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304 lines
12 KiB
304 lines
12 KiB
5 months ago
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from .module import Module
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from .. import functional as F
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from torch import Tensor
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from ..common_types import _size_any_t
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__all__ = ['Fold', 'Unfold']
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class Fold(Module):
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r"""Combines an array of sliding local blocks into a large containing tensor.
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Consider a batched :attr:`input` tensor containing sliding local blocks,
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e.g., patches of images, of shape :math:`(N, C \times \prod(\text{kernel\_size}), L)`,
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where :math:`N` is batch dimension, :math:`C \times \prod(\text{kernel\_size})`
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is the number of values within a block (a block has :math:`\prod(\text{kernel\_size})`
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spatial locations each containing a :math:`C`-channeled vector), and
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:math:`L` is the total number of blocks. (This is exactly the
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same specification as the output shape of :class:`~torch.nn.Unfold`.) This
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operation combines these local blocks into the large :attr:`output` tensor
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of shape :math:`(N, C, \text{output\_size}[0], \text{output\_size}[1], \dots)`
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by summing the overlapping values. Similar to :class:`~torch.nn.Unfold`, the
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arguments must satisfy
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.. math::
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L = \prod_d \left\lfloor\frac{\text{output\_size}[d] + 2 \times \text{padding}[d] %
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- \text{dilation}[d] \times (\text{kernel\_size}[d] - 1) - 1}{\text{stride}[d]} + 1\right\rfloor,
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where :math:`d` is over all spatial dimensions.
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* :attr:`output_size` describes the spatial shape of the large containing
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tensor of the sliding local blocks. It is useful to resolve the ambiguity
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when multiple input shapes map to same number of sliding blocks, e.g.,
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with ``stride > 0``.
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The :attr:`padding`, :attr:`stride` and :attr:`dilation` arguments specify
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how the sliding blocks are retrieved.
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* :attr:`stride` controls the stride for the sliding blocks.
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* :attr:`padding` controls the amount of implicit zero-paddings on both
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sides for :attr:`padding` number of points for each dimension before
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reshaping.
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* :attr:`dilation` controls the spacing between the kernel points; also known as the à trous algorithm.
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It is harder to describe, but this `link`_ has a nice visualization of what :attr:`dilation` does.
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Args:
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output_size (int or tuple): the shape of the spatial dimensions of the
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output (i.e., ``output.sizes()[2:]``)
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kernel_size (int or tuple): the size of the sliding blocks
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dilation (int or tuple, optional): a parameter that controls the
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stride of elements within the
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neighborhood. Default: 1
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padding (int or tuple, optional): implicit zero padding to be added on
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both sides of input. Default: 0
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stride (int or tuple): the stride of the sliding blocks in the input
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spatial dimensions. Default: 1
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* If :attr:`output_size`, :attr:`kernel_size`, :attr:`dilation`,
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:attr:`padding` or :attr:`stride` is an int or a tuple of length 1 then
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their values will be replicated across all spatial dimensions.
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* For the case of two output spatial dimensions this operation is sometimes
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called ``col2im``.
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.. note::
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:class:`~torch.nn.Fold` calculates each combined value in the resulting
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large tensor by summing all values from all containing blocks.
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:class:`~torch.nn.Unfold` extracts the values in the local blocks by
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copying from the large tensor. So, if the blocks overlap, they are not
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inverses of each other.
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In general, folding and unfolding operations are related as
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follows. Consider :class:`~torch.nn.Fold` and
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:class:`~torch.nn.Unfold` instances created with the same
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parameters:
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>>> fold_params = dict(kernel_size=..., dilation=..., padding=..., stride=...)
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>>> fold = nn.Fold(output_size=..., **fold_params)
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>>> unfold = nn.Unfold(**fold_params)
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Then for any (supported) ``input`` tensor the following
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equality holds:
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::
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fold(unfold(input)) == divisor * input
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where ``divisor`` is a tensor that depends only on the shape
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and dtype of the ``input``:
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>>> # xdoctest: +SKIP
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>>> input_ones = torch.ones(input.shape, dtype=input.dtype)
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>>> divisor = fold(unfold(input_ones))
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When the ``divisor`` tensor contains no zero elements, then
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``fold`` and ``unfold`` operations are inverses of each
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other (up to constant divisor).
