# LICENSE HEADER MANAGED BY add-license-header # # Copyright 2018 Kornia Team # # 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 warnings from typing import Optional, Tuple, Union import torch from kornia.core import ImageModule as Module from kornia.core import Tensor, ones, ones_like, zeros from kornia.filters import gaussian_blur2d from kornia.utils import _extract_device_dtype from kornia.utils.image import perform_keep_shape_image from kornia.utils.misc import eye_like from .imgwarp import get_affine_matrix2d, get_projective_transform, get_rotation_matrix2d, warp_affine, warp_affine3d __all__ = [ "Affine", "Rescale", "Resize", "Rotate", "Scale", "Shear", "Translate", "affine", "affine3d", "rescale", "resize", "resize_to_be_divisible", "rotate", "rotate3d", "scale", "shear", "translate", ] # utilities to compute affine matrices def _compute_tensor_center(tensor: Tensor) -> Tensor: """Compute the center of tensor plane for (H, W), (C, H, W) and (B, C, H, W).""" if not 2 <= len(tensor.shape) <= 4: raise AssertionError(f"Must be a 3D tensor as HW, CHW and BCHW. Got {tensor.shape}.") height, width = tensor.shape[-2:] center_x: float = float(width - 1) / 2 center_y: float = float(height - 1) / 2 center: Tensor = torch.tensor([center_x, center_y], device=tensor.device, dtype=tensor.dtype) return center def _compute_tensor_center3d(tensor: Tensor) -> Tensor: """Compute the center of tensor plane for (D, H, W), (C, D, H, W) and (B, C, D, H, W).""" if not 3 <= len(tensor.shape) <= 5: raise AssertionError(f"Must be a 3D tensor as DHW, CDHW and BCDHW. Got {tensor.shape}.") depth, height, width = tensor.shape[-3:] center_x: float = float(width - 1) / 2 center_y: float = float(height - 1) / 2 center_z: float = float(depth - 1) / 2 center: Tensor = torch.tensor([center_x, center_y, center_z], device=tensor.device, dtype=tensor.dtype) return center def _compute_rotation_matrix(angle: Tensor, center: Tensor) -> Tensor: """Compute a pure affine rotation matrix.""" scale: Tensor = ones_like(center) matrix: Tensor = get_rotation_matrix2d(center, angle, scale) return matrix def _compute_rotation_matrix3d(yaw: Tensor, pitch: Tensor, roll: Tensor, center: Tensor) -> Tensor: """Compute a pure affine rotation matrix.""" if len(yaw.shape) == len(pitch.shape) == len(roll.shape) == 0: yaw = yaw.unsqueeze(dim=0) pitch = pitch.unsqueeze(dim=0) roll = roll.unsqueeze(dim=0) if len(yaw.shape) == len(pitch.shape) == len(roll.shape) == 1: yaw = yaw.unsqueeze(dim=1) pitch = pitch.unsqueeze(dim=1) roll = roll.unsqueeze(dim=1) if not (len(yaw.shape) == len(pitch.shape) == len(roll.shape) == 2): raise AssertionError(f"Expected yaw, pitch, roll to be (B, 1). Got {yaw.shape}, {pitch.shape}, {roll.shape}.") angles: Tensor = torch.cat([yaw, pitch, roll], dim=1) scales: Tensor = ones_like(yaw) matrix: Tensor = get_projective_transform(center, angles, scales) return matrix def _compute_translation_matrix(translation: Tensor) -> Tensor: """Compute affine matrix for translation.""" matrix: Tensor = eye_like(3, translation, shared_memory=False) dx, dy = torch.chunk(translation, chunks=2, dim=-1) matrix[..., 0, 2:3] += dx matrix[..., 1, 2:3] += dy return matrix def _compute_scaling_matrix(scale: Tensor, center: Tensor) -> Tensor: """Compute affine matrix for scaling.""" angle: Tensor = zeros(scale.shape[:1], device=scale.device, dtype=scale.dtype) matrix: Tensor = get_rotation_matrix2d(center, angle, scale) return matrix def _compute_shear_matrix(shear: Tensor) -> Tensor: """Compute affine matrix for shearing.""" matrix: Tensor = eye_like(3, shear, shared_memory=False) shx, shy = torch.chunk(shear, chunks=2, dim=-1) matrix[..., 0, 1:2] += shx matrix[..., 1, 0:1] += shy return matrix # based on: # https://github.com/anibali/tvl/blob/master/src/tvl/transforms.py#L166 def affine( tensor: Tensor, matrix: Tensor, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> Tensor: r"""Apply an affine transformation to the image. .. image:: _static/img/warp_affine.png Args: tensor: The image tensor to be warped in shapes of :math:`(H, W)`, :math:`(D, H, W)` and :math:`(B, C, H, W)`. matrix: The 2x3 affine transformation matrix. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The warped image with the same shape as the input. Example: >>> img = torch.rand(1, 2, 3, 5) >>> aff = torch.eye(2, 3)[None] >>> out = affine(img, aff) >>> print(out.shape) torch.Size([1, 2, 3, 5]) """ # warping needs data in the shape of BCHW is_unbatched: bool = tensor.ndimension() == 3 if is_unbatched: tensor = torch.unsqueeze(tensor, dim=0) # we enforce broadcasting since by default grid_sample it does not # give support for that matrix = matrix.expand(tensor.shape[0], -1, -1) # warp the input tensor height: int = tensor.shape[-2] width: int = tensor.shape[-1] warped: Tensor = warp_affine(tensor, matrix, (height, width), mode, padding_mode, align_corners) # return in the original shape if is_unbatched: warped = torch.squeeze(warped, dim=0) return warped def affine3d( tensor: Tensor, matrix: Tensor, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = False, ) -> Tensor: r"""Apply an affine transformation to the 3d volume. Args: tensor: The image tensor to be warped in shapes of :math:`(D, H, W)`, :math:`(C, D, H, W)` and :math:`(B, C, D, H, W)`. matrix: The affine transformation matrix with shape :math:`(B, 3, 4)`. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values `` 'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The warped image. Example: >>> img = torch.rand(1, 2, 4, 3, 5) >>> aff = torch.eye(3, 4)[None] >>> out = affine3d(img, aff) >>> print(out.shape) torch.Size([1, 2, 4, 3, 5]) """ # warping needs data in the shape of BCDHW is_unbatched: bool = tensor.ndimension() == 4 if is_unbatched: tensor = torch.unsqueeze(tensor, dim=0) # we enforce broadcasting since by default grid_sample it does not # give support for that matrix = matrix.expand(tensor.shape[0], -1, -1) # warp the input tensor depth: int = tensor.shape[-3] height: int = tensor.shape[-2] width: int = tensor.shape[-1] warped: Tensor = warp_affine3d(tensor, matrix, (depth, height, width), mode, padding_mode, align_corners) # return in the original shape if is_unbatched: warped = torch.squeeze(warped, dim=0) return warped # based on: # https://github.com/anibali/tvl/blob/master/src/tvl/transforms.py#L185 def rotate( tensor: Tensor, angle: Tensor, center: Union[None, Tensor] = None, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> Tensor: r"""Rotate the tensor anti-clockwise about the center. .. image:: _static/img/rotate.png Args: tensor: The image tensor to be warped in shapes of :math:`(B, C, H, W)`. angle: The angle through which to rotate. The tensor must have a shape of (B), where B is batch size. center: The center through which to rotate. The tensor must have a shape of (B, 2), where B is batch size and last dimension contains cx and cy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The rotated tensor with shape as input. .. note:: See a working example `here `__. Example: >>> img = torch.rand(1, 3, 4, 4) >>> angle = torch.tensor([90.]) >>> out = rotate(img, angle) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ if not isinstance(tensor, Tensor): raise TypeError(f"Input tensor type is not a Tensor. Got {type(tensor)}") if not isinstance(angle, Tensor): raise TypeError(f"Input angle type is not a Tensor. Got {type(angle)}") if center is not None and not isinstance(center, Tensor): raise TypeError(f"Input center type is not a Tensor. Got {type(center)}") if len(tensor.shape) not in (3, 4): raise ValueError(f"Invalid tensor shape, we expect CxHxW or BxCxHxW. Got: {tensor.shape}") # compute the rotation center if center is None: center = _compute_tensor_center(tensor) # compute the rotation matrix # TODO: add broadcasting to get_rotation_matrix2d for center angle = angle.expand(tensor.shape[0]) center = center.expand(tensor.shape[0], -1) rotation_matrix: Tensor = _compute_rotation_matrix(angle, center) # warp using the affine transform return affine(tensor, rotation_matrix[..., :2, :3], mode, padding_mode, align_corners) def rotate3d( tensor: Tensor, yaw: Tensor, pitch: Tensor, roll: Tensor, center: Union[None, Tensor] = None, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = False, ) -> Tensor: r"""Rotate 3D the tensor anti-clockwise about the centre. Args: tensor: The image tensor to be warped in shapes of :math:`(B, C, D, H, W)`. yaw: The yaw angle through which to rotate. The tensor must have a shape of (B), where B is batch size. pitch: The pitch angle through which to rotate. The tensor must have a shape of (B), where B is batch size. roll: The roll angle through which to rotate. The tensor must have a shape of (B), where