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test_transforms_v2_functional.py
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1149 lines (924 loc) · 43.6 KB
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import inspect
import math
import os
import re
from typing import get_type_hints
import numpy as np
import PIL.Image
import pytest
import torch
from common_utils import (
assert_close,
cache,
cpu_and_cuda,
DEFAULT_SQUARE_SPATIAL_SIZE,
make_bounding_boxes,
needs_cuda,
parametrized_error_message,
set_rng_seed,
)
from torch.utils._pytree import tree_map
from torchvision import datapoints
from torchvision.transforms.functional import _get_perspective_coeffs
from torchvision.transforms.v2 import functional as F
from torchvision.transforms.v2.functional._geometry import _center_crop_compute_padding
from torchvision.transforms.v2.functional._meta import clamp_bounding_box, convert_format_bounding_box
from torchvision.transforms.v2.utils import is_simple_tensor
from transforms_v2_dispatcher_infos import DISPATCHER_INFOS
from transforms_v2_kernel_infos import KERNEL_INFOS
KERNEL_INFOS_MAP = {info.kernel: info for info in KERNEL_INFOS}
DISPATCHER_INFOS_MAP = {info.dispatcher: info for info in DISPATCHER_INFOS}
@cache
def script(fn):
try:
return torch.jit.script(fn)
except Exception as error:
raise AssertionError(f"Trying to `torch.jit.script` '{fn.__name__}' raised the error above.") from error
# Scripting a function often triggers a warning like
# `UserWarning: operator() profile_node %$INT1 : int[] = prim::profile_ivalue($INT2) does not have profile information`
# with varying `INT1` and `INT2`. Since these are uninteresting for us and only clutter the test summary, we ignore
# them.
ignore_jit_warning_no_profile = pytest.mark.filterwarnings(
f"ignore:{re.escape('operator() profile_node %')}:UserWarning"
)
def make_info_args_kwargs_params(info, *, args_kwargs_fn, test_id=None):
args_kwargs = list(args_kwargs_fn(info))
if not args_kwargs:
raise pytest.UsageError(
f"Couldn't collect a single `ArgsKwargs` for `{info.id}`{f' in {test_id}' if test_id else ''}"
)
idx_field_len = len(str(len(args_kwargs)))
return [
pytest.param(
info,
args_kwargs_,
marks=info.get_marks(test_id, args_kwargs_) if test_id else [],
id=f"{info.id}-{idx:0{idx_field_len}}",
)
for idx, args_kwargs_ in enumerate(args_kwargs)
]
def make_info_args_kwargs_parametrization(infos, *, args_kwargs_fn):
def decorator(test_fn):
parts = test_fn.__qualname__.split(".")
if len(parts) == 1:
test_class_name = None
test_function_name = parts[0]
elif len(parts) == 2:
test_class_name, test_function_name = parts
else:
raise pytest.UsageError("Unable to parse the test class name and test function name from test function")
test_id = (test_class_name, test_function_name)
argnames = ("info", "args_kwargs")
argvalues = []
for info in infos:
argvalues.extend(make_info_args_kwargs_params(info, args_kwargs_fn=args_kwargs_fn, test_id=test_id))
return pytest.mark.parametrize(argnames, argvalues)(test_fn)
return decorator
@pytest.fixture(autouse=True)
def fix_rng_seed():
set_rng_seed(0)
yield
@pytest.fixture()
def test_id(request):
test_class_name = request.cls.__name__ if request.cls is not None else None
test_function_name = request.node.originalname
return test_class_name, test_function_name
class TestKernels:
sample_inputs = make_info_args_kwargs_parametrization(
KERNEL_INFOS,
args_kwargs_fn=lambda kernel_info: kernel_info.sample_inputs_fn(),
)
reference_inputs = make_info_args_kwargs_parametrization(
[info for info in KERNEL_INFOS if info.reference_fn is not None],
args_kwargs_fn=lambda info: info.reference_inputs_fn(),
)
@make_info_args_kwargs_parametrization(
[info for info in KERNEL_INFOS if info.logs_usage],
args_kwargs_fn=lambda info: info.sample_inputs_fn(),
)
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_logging(self, spy_on, info, args_kwargs, device):
spy = spy_on(torch._C._log_api_usage_once)
(input, *other_args), kwargs = args_kwargs.load(device)
info.kernel(input.as_subclass(torch.Tensor), *other_args, **kwargs)
spy.assert_any_call(f"{info.kernel.__module__}.{info.id}")
@ignore_jit_warning_no_profile
@sample_inputs
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_scripted_vs_eager(self, test_id, info, args_kwargs, device):
kernel_eager = info.kernel
kernel_scripted = script(kernel_eager)
(input, *other_args), kwargs = args_kwargs.load(device)
input = input.as_subclass(torch.Tensor)
actual = kernel_scripted(input, *other_args, **kwargs)
expected = kernel_eager(input, *other_args, **kwargs)
assert_close(
actual,
expected,
**info.get_closeness_kwargs(test_id, dtype=input.dtype, device=input.device),
msg=parametrized_error_message(input, other_args, **kwargs),
)
def _unbatch(self, batch, *, data_dims):
if isinstance(batch, torch.Tensor):
batched_tensor = batch
metadata = ()
else:
batched_tensor, *metadata = batch
if batched_tensor.ndim == data_dims:
return batch
return [
self._unbatch(unbatched, data_dims=data_dims)
for unbatched in (
batched_tensor.unbind(0) if not metadata else [(t, *metadata) for t in batched_tensor.unbind(0)]
)
]
@sample_inputs
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_batched_vs_single(self, test_id, info, args_kwargs, device):
(batched_input, *other_args), kwargs = args_kwargs.load(device)
datapoint_type = datapoints.Image if is_simple_tensor(batched_input) else type(batched_input)
