Source code for torch.nn.modules.pooling
from typing import List, Optional
from torch import Tensor
from .module import Module
from .utils import _single, _pair, _triple
from .. import functional as F
from ..common_types import (_size_any_t, _size_1_t, _size_2_t, _size_3_t,
_ratio_3_t, _ratio_2_t, _size_any_opt_t, _size_2_opt_t, _size_3_opt_t)
__all__ = ['MaxPool1d', 'MaxPool2d', 'MaxPool3d', 'MaxUnpool1d', 'MaxUnpool2d', 'MaxUnpool3d',
'AvgPool1d', 'AvgPool2d', 'AvgPool3d', 'FractionalMaxPool2d', 'FractionalMaxPool3d', 'LPPool1d',
'LPPool2d', 'LPPool3d', 'AdaptiveMaxPool1d', 'AdaptiveMaxPool2d', 'AdaptiveMaxPool3d',
'AdaptiveAvgPool1d', 'AdaptiveAvgPool2d', 'AdaptiveAvgPool3d']
class _MaxPoolNd(Module):
__constants__ = ['kernel_size', 'stride', 'padding', 'dilation',
'return_indices', 'ceil_mode']
return_indices: bool
ceil_mode: bool
def __init__(self, kernel_size: _size_any_t, stride: Optional[_size_any_t] = None,
padding: _size_any_t = 0, dilation: _size_any_t = 1,
return_indices: bool = False, ceil_mode: bool = False) -> None:
super().__init__()
self.kernel_size = kernel_size
self.stride = stride if (stride is not None) else kernel_size
self.padding = padding
self.dilation = dilation
self.return_indices = return_indices
self.ceil_mode = ceil_mode
def extra_repr(self) -> str:
return 'kernel_size={kernel_size}, stride={stride}, padding={padding}' \
', dilation={dilation}, ceil_mode={ceil_mode}'.format(**self.__dict__)
[docs]class MaxPool1d(_MaxPoolNd):
r"""Applies a 1D max pooling over an input signal composed of several input planes.
In the simplest case, the output value of the layer with input size :math:`(N, C, L)`
and output :math:`(N, C, L_{out})` can be precisely described as:
.. math::
out(N_i, C_j, k) = \max_{m=0, \ldots, \text{kernel\_size} - 1}
input(N_i, C_j, stride \times k + m)
If :attr:`padding` is non-zero, then the input is implicitly padded with negative infinity on both sides
for :attr:`padding` number of points. :attr:`dilation` is the stride between the elements within the
sliding window. This `link`_ has a nice visualization of the pooling parameters.
Note:
When ceil_mode=True, sliding windows are allowed to go off-bounds if they start within the left padding
or the input. Sliding windows that would start in the right padded region are ignored.
Args:
kernel_size: The size of the sliding window, must be > 0.
stride: The stride of the sliding window, must be > 0. Default value is :attr:`kernel_size`.
padding: Implicit negative infinity padding to be added on both sides, must be >= 0 and <= kernel_size / 2.
dilation: The stride between elements within a sliding window, must be > 0.
return_indices: If ``True``, will return the argmax along with the max values.
Useful for :class:`torch.nn.MaxUnpool1d` later
ceil_mode: If ``True``, will use `ceil` instead of `floor` to compute the output shape. This
ensures that every element in the input tensor is covered by a sliding window.
Shape:
- Input: :math:`(N, C, L_{in})` or :math:`(C, L_{in})`.
- Output: :math:`(N, C, L_{out})` or :math:`(C, L_{out})`, where
.. math::
L_{out} = \left\lfloor \frac{L_{in} + 2 \times \text{padding} - \text{dilation}
\times (\text{kernel\_size} - 1) - 1}{\text{stride}} + 1\right\rfloor
Examples::
>>> # pool of size=3, stride=2
>>> m = nn.MaxPool1d(3, stride=2)
>>> input = torch.randn(20, 16, 50)
>>> output = m(input)
.. _link:
https://github.com/vdumoulin/conv_arithmetic/blob/master/README.md
"""
kernel_size: _size_1_t
stride: _size_1_t
padding: _size_1_t
dilation: _size_1_t
def forward(self, input: Tensor):
return F.max_pool1d(input, self.kernel_size, self.stride,
self.padding, self.dilation, ceil_mode=self.ceil_mode,
return_indices=self.return_indices)
[docs]class MaxPool2d(_MaxPoolNd):
r"""Applies a 2D max pooling over an input signal composed of several input planes.
