptic")
panoptic_params = {
"images": Image.open(fixtures_path / "000000039769.png"),
"annotations": panoptic_annotations,
"return_tensors": "pt",
"masks_path": masks_path,
}
test_cases = [
("coco_detection", detection_params),
("coco_panoptic", panoptic_params),
(AnnotionFormat.COCO_DETECTION, detection_params),
(AnnotionFormat.COCO_PANOPTIC, panoptic_params),
(AnnotationFormat.COCO_DETECTION, detection_params),
(AnnotationFormat.COCO_PANOPTIC, panoptic_params),
]
def _compare(a, b) -> None:
if isinstance(a, (dict, BatchFeature)):
self.assertEqual(a.keys(), b.keys())
for k, v in a.items():
_compare(v, b[k])
elif isinstance(a, list):
self.assertEqual(len(a), len(b))
for idx in range(len(a)):
_compare(a[idx], b[idx])
elif isinstance(a, torch.Tensor):
torch.testing.assert_close(a, b, rtol=1e-3, atol=1e-3)
elif isinstance(a, str):
self.assertEqual(a, b)
for annotation_format, params in test_cases:
with self.subTest(annotation_format):
image_processor_params = {**image_processor_dict, **{"format": annotation_format}}
image_processor_first = self.image_processing_class(**image_processor_params)
with tempfile.TemporaryDirectory() as tmpdirname:
image_processor_first.save_pretrained(tmpdirname)
image_processor_second = self.image_processing_class.from_pretrained(tmpdirname)
# check the 'format' key exists and that the dicts of the
# first and second processors are equal
self.assertIn("format", image_processor_first.to_dict().keys())
self.assertEqual(image_processor_second.to_dict(), image_processor_first.to_dict())
# perform encoding using both processors and compare
# the resulting BatchFeatures
first_encoding = image_processor_first(**params)
second_encoding = image_processor_second(**params)
_compare(first_encoding, second_encoding)
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