# This dictionary contains the number of rightmost dimensions that contain the actual data.
# Everything to the left is considered a batch dimension.
data_dims = {
datapoints.Image: 3,
datapoints.BoundingBox: 1,
# `Mask`'s are special in the sense that the data dimensions depend on the type of mask. For detection masks
# it is 3 `(*, N, H, W)`, but for segmentation masks it is 2 `(*, H, W)`. Since both a grouped under one
# type all kernels should also work without differentiating between the two. Thus, we go with 2 here as
# common ground.
datapoints.Mask: 2,
datapoints.Video: 4,
}.get(datapoint_type)
if data_dims is None:
raise pytest.UsageError(
f"The number of data dimensions cannot be determined for input of type {datapoint_type.__name__}."
) from None
elif batched_input.ndim <= data_dims:
pytest.skip("Input is not batched.")
elif not all(batched_input.shape[:-data_dims]):
pytest.skip("Input has a degenerate batch shape.")
batched_input = batched_input.as_subclass(torch.Tensor)
batched_output = info.kernel(batched_input, *other_args, **kwargs)
actual = self._unbatch(batched_output, data_dims=data_dims)
single_inputs = self._unbatch(batched_input, data_dims=data_dims)
expected = tree_map(lambda single_input: info.kernel(single_input, *other_args, **kwargs), single_inputs)
assert_close(
actual,
expected,
**info.get_closeness_kwargs(test_id, dtype=batched_input.dtype, device=batched_input.device),
msg=parametrized_error_message(batched_input, *other_args, **kwargs),
)
@sample_inputs
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_no_inplace(self, info, args_kwargs, device):
(input, *other_args), kwargs = args_kwargs.load(device)
input = input.as_subclass(torch.Tensor)
if input.numel() == 0:
pytest.skip("The input has a degenerate shape.")
input_version = input._version
info.kernel(input, *other_args, **kwargs)
assert input._version == input_version
@sample_inputs
@needs_cuda
def test_cuda_vs_cpu(self, test_id, info, args_kwargs):
(input_cpu, *other_args), kwargs = args_kwargs.load("cpu")
input_cpu = input_cpu.as_subclass(torch.Tensor)
input_cuda = input_cpu.to("cuda")
output_cpu = info.kernel(input_cpu, *other_args, **kwargs)
output_cuda = info.kernel(input_cuda, *other_args, **kwargs)
assert_close(
output_cuda,
output_cpu,
check_device=False,
**info.get_closeness_kwargs(test_id, dtype=input_cuda.dtype, device=input_cuda.device),
msg=parametrized_error_message(input_cpu, *other_args, **kwargs),
)
@sample_inputs
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_dtype_and_device_consistency(self, info, args_kwargs, device):
(input, *other_args), kwargs = args_kwargs.load(device)
input = input.as_subclass(torch.Tensor)
output = info.kernel(input, *other_args, **kwargs)
# Most kernels just return a tensor, but some also return some additional metadata
if not isinstance(output, torch.Tensor):
output, *_ = output
assert output.dtype == input.dtype
assert output.device == input.device
@reference_inputs
def test_against_reference(self, test_id, info, args_kwargs):
(input, *other_args), kwargs = args_kwargs.load("cpu")
actual = info.kernel(input.as_subclass(torch.Tensor), *other_args, **kwargs)
# We intnetionally don't unwrap the input of the reference function in order for it to have access to all
# metadata regardless of whether the kernel takes it explicitly or not
expected = info.reference_fn(input, *other_args, **kwargs)
assert_close(
actual,
expected,
**info.get_closeness_kwargs(test_id, dtype=input.dtype, device=input.device),
msg=parametrized_error_message(input, *other_args, **kwargs),
)
@make_info_args_kwargs_parametrization(
[info for info in KERNEL_INFOS if info.float32_vs_uint8],
args_kwargs_fn=lambda info: info.reference_inputs_fn(),
)
def test_float32_vs_uint8(self, test_id, info, args_kwargs):
(input, *other_args), kwargs = args_kwargs.load("cpu")
input = input.as_subclass(torch.Tensor)
if input.dtype != torch.uint8:
pytest.skip(f"Input dtype is {input.dtype}.")