In the simplest case, the output value of the layer with input size :math:`(N, C, H, W)`,
output :math:`(N, C, H_{out}, W_{out})` and :attr:`kernel_size` :math:`(kH, kW)`
can be precisely described as:
.. math::
\begin{aligned}
out(N_i, C_j, h, w) ={} & \max_{m=0, \ldots, kH-1} \max_{n=0, \ldots, kW-1} \\
& \text{input}(N_i, C_j, \text{stride[0]} \times h + m,
\text{stride[1]} \times w + n)
\end{aligned}
If :attr:`padding` is non-zero, then the input is implicitly padded with negative infinity on both sides
for :attr:`padding` number of points. :attr:`dilation` controls the spacing between the kernel points.
It is harder to describe, but this `link`_ has a nice visualization of what :attr:`dilation` does.
Note:
When ceil_mode=True, sliding windows are allowed to go off-bounds if they start within the left padding
or the input. Sliding windows that would start in the right padded region are ignored.
The parameters :attr:`kernel_size`, :attr:`stride`, :attr:`padding`, :attr:`dilation` can either be:
- a single ``int`` -- in which case the same value is used for the height and width dimension
- a ``tuple`` of two ints -- in which case, the first `int` is used for the height dimension,
and the second `int` for the width dimension
Args:
kernel_size: the size of the window to take a max over
stride: the stride of the window. Default value is :attr:`kernel_size`
padding: Implicit negative infinity padding to be added on both sides
dilation: a parameter that controls the stride of elements in the window
return_indices: if ``True``, will return the max indices along with the outputs.
Useful for :class:`torch.nn.MaxUnpool2d` later
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`
- Output: :math:`(N, C, H_{out}, W_{out})` or :math:`(C, H_{out}, W_{out})`, where
.. math::
H_{out} = \left\lfloor\frac{H_{in} + 2 * \text{padding[0]} - \text{dilation[0]}
\times (\text{kernel\_size[0]} - 1) - 1}{\text{stride[0]}} + 1\right\rfloor
.. math::
W_{out} = \left\lfloor\frac{W_{in} + 2 * \text{padding[1]} - \text{dilation[1]}
\times (\text{kernel\_size[1]} - 1) - 1}{\text{stride[1]}} + 1\right\rfloor
Examples::
>>> # pool of square window of size=3, stride=2
>>> m = nn.MaxPool2d(3, stride=2)
>>> # pool of non-square window
>>> m = nn.MaxPool2d((3, 2), stride=(2, 1))
>>> input = torch.randn(20, 16, 50, 32)
>>> output = m(input)
.. _link:
https://github.com/vdumoulin/conv_arithmetic/blob/master/README.md
"""
kernel_size: _size_2_t
stride: _size_2_t
padding: _size_2_t
dilation: _size_2_t
def forward(self, input: Tensor):
return F.max_pool2d(input, self.kernel_size, self.stride,
self.padding, self.dilation, ceil_mode=self.ceil_mode,
return_indices=self.return_indices)
[docs]class MaxPool3d(_MaxPoolNd):
r"""Applies a 3D max pooling over an input signal composed of several input planes.
In the simplest case, the output value of the layer with input size :math:`(N, C, D, H, W)`,
output :math:`(N, C, D_{out}, H_{out}, W_{out})` and :attr:`kernel_size` :math:`(kD, kH, kW)`
can be precisely described as:
.. math::
\begin{aligned}
\text{out}(N_i, C_j, d, h, w) ={} & \max_{k=0, \ldots, kD-1} \max_{m=0, \ldots, kH-1} \max_{n=0, \ldots, kW-1} \\
& \text{input}(N_i, C_j, \text{stride[0]} \times d + k,
\text{stride[1]} \times h + m, \text{stride[2]} \times w + n)
\end{aligned}
If :attr:`padding` is non-zero, then the input is implicitly padded with negative infinity on both sides
for :attr:`padding` number of points. :attr:`dilation` controls the spacing between the kernel points.
It is harder to describe, but this `link`_ has a nice visualization of what :attr:`dilation` does.
Note:
When ceil_mode=True, sliding windows are allowed to go off-bounds if they start within the left padding
or the input. Sliding windows that would start in the right padded region are ignored.