B is batch size. center: The center through which to rotate. The tensor must have a shape of (B, 2), where B is batch size and last dimension contains cx and cy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: Tensor: The rotated tensor with shape as input. """ if not isinstance(tensor, Tensor): raise TypeError(f"Input tensor type is not a Tensor. Got {type(tensor)}") if not isinstance(yaw, Tensor): raise TypeError(f"yaw is not a Tensor. Got {type(yaw)}") if not isinstance(pitch, Tensor): raise TypeError(f"pitch is not a Tensor. Got {type(pitch)}") if not isinstance(roll, Tensor): raise TypeError(f"roll is not a Tensor. Got {type(roll)}") if center is not None and not isinstance(center, Tensor): raise TypeError(f"Input center type is not a Tensor. Got {type(center)}") if len(tensor.shape) not in (4, 5): raise ValueError(f"Invalid tensor shape, we expect CxDxHxW or BxCxDxHxW. Got: {tensor.shape}") # compute the rotation center if center is None: center = _compute_tensor_center3d(tensor) # compute the rotation matrix # TODO: add broadcasting to get_rotation_matrix2d for center yaw = yaw.expand(tensor.shape[0]) pitch = pitch.expand(tensor.shape[0]) roll = roll.expand(tensor.shape[0]) center = center.expand(tensor.shape[0], -1) rotation_matrix: Tensor = _compute_rotation_matrix3d(yaw, pitch, roll, center) # warp using the affine transform return affine3d(tensor, rotation_matrix[..., :3, :4], mode, padding_mode, align_corners) def translate( tensor: Tensor, translation: Tensor, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> Tensor: r"""Translate the tensor in pixel units. .. image:: _static/img/translate.png Args: tensor: The image tensor to be warped in shapes of :math:`(B, C, H, W)`. translation: tensor containing the amount of pixels to translate in the x and y direction. The tensor must have a shape of (B, 2), where B is batch size, last dimension contains dx dy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The translated tensor with shape as input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> translation = torch.tensor([[1., 0.]]) >>> out = translate(img, translation) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ if not isinstance(tensor, Tensor): raise TypeError(f"Input tensor type is not a Tensor. Got {type(tensor)}") if not isinstance(translation, Tensor): raise TypeError(f"Input translation type is not a Tensor. Got {type(translation)}") if len(tensor.shape) not in (3, 4): raise ValueError(f"Invalid tensor shape, we expect CxHxW or BxCxHxW. Got: {tensor.shape}") # compute the translation matrix translation_matrix: Tensor = _compute_translation_matrix(translation) # warp using the affine transform return affine(tensor, translation_matrix[..., :2, :3], mode, padding_mode, align_corners) def scale( tensor: Tensor, scale_factor: Tensor, center: Union[None, Tensor] = None, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> Tensor: r"""Scale the tensor by a factor. .. image:: _static/img/scale.png Args: tensor: The image tensor to be warped in shapes of :math:`(B, C, H, W)`. scale_factor: The scale factor apply. The tensor must have a shape of (B) or (B, 2), where B is batch size. If (B), isotropic scaling will perform. If (B, 2), x-y-direction specific scaling will perform. center: The center through which to scale. The tensor must have a shape of (B, 2), where B is batch size and last dimension contains cx and cy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The scaled tensor with the same shape as the input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> scale_factor = torch.tensor([[2., 2.]]) >>> out = scale(img, scale_factor) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ if not isinstance(tensor, Tensor): raise TypeError(f"Input tensor type is not a Tensor. Got {type(tensor)}") if not isinstance(scale_factor, Tensor): raise TypeError(f"Input scale_factor type is not a Tensor. Got {type(scale_factor)}") if len(scale_factor.shape) == 1: # convert isotropic scaling to x-y direction scale_factor = scale_factor.repeat(1, 2) # compute the tensor center if center is None: center = _compute_tensor_center(tensor) # compute the rotation matrix # TODO: add broadcasting to get_rotation_matrix2d for center center = center.expand(tensor.shape[0], -1) scale_factor = scale_factor.expand(tensor.shape[0], 2) scaling_matrix: Tensor = _compute_scaling_matrix(scale_factor, center) # warp using the affine transform return affine(tensor, scaling_matrix[..., :2, :3], mode, padding_mode, align_corners) def shear( tensor: Tensor, shear: Tensor, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = False, ) -> Tensor: r"""Shear the tensor. .. image:: _static/img/shear.png Args: tensor: The image tensor to be skewed with shape of :math:`(B, C, H, W)`. shear: tensor containing the angle to shear in the x and y direction. The tensor must have a shape of (B, 2), where B is batch size, last dimension contains shx shy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The skewed tensor with shape same as the input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> shear_factor = torch.tensor([[0.5, 0.0]]) >>> out = shear(img, shear_factor) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ if not isinstance(tensor, Tensor): raise TypeError(f"Input tensor type is not a Tensor. Got {type(tensor)}") if not isinstance(shear, Tensor): raise TypeError(f"Input shear type is not a Tensor. Got {type(shear)}") if len(tensor.shape) not in (3, 4): raise ValueError(f"Invalid tensor shape, we expect CxHxW or BxCxHxW. Got: {tensor.shape}") # compute the translation matrix shear_matrix: Tensor = _compute_shear_matrix(shear) # warp using the affine transform return affine(tensor, shear_matrix[..., :2, :3], mode, padding_mode, align_corners) def _side_to_image_size(side_size: int, aspect_ratio: float, side: str = "short") -> Tuple[int, int]: if side not in ("short", "long", "vert", "horz"): raise ValueError(f"side can be one of 'short', 'long', 'vert', and 'horz'. Got '{side}'") if side == "vert": return side_size, int(side_size * aspect_ratio) if side == "horz": return int(side_size / aspect_ratio), side_size if (side == "short") ^ (aspect_ratio < 1.0): return side_size, int(side_size * aspect_ratio) return int(side_size / aspect_ratio), side_size @perform_keep_shape_image def resize( input: Tensor, size: Union[int, Tuple[int, int]], interpolation: str = "bilinear", align_corners: Optional[bool] = None, side: str = "short", antialias: bool = False, ) -> Tensor: r"""Resize the input Tensor to the given size. .. image:: _static/img/resize.png Args: input: The image tensor to be skewed with shape of :math:`(..., H, W)`. `...` means there can be any number of dimensions. size: Desired output size. If size is a sequence like (h, w), output size will be matched to this. If size is an int, smaller edge of the image will be matched to this number. i.e, if height > width, then image will be rescaled to (size * height / width, size) interpolation: algorithm used for upsampling: ``'nearest'`` | ``'linear'`` | ``'bilinear'`` | 'bicubic' | 'trilinear' | 'area'. align_corners: interpolation flag. side: Corresponding side if ``size`` is an integer. Can be one of ``'short'``, ``'long'``, ``'vert'``, or ``'horz'``. antialias: if True, then image will be filtered with Gaussian before downscaling. No effect for upscaling. Returns: The resized tensor with the shape as the specified size. Example: >>> img = torch.rand(1, 3, 4, 4) >>> out = resize(img, (6, 8)) >>> print(out.shape) torch.Size([1, 3, 6, 8]) """ if not isinstance(input, Tensor): raise TypeError(f"Input tensor type is not a Tensor. Got {type(input)}") if len(input.shape) < 2: raise ValueError(f"Input tensor must have at least two dimensions. Got {len(input.shape)}") input_size = h, w = input.shape[-2:] if isinstance(size, int): if torch.onnx.is_in_onnx_export(): warnings.warn( "Please pass the size with a tuple when exporting to ONNX to correct the tracing.", stacklevel=1 ) aspect_ratio = w / h size = _side_to_image_size(size, aspect_ratio, side) # Skip this dangerous if-else when converting to ONNX. if not torch.onnx.is_in_onnx_export(): if size == input_size: return input factors = (h / size[0], w / size[1]) # We do bluring only for downscaling antialias = antialias and (max(factors) > 1) if antialias: # First, we have to determine sigma # Taken from skimage: https://github.com/scikit-image/scikit-image/blob/v0.19.2/skimage/transform/_warps.py#L171 sigmas = (max((factors[0] - 1.0) / 2.0, 0.001), max((factors[1] - 1.0) / 2.0, 0.001)) # Now kernel size. Good results are for 3 sigma, but that is kind of slow. Pillow uses 1 sigma # https://github.com/python-pillow/Pillow/blob/master/src/libImaging/Resample.c#L206 # But they do it in the 2 passes, which gives better results. Let's try 2 sigmas for now ks = int(max(2.0 * 2 * sigmas[0], 3)), int(max(2.0 * 2 * sigmas[1], 3)) # Make sure it is odd if (ks[0] % 2) == 0: ks = ks[0] + 1, ks[1] if (ks[1] % 2) == 0: ks = ks[0], ks[1] + 1 input = gaussian_blur2d(input, ks, sigmas) output = torch.nn.functional.interpolate(input, size=size, mode=interpolation, align_corners=align_corners) return output def resize_to_be_divisible( input: Tensor, divisible_factor: int, interpolation: str = "bilinear", align_corners: Optional[bool] = None, side: str = "short", antialias: bool = False, ) -> Tensor: """Resize the input tensor to be divisible by a certain factor. Args: input (Tensor): Input tensor to be resized. divisible_factor (int): The factor to which the image should be divisible. interpolation (str, optional): Interpolation flag. Defaults to "bilinear". align_corners (Optional[bool], optional): whether to align the corners of the input and output. Defaults to None. side (str, optional): Side to resize. Defaults to "short". antialias (bool, optional): If True, then image will be filtered with Gaussian before downscaling. Defaults to False. Returns: Tensor: The resized tensor. """ if isinstance(input, Tensor) and len(input.shape) == 4: height, width = input.shape[2], input.shape[3] if isinstance(input, Tensor) and len(input.shape) == 3: height, width = input.shape[1], input.shape[2] height = round(height / divisible_factor) * divisible_factor width = round(width / divisible_factor) * divisible_factor return resize(input, (height, width), interpolation, align_corners, side, antialias) def rescale( input: Tensor, factor: Union[float, Tuple[float, float]], interpolation: str = "bilinear", align_corners: Optional[bool] = None, antialias: bool = False, ) -> Tensor: r"""Rescale the input Tensor with the given factor. .. image:: _static/img/rescale.png Args: input: The image tensor to be scale with shape of :math:`(B, C, H, W)`. factor: Desired scaling factor in each direction. If scalar, the value is used for both the x- and y-direction. interpolation: algorithm used for upsampling: ``'nearest'`` | ``'linear'`` | ``'bilinear'`` | ``'bicubic'`` | ``'trilinear'`` | ``'area'``. align_corners: interpolation flag. side: Corresponding side if ``size`` is an integer. Can be one of ``'short'``, ``'long'``, ``'vert'``, or ``'horz'``. antialias: if True, then image will be filtered with Gaussian before downscaling. No effect for upscaling. Returns: The rescaled tensor with the shape as the specified size. Example: >>> img = torch.rand(1, 3, 4, 4) >>> out = rescale(img, (2, 3)) >>> print(out.shape) torch.Size([1, 3, 8, 12]) """ if isinstance(factor, float): factor_vert = factor_horz = factor else: factor_vert, factor_horz = factor height, width = input.size()[-2:] size = (int(height * factor_vert), int(width * factor_horz)) return resize(input, size, interpolation=interpolation, align_corners=align_corners, antialias=antialias) class Resize(Module): r"""Resize the input Tensor to the given size. Args: size: Desired output size. If size is a sequence like (h, w), output size will be matched to this. If size is an int, smaller edge of the image will be matched to this number. i.e, if height > width, then image will be rescaled to (size * height / width, size) interpolation: algorithm used for upsampling: ``'nearest'`` | ``'linear'`` | ``'bilinear'`` | 'bicubic' | 'trilinear' | 'area'. align_corners: interpolation flag. side: Corresponding side if ``size`` is an integer. Can be one of ``'short'``, ``'long'``, ``'vert'``, or ``'horz'``. antialias: if True, then image will be filtered with Gaussian before downscaling. No effect for upscaling. Returns: The resized tensor with the shape of the given size. Example: >>> img = torch.rand(1, 3, 4, 4) >>> out = Resize((6, 8))(img) >>> print(out.shape) torch.Size([1, 3, 6, 8]) .. raw:: html """ def __init__( self, size: Union[int, Tuple[int, int]], interpolation: str = "bilinear", align_corners: Optional[bool] = None, side: str = "short", antialias: bool = False, ) -> None: super().