adapted_other_args, adapted_kwargs = info.float32_vs_uint8(other_args, kwargs)
actual = info.kernel(
F.to_dtype_image_tensor(input, dtype=torch.float32, scale=True),
*adapted_other_args,
**adapted_kwargs,
)
expected = F.to_dtype_image_tensor(info.kernel(input, *other_args, **kwargs), dtype=torch.float32, scale=True)
assert_close(
actual,
expected,
**info.get_closeness_kwargs(test_id, dtype=torch.float32, device=input.device),
msg=parametrized_error_message(input, *other_args, **kwargs),
)
@pytest.fixture
def spy_on(mocker):
def make_spy(fn, *, module=None, name=None):
# TODO: we can probably get rid of the non-default modules and names if we eliminate aliasing
module = module or fn.__module__
name = name or fn.__name__
spy = mocker.patch(f"{module}.{name}", wraps=fn)
return spy
return make_spy
class TestDispatchers:
image_sample_inputs = make_info_args_kwargs_parametrization(
[info for info in DISPATCHER_INFOS if datapoints.Image in info.kernels],
args_kwargs_fn=lambda info: info.sample_inputs(datapoints.Image),
)
@make_info_args_kwargs_parametrization(
DISPATCHER_INFOS,
args_kwargs_fn=lambda info: info.sample_inputs(),
)
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_logging(self, spy_on, info, args_kwargs, device):
spy = spy_on(torch._C._log_api_usage_once)
args, kwargs = args_kwargs.load(device)
info.dispatcher(*args, **kwargs)
spy.assert_any_call(f"{info.dispatcher.__module__}.{info.id}")
@ignore_jit_warning_no_profile
@image_sample_inputs
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_scripted_smoke(self, info, args_kwargs, device):
dispatcher = script(info.dispatcher)
(image_datapoint, *other_args), kwargs = args_kwargs.load(device)
image_simple_tensor = torch.Tensor(image_datapoint)
dispatcher(image_simple_tensor, *other_args, **kwargs)
# TODO: We need this until the dispatchers below also have `DispatcherInfo`'s. If they do, `test_scripted_smoke`
# replaces this test for them.
@ignore_jit_warning_no_profile
@pytest.mark.parametrize(
"dispatcher",
[
F.get_dimensions,
F.get_image_num_channels,
F.get_image_size,
F.get_num_channels,
F.get_num_frames,
F.get_spatial_size,
F.rgb_to_grayscale,
F.uniform_temporal_subsample,
],
ids=lambda dispatcher: dispatcher.__name__,
)
def test_scriptable(self, dispatcher):
script(dispatcher)
@image_sample_inputs
def test_dispatch_simple_tensor(self, info, args_kwargs, spy_on):
(image_datapoint, *other_args), kwargs = args_kwargs.load()
image_simple_tensor = torch.Tensor(image_datapoint)
kernel_info = info.kernel_infos[datapoints.Image]
spy = spy_on(kernel_info.kernel, module=info.dispatcher.__module__, name=kernel_info.id)
info.dispatcher(image_simple_tensor, *other_args, **kwargs)
spy.assert_called_once()
@image_sample_inputs
def test_simple_tensor_output_type(self, info, args_kwargs):
(image_datapoint, *other_args), kwargs = args_kwargs.load()
image_simple_tensor = image_datapoint.as_subclass(torch.Tensor)
output = info.dispatcher(image_simple_tensor, *other_args, **kwargs)
# We cannot use `isinstance` here since all datapoints are instances of `torch.Tensor` as well
assert type(output) is torch.Tensor
@make_info_args_kwargs_parametrization(
[info for info in DISPATCHER_INFOS if info.pil_kernel_info is not None],
args_kwargs_fn=lambda info: info.sample_inputs(datapoints.Image),
)
def test_dispatch_pil(self, info, args_kwargs, spy_on):
(image_datapoint, *other_args), kwargs = args_kwargs.load()
if image_datapoint.ndim > 3:
pytest.skip("Input is batched")
image_pil = F.to_image_pil(image_datapoint)
pil_kernel_info = info.pil_kernel_info
spy = spy_on(pil_kernel_info.kernel, module=info.dispatcher.__module__, name=pil_kernel_info.id)