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.. warning::
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Currently, only unbatched (3D) or batched (4D) image-like output tensors are supported.
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Shape:
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- Input: :math:`(N, C \times \prod(\text{kernel\_size}), L)` or :math:`(C \times \prod(\text{kernel\_size}), L)`
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- Output: :math:`(N, C, \text{output\_size}[0], \text{output\_size}[1], \dots)`
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or :math:`(C, \text{output\_size}[0], \text{output\_size}[1], \dots)` as described above
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Examples::
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>>> fold = nn.Fold(output_size=(4, 5), kernel_size=(2, 2))
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>>> input = torch.randn(1, 3 * 2 * 2, 12)
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>>> output = fold(input)
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>>> output.size()
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torch.Size([1, 3, 4, 5])
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.. _link:
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https://github.com/vdumoulin/conv_arithmetic/blob/master/README.md
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"""
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__constants__ = ['output_size', 'kernel_size', 'dilation', 'padding',
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'stride']
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output_size: _size_any_t
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kernel_size: _size_any_t
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dilation: _size_any_t
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padding: _size_any_t
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stride: _size_any_t
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def __init__(
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self,
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output_size: _size_any_t,
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kernel_size: _size_any_t,
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dilation: _size_any_t = 1,
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padding: _size_any_t = 0,
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stride: _size_any_t = 1
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) -> None:
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super().__init__()
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self.output_size = output_size
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self.kernel_size = kernel_size
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self.dilation = dilation
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self.padding = padding
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self.stride = stride
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def forward(self, input: Tensor) -> Tensor:
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return F.fold(input, self.output_size, self.kernel_size, self.dilation,
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self.padding, self.stride)
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def extra_repr(self) -> str:
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return 'output_size={output_size}, kernel_size={kernel_size}, ' \
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'dilation={dilation}, padding={padding}, stride={stride}'.format(
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**self.__dict__
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)
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class Unfold(Module):
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r"""Extracts sliding local blocks from a batched input tensor.
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Consider a batched :attr:`input` tensor of shape :math:`(N, C, *)`,
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where :math:`N` is the batch dimension, :math:`C` is the channel dimension,
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and :math:`*` represent arbitrary spatial dimensions. This operation flattens
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each sliding :attr:`kernel_size`-sized block within the spatial dimensions
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of :attr:`input` into a column (i.e., last dimension) of a 3-D :attr:`output`
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tensor of shape :math:`(N, C \times \prod(\text{kernel\_size}), L)`, where
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:math:`C \times \prod(\text{kernel\_size})` is the total number of values
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within each block (a block has :math:`\prod(\text{kernel\_size})` spatial
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locations each containing a :math:`C`-channeled vector), and :math:`L` is
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the total number of such blocks:
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.. math::
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L = \prod_d \left\lfloor\frac{\text{spatial\_size}[d] + 2 \times \text{padding}[d] %
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- \text{dilation}[d] \times (\text{kernel\_size}[d] - 1) - 1}{\text{stride}[d]} + 1\right\rfloor,
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where :math:`\text{spatial\_size}` is formed by the spatial dimensions
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of :attr:`input` (:math:`*` above), and :math:`d` is over all spatial
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dimensions.
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Therefore, indexing :attr:`output` at the last dimension (column dimension)
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gives all values within a certain block.
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The :attr:`padding`, :attr:`stride` and :attr:`dilation` arguments specify
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how the sliding blocks are retrieved.
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* :attr:`stride` controls the stride for the sliding blocks.
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* :attr:`padding` controls the amount of implicit zero-paddings on both
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sides for :attr:`padding` number of points for each dimension before
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reshaping.
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* :attr:`dilation` controls the spacing between the kernel points; also known as the à trous algorithm.
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It is harder to describe, but this `link`_ has a nice visualization of what :attr:`dilation` does.