__init__() self.size: Union[int, Tuple[int, int]] = size self.interpolation: str = interpolation self.align_corners: Optional[bool] = align_corners self.side: str = side self.antialias: bool = antialias def forward(self, input: Tensor) -> Tensor: return resize( input, self.size, self.interpolation, align_corners=self.align_corners, side=self.side, antialias=self.antialias, ) class Affine(Module): r"""Apply multiple elementary affine transforms simultaneously. Args: angle: Angle in degrees for counter-clockwise rotation around the center. The tensor must have a shape of (B), where B is the batch size. translation: Amount of pixels for translation in x- and y-direction. The tensor must have a shape of (B, 2), where B is the batch size and the last dimension contains dx and dy. scale_factor: Factor for scaling. The tensor must have a shape of (B), where B is the batch size. shear: Angles in degrees for shearing in x- and y-direction around the center. The tensor must have a shape of (B, 2), where B is the batch size and the last dimension contains sx and sy. center: Transformation center in pixels. The tensor must have a shape of (B, 2), where B is the batch size and the last dimension contains cx and cy. Defaults to the center of image to be transformed. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Raises: RuntimeError: If not one of ``angle``, ``translation``, ``scale_factor``, or ``shear`` is set. Returns: The transformed tensor with same shape as input. Example: >>> img = torch.rand(1, 2, 3, 5) >>> angle = 90. * torch.rand(1) >>> out = Affine(angle)(img) >>> print(out.shape) torch.Size([1, 2, 3, 5]) """ def __init__( self, angle: Optional[Tensor] = None, translation: Optional[Tensor] = None, scale_factor: Optional[Tensor] = None, shear: Optional[Tensor] = None, center: Optional[Tensor] = None, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> None: batch_sizes = [arg.size()[0] for arg in (angle, translation, scale_factor, shear) if arg is not None] if not batch_sizes: msg = ( "Affine was created without any affine parameter. At least one of angle, translation, scale_factor, or " "shear has to be set." ) raise RuntimeError(msg) batch_size = batch_sizes[0] if not all(other == batch_size for other in batch_sizes[1:]): raise RuntimeError(f"The batch sizes of the affine parameters mismatch: {batch_sizes}") self._batch_size = batch_size super().__init__() device, dtype = _extract_device_dtype([angle, translation, scale_factor]) if angle is None: angle = zeros(batch_size, device=device, dtype=dtype) self.angle = angle if translation is None: translation = zeros(batch_size, 2, device=device, dtype=dtype) self.translation = translation if scale_factor is None: scale_factor = ones(batch_size, 2, device=device, dtype=dtype) self.scale_factor = scale_factor self.shear = shear self.center = center self.mode = mode self.padding_mode = padding_mode self.align_corners = align_corners def forward(self, input: Tensor) -> Tensor: if self.shear is None: sx = sy = None else: sx, sy = self.shear[..., 0], self.shear[..., 1] if self.center is None: center = _compute_tensor_center(input).expand(input.size()[0], -1) else: center = self.center matrix = get_affine_matrix2d(self.translation, center, self.scale_factor, -self.angle, sx=sx, sy=sy) return affine(input, matrix[..., :2, :3], self.mode, self.padding_mode, self.align_corners) class Rescale(Module): r"""Rescale the input Tensor with the given factor. Args: factor: Desired scaling factor in each direction. If scalar, the value is used for both the x- and y-direction. interpolation: algorithm used for upsampling: ``'nearest'`` | ``'linear'`` | ``'bilinear'`` | ``'bicubic'`` | ``'trilinear'`` | ``'area'``. align_corners: interpolation flag. side: Corresponding side if ``size`` is an integer. Can be one of ``'short'``, ``'long'``, ``'vert'``, or ``'horz'``. antialias: if True, then image will be filtered with Gaussian before downscaling. No effect for upscaling. Returns: The rescaled tensor with the shape according to the given factor. Example: >>> img = torch.rand(1, 3, 4, 4) >>> out = Rescale((2, 3))(img) >>> print(out.shape) torch.Size([1, 3, 8, 12]) """ def __init__( self, factor: Union[float, Tuple[float, float]], interpolation: str = "bilinear", align_corners: bool = True, antialias: bool = False, ) -> None: super().