info.dispatcher(image_pil, *other_args, **kwargs)
spy.assert_called_once()
@make_info_args_kwargs_parametrization(
[info for info in DISPATCHER_INFOS if info.pil_kernel_info is not None],
args_kwargs_fn=lambda info: info.sample_inputs(datapoints.Image),
)
def test_pil_output_type(self, info, args_kwargs):
(image_datapoint, *other_args), kwargs = args_kwargs.load()
if image_datapoint.ndim > 3:
pytest.skip("Input is batched")
image_pil = F.to_image_pil(image_datapoint)
output = info.dispatcher(image_pil, *other_args, **kwargs)
assert isinstance(output, PIL.Image.Image)
@make_info_args_kwargs_parametrization(
DISPATCHER_INFOS,
args_kwargs_fn=lambda info: info.sample_inputs(),
)
def test_dispatch_datapoint(self, info, args_kwargs, spy_on):
(datapoint, *other_args), kwargs = args_kwargs.load()
method_name = info.id
method = getattr(datapoint, method_name)
datapoint_type = type(datapoint)
spy = spy_on(method, module=datapoint_type.__module__, name=f"{datapoint_type.__name__}.{method_name}")
info.dispatcher(datapoint, *other_args, **kwargs)
spy.assert_called_once()
@make_info_args_kwargs_parametrization(
DISPATCHER_INFOS,
args_kwargs_fn=lambda info: info.sample_inputs(),
)
def test_datapoint_output_type(self, info, args_kwargs):
(datapoint, *other_args), kwargs = args_kwargs.load()
output = info.dispatcher(datapoint, *other_args, **kwargs)
assert isinstance(output, type(datapoint))
@pytest.mark.parametrize(
("dispatcher_info", "datapoint_type", "kernel_info"),
[
pytest.param(
dispatcher_info, datapoint_type, kernel_info, id=f"{dispatcher_info.id}-{datapoint_type.__name__}"
)
for dispatcher_info in DISPATCHER_INFOS
for datapoint_type, kernel_info in dispatcher_info.kernel_infos.items()
],
)
def test_dispatcher_kernel_signatures_consistency(self, dispatcher_info, datapoint_type, kernel_info):
dispatcher_signature = inspect.signature(dispatcher_info.dispatcher)
dispatcher_params = list(dispatcher_signature.parameters.values())[1:]
kernel_signature = inspect.signature(kernel_info.kernel)
kernel_params = list(kernel_signature.parameters.values())[1:]
# We filter out metadata that is implicitly passed to the dispatcher through the input datapoint, but has to be
# explicit passed to the kernel.
datapoint_type_metadata = datapoint_type.__annotations__.keys()
kernel_params = [param for param in kernel_params if param.name not in datapoint_type_metadata]
dispatcher_params = iter(dispatcher_params)
for dispatcher_param, kernel_param in zip(dispatcher_params, kernel_params):
try:
# In general, the dispatcher parameters are a superset of the kernel parameters. Thus, we filter out
# dispatcher parameters that have no kernel equivalent while keeping the order intact.
while dispatcher_param.name != kernel_param.name:
dispatcher_param = next(dispatcher_params)
except StopIteration:
raise AssertionError(
f"Parameter `{kernel_param.name}` of kernel `{kernel_info.id}` "
f"has no corresponding parameter on the dispatcher `{dispatcher_info.id}`."
) from None
assert dispatcher_param == kernel_param
@pytest.mark.parametrize("info", DISPATCHER_INFOS, ids=lambda info: info.id)
def test_dispatcher_datapoint_signatures_consistency(self, info):
try:
datapoint_method = getattr(datapoints._datapoint.Datapoint, info.id)
except AttributeError:
pytest.skip("Dispatcher doesn't support arbitrary datapoint dispatch.")
dispatcher_signature = inspect.signature(info.dispatcher)
dispatcher_params = list(dispatcher_signature.parameters.values())[1:]
datapoint_signature = inspect.signature(datapoint_method)
datapoint_params = list(datapoint_signature.parameters.values())[1:]