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Args:
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kernel_size (int or tuple): the size of the sliding blocks
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dilation (int or tuple, optional): a parameter that controls the
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stride of elements within the
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neighborhood. Default: 1
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padding (int or tuple, optional): implicit zero padding to be added on
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both sides of input. Default: 0
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stride (int or tuple, optional): the stride of the sliding blocks in the input
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spatial dimensions. Default: 1
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* If :attr:`kernel_size`, :attr:`dilation`, :attr:`padding` or
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:attr:`stride` is an int or a tuple of length 1, their values will be
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replicated across all spatial dimensions.
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* For the case of two input spatial dimensions this operation is sometimes
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called ``im2col``.
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.. note::
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:class:`~torch.nn.Fold` calculates each combined value in the resulting
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large tensor by summing all values from all containing blocks.
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:class:`~torch.nn.Unfold` extracts the values in the local blocks by
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copying from the large tensor. So, if the blocks overlap, they are not
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inverses of each other.
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In general, folding and unfolding operations are related as
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follows. Consider :class:`~torch.nn.Fold` and
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:class:`~torch.nn.Unfold` instances created with the same
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parameters:
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>>> fold_params = dict(kernel_size=..., dilation=..., padding=..., stride=...)
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>>> fold = nn.Fold(output_size=..., **fold_params)
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>>> unfold = nn.Unfold(**fold_params)
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Then for any (supported) ``input`` tensor the following
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equality holds:
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::
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fold(unfold(input)) == divisor * input
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where ``divisor`` is a tensor that depends only on the shape
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and dtype of the ``input``:
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>>> # xdoctest: +SKIP
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>>> input_ones = torch.ones(input.shape, dtype=input.dtype)
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>>> divisor = fold(unfold(input_ones))
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When the ``divisor`` tensor contains no zero elements, then
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``fold`` and ``unfold`` operations are inverses of each
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other (up to constant divisor).
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.. warning::
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Currently, only 4-D input tensors (batched image-like tensors) are
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supported.
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Shape:
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- Input: :math:`(N, C, *)`
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- Output: :math:`(N, C \times \prod(\text{kernel\_size}), L)` as described above
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Examples::
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>>> unfold = nn.Unfold(kernel_size=(2, 3))
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>>> input = torch.randn(2, 5, 3, 4)
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>>> output = unfold(input)
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>>> # each patch contains 30 values (2x3=6 vectors, each of 5 channels)
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>>> # 4 blocks (2x3 kernels) in total in the 3x4 input
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>>> output.size()
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torch.Size([2, 30, 4])
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>>> # xdoctest: +IGNORE_WANT
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>>> # Convolution is equivalent with Unfold + Matrix Multiplication + Fold (or view to output shape)
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>>> inp = torch.randn(1, 3, 10, 12)
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>>> w = torch.randn(2, 3, 4, 5)
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>>> inp_unf = torch.nn.functional.unfold(inp, (4, 5))
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>>> out_unf = inp_unf.transpose(1, 2).matmul(w.view(w.size(0), -1).t()).transpose(1, 2)
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>>> out = torch.nn.functional.fold(out_unf, (7, 8), (1, 1))
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>>> # or equivalently (and avoiding a copy),
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>>> # out = out_unf.view(1, 2, 7, 8)
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>>> (torch.nn.functional.conv2d(inp, w) - out).abs().max()
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tensor(1.9073e-06)
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.. _link:
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https://github.com/vdumoulin/conv_arithmetic/blob/master/README.md
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"""
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__constants__ = ['kernel_size', 'dilation', 'padding', 'stride']
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kernel_size: _size_any_t
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dilation: _size_any_t
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padding: _size_any_t
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stride: _size_any_t
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def __init__(
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self,
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kernel_size: _size_any_t,
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dilation: _size_any_t = 1,
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padding: _size_any_t = 0,
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stride: _size_any_t = 1
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) -> None:
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super().__init__()
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self.kernel_size = kernel_size
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self.dilation = dilation
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self.padding = padding
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self.stride = stride
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def forward(self, input: Tensor) -> Tensor:
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return F.unfold(input, self.kernel_size, self.dilation,
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self.padding, self.stride)
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def extra_repr(self) -> str:
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return 'kernel_size={kernel_size}, dilation={dilation}, padding={padding},' \
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' stride={stride}'.format(**self.__dict__)
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