__init__() self.factor: Union[float, Tuple[float, float]] = factor self.interpolation: str = interpolation self.align_corners: Optional[bool] = align_corners self.antialias: bool = antialias def forward(self, input: Tensor) -> Tensor: return rescale( input, self.factor, self.interpolation, align_corners=self.align_corners, antialias=self.antialias ) class Rotate(Module): r"""Rotate the tensor anti-clockwise about the centre. Args: angle: The angle through which to rotate. The tensor must have a shape of (B), where B is batch size. center: The center through which to rotate. The tensor must have a shape of (B, 2), where B is batch size and last dimension contains cx and cy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The rotated tensor with the same shape as the input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> angle = torch.tensor([90.]) >>> out = Rotate(angle)(img) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ def __init__( self, angle: Tensor, center: Union[None, Tensor] = None, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> None: super().__init__() self.angle: Tensor = angle self.center: Union[None, Tensor] = center self.mode: str = mode self.padding_mode: str = padding_mode self.align_corners: bool = align_corners def forward(self, input: Tensor) -> Tensor: return rotate(input, self.angle, self.center, self.mode, self.padding_mode, self.align_corners) class Translate(Module): r"""Translate the tensor in pixel units. Args: translation: tensor containing the amount of pixels to translate in the x and y direction. The tensor must have a shape of (B, 2), where B is batch size, last dimension contains dx dy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The translated tensor with the same shape as the input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> translation = torch.tensor([[1., 0.]]) >>> out = Translate(translation)(img) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ def __init__( self, translation: Tensor, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True ) -> None: super().__init__() self.translation: Tensor = translation self.mode: str = mode self.padding_mode: str = padding_mode self.align_corners: bool = align_corners def forward(self, input: Tensor) -> Tensor: return translate(input, self.translation, self.mode, self.padding_mode, self.align_corners) class Scale(Module): r"""Scale the tensor by a factor. Args: scale_factor: The scale factor apply. The tensor must have a shape of (B) or (B, 2), where B is batch size. If (B), isotropic scaling will perform. If (B, 2), x-y-direction specific scaling will perform. center: The center through which to scale. The tensor must have a shape of (B, 2), where B is batch size and last dimension contains cx and cy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The scaled tensor with the same shape as the input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> scale_factor = torch.tensor([[2., 2.]]) >>> out = Scale(scale_factor)(img) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ def __init__( self, scale_factor: Tensor, center: Union[None, Tensor] = None, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True, ) -> None: super().__init__() self.scale_factor: Tensor = scale_factor self.center: Union[None, Tensor] = center self.mode: str = mode self.padding_mode: str = padding_mode self.align_corners: bool = align_corners def forward(self, input: Tensor) -> Tensor: return scale(input, self.scale_factor, self.center, self.mode, self.padding_mode, self.align_corners) class Shear(Module): r"""Shear the tensor. Args: shear: tensor containing the angle to shear in the x and y direction. The tensor must have a shape of (B, 2), where B is batch size, last dimension contains shx shy. mode: interpolation mode to calculate output values ``'bilinear'`` | ``'nearest'``. padding_mode: padding mode for outside grid values ``'zeros'`` | ``'border'`` | ``'reflection'``. align_corners: interpolation flag. Returns: The skewed tensor with the same shape as the input. Example: >>> img = torch.rand(1, 3, 4, 4) >>> shear_factor = torch.tensor([[0.5, 0.0]]) >>> out = Shear(shear_factor)(img) >>> print(out.shape) torch.Size([1, 3, 4, 4]) """ def __init__( self, shear: Tensor, mode: str = "bilinear", padding_mode: str = "zeros", align_corners: bool = True ) -> None: super().__init__() self.shear: Tensor = shear self.mode: str = mode self.padding_mode: str = padding_mode self.align_corners: bool = align_corners def forward(self, input: Tensor) -> Tensor: return shear(input, self.shear, self.mode, self.padding_mode, self.align_corners)