# Because we use `from __future__ import annotations` inside the module where `datapoints._datapoint` is
# defined, the annotations are stored as strings. This makes them concrete again, so they can be compared to the
# natively concrete dispatcher annotations.
datapoint_annotations = get_type_hints(datapoint_method)
for param in datapoint_params:
param._annotation = datapoint_annotations[param.name]
assert dispatcher_params == datapoint_params
@pytest.mark.parametrize("info", DISPATCHER_INFOS, ids=lambda info: info.id)
def test_unkown_type(self, info):
unkown_input = object()
(_, *other_args), kwargs = next(iter(info.sample_inputs())).load("cpu")
with pytest.raises(TypeError, match=re.escape(str(type(unkown_input)))):
info.dispatcher(unkown_input, *other_args, **kwargs)
@make_info_args_kwargs_parametrization(
[
info
for info in DISPATCHER_INFOS
if datapoints.BoundingBox in info.kernels and info.dispatcher is not F.convert_format_bounding_box
],
args_kwargs_fn=lambda info: info.sample_inputs(datapoints.BoundingBox),
)
def test_bounding_box_format_consistency(self, info, args_kwargs):
(bounding_box, *other_args), kwargs = args_kwargs.load()
format = bounding_box.format
output = info.dispatcher(bounding_box, *other_args, **kwargs)
assert output.format == format
@pytest.mark.parametrize(
("alias", "target"),
[
pytest.param(alias, target, id=alias.__name__)
for alias, target in [
(F.hflip, F.horizontal_flip),
(F.vflip, F.vertical_flip),
(F.get_image_num_channels, F.get_num_channels),
(F.to_pil_image, F.to_image_pil),
(F.elastic_transform, F.elastic),
(F.to_grayscale, F.rgb_to_grayscale),
]
],
)
def test_alias(alias, target):
assert alias is target
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize("num_channels", [1, 3])
def test_normalize_image_tensor_stats(device, num_channels):
stats = pytest.importorskip("scipy.stats", reason="SciPy is not available")
def assert_samples_from_standard_normal(t):
p_value = stats.kstest(t.flatten(), cdf="norm", args=(0, 1)).pvalue
return p_value > 1e-4
image = torch.rand(num_channels, DEFAULT_SQUARE_SPATIAL_SIZE, DEFAULT_SQUARE_SPATIAL_SIZE)
mean = image.mean(dim=(1, 2)).tolist()
std = image.std(dim=(1, 2)).tolist()
assert_samples_from_standard_normal(F.normalize_image_tensor(image, mean, std))
class TestClampBoundingBox:
@pytest.mark.parametrize(
"metadata",
[
dict(),
dict(format=datapoints.BoundingBoxFormat.XYXY),
dict(spatial_size=(1, 1)),
],
)
def test_simple_tensor_insufficient_metadata(self, metadata):
simple_tensor = next(make_bounding_boxes()).as_subclass(torch.Tensor)
with pytest.raises(ValueError, match=re.escape("`format` and `spatial_size` has to be passed")):
F.clamp_bounding_box(simple_tensor, **metadata)
@pytest.mark.parametrize(
"metadata",
[
dict(format=datapoints.BoundingBoxFormat.XYXY),
dict(spatial_size=(1, 1)),
dict(format=datapoints.BoundingBoxFormat.XYXY, spatial_size=(1, 1)),
],
)
def test_datapoint_explicit_metadata(self, metadata):
datapoint = next(make_bounding_boxes())
with pytest.raises(ValueError, match=re.escape("`format` and `spatial_size` must not be passed")):
F.clamp_bounding_box(datapoint, **metadata)
class TestConvertFormatBoundingBox:
@pytest.mark.parametrize(
("inpt", "old_format"),
[
(next(make_bounding_boxes()), None),
(next(make_bounding_boxes()).as_subclass(torch.Tensor), datapoints.BoundingBoxFormat.XYXY),
],
)
def test_missing_new_format(self, inpt, old_format):
with pytest.raises(TypeError, match=re.escape("missing 1 required argument: 'new_format'")):
F.convert_format_bounding_box(inpt, old_format)
def test_simple_tensor_insufficient_metadata(self):
simple_tensor = next(make_bounding_boxes()).as_subclass(torch.Tensor)
with pytest.raises(ValueError, match=re.escape("`old_format` has to be passed")):
F.convert_format_bounding_box(simple_tensor, new_format=datapoints.BoundingBoxFormat.CXCYWH)
def test_datapoint_explicit_metadata(self):
datapoint = next(make_bounding_boxes())
with pytest.raises(ValueError, match=re.escape("`old_format` must not be passed")):
F.convert_format_bounding_box(
datapoint, old_format=datapoint.format, new_format=datapoints.BoundingBoxFormat.CXCYWH
)
# TODO: All correctness checks below this line should be ported to be references on a `KernelInfo` in
# `transforms_v2_kernel_infos.py`
def _compute_affine_matrix(angle_, translate_, scale_, shear_, center_):
rot = math.radians(angle_)
cx, cy = center_
tx, ty = translate_
sx, sy = [math.radians(sh_) for sh_ in shear_]
c_matrix = np.array([[1, 0, cx], [0, 1, cy], [0, 0, 1]])
t_matrix = np.array([[1, 0, tx], [0, 1, ty], [0, 0, 1]])
c_matrix_inv = np.linalg.inv(c_matrix)
rs_matrix = np.array(
[
[scale_ * math.cos(rot), -scale_ * math.sin(rot), 0],
[scale_ * math.sin(rot), scale_ * math.cos(rot), 0],
[0, 0, 1],
]
)
shear_x_matrix = np.array([[1, -math.tan(sx), 0], [0, 1, 0], [0, 0, 1]])
shear_y_matrix = np.array([[1, 0, 0], [-math.tan(sy), 1, 0], [0, 0, 1]])
rss_matrix = np.matmul(rs_matrix, np.matmul(shear_y_matrix, shear_x_matrix))
true_matrix = np.matmul(t_matrix, np.matmul(c_matrix, np.matmul(rss_matrix, c_matrix_inv)))
return true_matrix
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize(
"format",
[datapoints.BoundingBoxFormat.XYXY, datapoints.BoundingBoxFormat.XYWH, datapoints.BoundingBoxFormat.CXCYWH],
)
@pytest.mark.parametrize(
"top, left, height, width, expected_bboxes",
[
[8, 12, 30, 40, [(-2.0, 7.0, 13.0, 27.0), (38.0, -3.0, 58.0, 14.0), (33.0, 38.0, 44.0, 54.0)]],
[-8, 12, 70, 40, [(-2.0, 23.0, 13.0, 43.0), (38.0, 13.0, 58.0, 30.0), (33.0, 54.0, 44.0, 70.0)]],
],
)
def test_correctness_crop_bounding_box(device, format, top, left, height, width, expected_bboxes):
# Expected bboxes computed using Albumentations:
# import numpy as np
# from albumentations.augmentations.crops.functional import crop_bbox_by_coords, normalize_bbox, denormalize_bbox
# expected_bboxes = []
# for in_box in in_boxes:
# n_in_box = normalize_bbox(in_box, *size)
# n_out_box = crop_bbox_by_coords(
# n_in_box, (left, top, left + width, top + height), height, width, *size
# )
# out_box = denormalize_bbox(n_out_box, height, width)
# expected_bboxes.append(out_box)
format = datapoints.BoundingBoxFormat.XYXY
spatial_size = (64, 76)
in_boxes = [
[10.0, 15.0, 25.0, 35.0],
[50.0, 5.0, 70.0, 22.0],
[45.0, 46.0, 56.0, 62.0],
]
in_boxes = torch.tensor(in_boxes, device=device)
if format != datapoints.BoundingBoxFormat.XYXY:
in_boxes = convert_format_bounding_box(in_boxes, datapoints.BoundingBoxFormat.XYXY, format)
expected_bboxes = clamp_bounding_box(
datapoints.BoundingBox(expected_bboxes, format="XYXY", spatial_size=spatial_size)
).tolist()
output_boxes, output_spatial_size = F.crop_bounding_box(
in_boxes,
format,
top,
left,
spatial_size[0],
spatial_size[1],
)
if format != datapoints.BoundingBoxFormat.XYXY:
output_boxes = convert_format_bounding_box(output_boxes, format, datapoints.BoundingBoxFormat.XYXY)
torch.testing.assert_close(output_boxes.tolist(), expected_bboxes)
torch.testing.assert_close(output_spatial_size, spatial_size)
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_correctness_vertical_flip_segmentation_mask_on_fixed_input(device):
mask = torch.zeros((3, 3, 3), dtype=torch.long, device=device)
mask[:, 0, :] = 1
out_mask = F.vertical_flip_mask(mask)
expected_mask = torch.zeros((3, 3, 3), dtype=torch.long, device=device)
expected_mask[:, -1, :] = 1
torch.testing.assert_close(out_mask, expected_mask)
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize(
"format",
[datapoints.BoundingBoxFormat.XYXY, datapoints.BoundingBoxFormat.XYWH, datapoints.BoundingBoxFormat.CXCYWH],
)
@pytest.mark.parametrize(
"top, left, height, width, size",
[
[0, 0, 30, 30, (60, 60)],
[-5, 5, 35, 45, (32, 34)],
],
)
def test_correctness_resized_crop_bounding_box(device, format, top, left, height, width, size):
def _compute_expected_bbox(bbox, top_, left_, height_, width_, size_):
# bbox should be xyxy
bbox[0] = (bbox[0] - left_) * size_[1] / width_
bbox[1] = (bbox[1] - top_) * size_[0] / height_
bbox[2] = (bbox[2] - left_) * size_[1] / width_
bbox[3] = (bbox[3] - top_) * size_[0] / height_
return bbox
format = datapoints.BoundingBoxFormat.XYXY
spatial_size = (100, 100)
in_boxes = [
[10.0, 10.0, 20.0, 20.0],
[5.0, 10.0, 15.0, 20.0],
]
expected_bboxes = []
for in_box in in_boxes:
expected_bboxes.append(_compute_expected_bbox(list(in_box), top, left, height, width, size))
expected_bboxes = torch.tensor(expected_bboxes, device=device)
in_boxes = datapoints.BoundingBox(
in_boxes, format=datapoints.BoundingBoxFormat.XYXY, spatial_size=spatial_size, device=device
)
if format != datapoints.BoundingBoxFormat.XYXY:
in_boxes = convert_format_bounding_box(in_boxes, datapoints.BoundingBoxFormat.XYXY, format)
output_boxes, output_spatial_size = F.resized_crop_bounding_box(in_boxes, format, top, left, height, width, size)
if format != datapoints.BoundingBoxFormat.XYXY:
output_boxes = convert_format_bounding_box(output_boxes, format, datapoints.BoundingBoxFormat.XYXY)
torch.testing.assert_close(output_boxes, expected_bboxes)
torch.testing.assert_close(output_spatial_size, size)
def _parse_padding(padding):
if isinstance(padding, int):
return [padding] * 4
if isinstance(padding, list):
if len(padding) == 1:
return padding * 4
if len(padding) == 2:
return padding * 2 # [left, up, right, down]
return padding
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize("padding", [[1], [1, 1], [1, 1, 2, 2]])
def test_correctness_pad_bounding_box(device, padding):
def _compute_expected_bbox(bbox, padding_):
pad_left, pad_up, _, _ = _parse_padding(padding_)
dtype = bbox.dtype
format = bbox.format
bbox = (
bbox.clone()
if format == datapoints.BoundingBoxFormat.XYXY
else convert_format_bounding_box(bbox, new_format=datapoints.BoundingBoxFormat.XYXY)
)
bbox[0::2] += pad_left
bbox[1::2] += pad_up
bbox = convert_format_bounding_box(bbox, new_format=format)
if bbox.dtype != dtype:
# Temporary cast to original dtype
# e.g. float32 -> int
bbox = bbox.to(dtype)
return bbox
def _compute_expected_spatial_size(bbox, padding_):
pad_left, pad_up, pad_right, pad_down = _parse_padding(padding_)
height, width = bbox.spatial_size
return height + pad_up + pad_down, width + pad_left + pad_right
for bboxes in make_bounding_boxes():
bboxes = bboxes.to(device)
bboxes_format = bboxes.format
bboxes_spatial_size = bboxes.spatial_size
output_boxes, output_spatial_size = F.pad_bounding_box(
bboxes, format=bboxes_format, spatial_size=bboxes_spatial_size, padding=padding
)
torch.testing.assert_close(output_spatial_size, _compute_expected_spatial_size(bboxes, padding))
if bboxes.ndim < 2 or bboxes.shape[0] == 0:
bboxes = [bboxes]
expected_bboxes = []
for bbox in bboxes:
bbox = datapoints.BoundingBox(bbox, format=bboxes_format, spatial_size=bboxes_spatial_size)
expected_bboxes.append(_compute_expected_bbox(bbox, padding))
if len(expected_bboxes) > 1:
expected_bboxes = torch.stack(expected_bboxes)
else:
expected_bboxes = expected_bboxes[0]
torch.testing.assert_close(output_boxes, expected_bboxes, atol=1, rtol=0)
@pytest.mark.parametrize("device", cpu_and_cuda())
def test_correctness_pad_segmentation_mask_on_fixed_input(device):
mask = torch.ones((1, 3, 3), dtype=torch.long, device=device)
out_mask = F.pad_mask(mask, padding=[1, 1, 1, 1])
expected_mask = torch.zeros((1, 5, 5), dtype=torch.long, device=device)
expected_mask[:, 1:-1, 1:-1] = 1
torch.testing.assert_close(out_mask, expected_mask)
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize(
"startpoints, endpoints",
[
[[[0, 0], [33, 0], [33, 25], [0, 25]], [[3, 2], [32, 3], [30, 24], [2, 25]]],
[[[3, 2], [32, 3], [30, 24], [2, 25]], [[0, 0], [33, 0], [33, 25], [0, 25]]],
[[[3, 2], [32, 3], [30, 24], [2, 25]], [[5, 5], [30, 3], [33, 19], [4, 25]]],
],
)
def test_correctness_perspective_bounding_box(device, startpoints, endpoints):
def _compute_expected_bbox(bbox, pcoeffs_):
m1 = np.array(
[
[pcoeffs_[0], pcoeffs_[1], pcoeffs_[2]],
[pcoeffs_[3], pcoeffs_[4], pcoeffs_[5]],
]
)
m2 = np.array(
[
[pcoeffs_[6], pcoeffs_[7], 1.0],
[pcoeffs_[6], pcoeffs_[7], 1.0],
]
)
bbox_xyxy = convert_format_bounding_box(bbox, new_format=datapoints.BoundingBoxFormat.XYXY)
points = np.array(
[
[bbox_xyxy[0].item(), bbox_xyxy[1].item(), 1.0],
[bbox_xyxy[2].item(), bbox_xyxy[1].item(), 1.0],
[bbox_xyxy[0].item(), bbox_xyxy[3].item(), 1.0],
[bbox_xyxy[2].item(), bbox_xyxy[3].item(), 1.0],
]
)
numer = np.matmul(points, m1.T)
denom = np.matmul(points, m2.T)
transformed_points = numer / denom
out_bbox = np.array(
[
np.min(transformed_points[:, 0]),
np.min(transformed_points[:, 1]),
np.max(transformed_points[:, 0]),
np.max(transformed_points[:, 1]),
]
)
out_bbox = datapoints.BoundingBox(
out_bbox,
format=datapoints.BoundingBoxFormat.XYXY,
spatial_size=bbox.spatial_size,
dtype=bbox.dtype,
device=bbox.device,
)
return clamp_bounding_box(convert_format_bounding_box(out_bbox, new_format=bbox.format))
spatial_size = (32, 38)
pcoeffs = _get_perspective_coeffs(startpoints, endpoints)
inv_pcoeffs = _get_perspective_coeffs(endpoints, startpoints)
for bboxes in make_bounding_boxes(spatial_size=spatial_size, extra_dims=((4,),)):
bboxes = bboxes.to(device)
output_bboxes = F.perspective_bounding_box(
bboxes.as_subclass(torch.Tensor),
format=bboxes.format,
spatial_size=bboxes.spatial_size,
startpoints=None,
endpoints=None,
coefficients=pcoeffs,
)
if bboxes.ndim < 2:
bboxes = [bboxes]
expected_bboxes = []
for bbox in bboxes:
bbox = datapoints.BoundingBox(bbox, format=bboxes.format, spatial_size=bboxes.spatial_size)
expected_bboxes.append(_compute_expected_bbox(bbox, inv_pcoeffs))
if len(expected_bboxes) > 1:
expected_bboxes = torch.stack(expected_bboxes)
else:
expected_bboxes = expected_bboxes[0]
torch.testing.assert_close(output_bboxes, expected_bboxes, rtol=0, atol=1)
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize(
"output_size",
[(18, 18), [18, 15], (16, 19), [12], [46, 48]],
)
def test_correctness_center_crop_bounding_box(device, output_size):
def _compute_expected_bbox(bbox, output_size_):
format_ = bbox.format
spatial_size_ = bbox.spatial_size
dtype = bbox.dtype
bbox = convert_format_bounding_box(bbox.float(), format_, datapoints.BoundingBoxFormat.XYWH)
if len(output_size_) == 1:
output_size_.append(output_size_[-1])
cy = int(round((spatial_size_[0] - output_size_[0]) * 0.5))
cx = int(round((spatial_size_[1] - output_size_[1]) * 0.5))
out_bbox = [
bbox[0].item() - cx,
bbox[1].item() - cy,
bbox[2].item(),
bbox[3].item(),
]
out_bbox = torch.tensor(out_bbox)
out_bbox = convert_format_bounding_box(out_bbox, datapoints.BoundingBoxFormat.XYWH, format_)
out_bbox = clamp_bounding_box(out_bbox, format=format_, spatial_size=output_size)
return out_bbox.to(dtype=dtype, device=bbox.device)
for bboxes in make_bounding_boxes(extra_dims=((4,),)):
bboxes = bboxes.to(device)
bboxes_format = bboxes.format
bboxes_spatial_size = bboxes.spatial_size
output_boxes, output_spatial_size = F.center_crop_bounding_box(
bboxes, bboxes_format, bboxes_spatial_size, output_size
)
if bboxes.ndim < 2:
bboxes = [bboxes]
expected_bboxes = []
for bbox in bboxes:
bbox = datapoints.BoundingBox(bbox, format=bboxes_format, spatial_size=bboxes_spatial_size)
expected_bboxes.append(_compute_expected_bbox(bbox, output_size))
if len(expected_bboxes) > 1:
expected_bboxes = torch.stack(expected_bboxes)
else:
expected_bboxes = expected_bboxes[0]
torch.testing.assert_close(output_boxes, expected_bboxes, atol=1, rtol=0)
torch.testing.assert_close(output_spatial_size, output_size)
@pytest.mark.parametrize("device", cpu_and_cuda())
@pytest.mark.parametrize("output_size", [[4, 2], [4], [7, 6]])
def test_correctness_center_crop_mask(device, output_size):
def _compute_expected_mask(mask, output_size):
crop_height, crop_width = output_size if len(output_size) > 1 else [output_size[0], output_size[0]]
_, image_height, image_width = mask.shape
if crop_width > image_height or crop_height > image_width:
padding = _center_crop_compute_padding(crop_height, crop_width, image_height, image_width)
mask = F.pad_image_tensor(mask, padding, fill=0)
left = round((image_width - crop_width) * 0.5)
top = round((image_height - crop_height) * 0.5)
return mask[:, top : top + crop_height, left : left + crop_width]
mask = torch.randint(0, 2, size=(1, 6, 6), dtype=torch.long, device=device)
actual = F.center_crop_mask(mask, output_size)
expected = _compute_expected_mask(mask, output_size)