The parameters :attr:`kernel_size`, :attr:`stride`, :attr:`padding`, :attr:`dilation` can either be:
- a single ``int`` -- in which case the same value is used for the depth, height and width dimension
- a ``tuple`` of three ints -- in which case, the first `int` is used for the depth dimension,
the second `int` for the height dimension and the third `int` for the width dimension
Args:
kernel_size: the size of the window to take a max over
stride: the stride of the window. Default value is :attr:`kernel_size`
padding: Implicit negative infinity padding to be added on all three sides
dilation: a parameter that controls the stride of elements in the window
return_indices: if ``True``, will return the max indices along with the outputs.
Useful for :class:`torch.nn.MaxUnpool3d` later
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
Shape:
- Input: :math:`(N, C, D_{in}, H_{in}, W_{in})` or :math:`(C, D_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, D_{out}, H_{out}, W_{out})` or :math:`(C, D_{out}, H_{out}, W_{out})`, where
.. math::
D_{out} = \left\lfloor\frac{D_{in} + 2 \times \text{padding}[0] - \text{dilation}[0] \times
(\text{kernel\_size}[0] - 1) - 1}{\text{stride}[0]} + 1\right\rfloor
.. math::
H_{out} = \left\lfloor\frac{H_{in} + 2 \times \text{padding}[1] - \text{dilation}[1] \times
(\text{kernel\_size}[1] - 1) - 1}{\text{stride}[1]} + 1\right\rfloor
.. math::
W_{out} = \left\lfloor\frac{W_{in} + 2 \times \text{padding}[2] - \text{dilation}[2] \times
(\text{kernel\_size}[2] - 1) - 1}{\text{stride}[2]} + 1\right\rfloor
Examples::
>>> # pool of square window of size=3, stride=2
>>> m = nn.MaxPool3d(3, stride=2)
>>> # pool of non-square window
>>> m = nn.MaxPool3d((3, 2, 2), stride=(2, 1, 2))
>>> input = torch.randn(20, 16, 50, 44, 31)
>>> output = m(input)
.. _link:
https://github.com/vdumoulin/conv_arithmetic/blob/master/README.md
""" # noqa: E501
kernel_size: _size_3_t
stride: _size_3_t
padding: _size_3_t
dilation: _size_3_t
def forward(self, input: Tensor):
return F.max_pool3d(input, self.kernel_size, self.stride,
self.padding, self.dilation, ceil_mode=self.ceil_mode,
return_indices=self.return_indices)
class _MaxUnpoolNd(Module):
def extra_repr(self) -> str:
return f'kernel_size={self.kernel_size}, stride={self.stride}, padding={self.padding}'
[docs]class MaxUnpool1d(_MaxUnpoolNd):
r"""Computes a partial inverse of :class:`MaxPool1d`.
:class:`MaxPool1d` is not fully invertible, since the non-maximal values are lost.
:class:`MaxUnpool1d` takes in as input the output of :class:`MaxPool1d`
including the indices of the maximal values and computes a partial inverse
in which all non-maximal values are set to zero.
Note:
This operation may behave nondeterministically when the input indices has repeat values.
See https://github.com/pytorch/pytorch/issues/80827 and :doc:`/notes/randomness` for more information.
.. note:: :class:`MaxPool1d` can map several input sizes to the same output
sizes. Hence, the inversion process can get ambiguous.
To accommodate this, you can provide the needed output size
as an additional argument :attr:`output_size` in the forward call.
See the Inputs and Example below.
Args:
kernel_size (int or tuple): Size of the max pooling window.
stride (int or tuple): Stride of the max pooling window.
It is set to :attr:`kernel_size` by default.
padding (int or tuple): Padding that was added to the input
Inputs:
- `input`: the input Tensor to invert
- `indices`: the indices given out by :class:`~torch.nn.MaxPool1d`
- `output_size` (optional): the targeted output size
Shape:
- Input: :math:`(N, C, H_{in})` or :math:`(C, H_{in})`.
- Output: :math:`(N, C, H_{out})` or :math:`(C, H_{out})`, where
.. math::
H_{out} = (H_{in} - 1) \times \text{stride}[0] - 2 \times \text{padding}[0] + \text{kernel\_size}[0]
or as given by :attr:`output_size` in the call operator
Example::
>>> # xdoctest: +IGNORE_WANT("do other tests modify the global state?")
>>> pool = nn.MaxPool1d(2, stride=2, return_indices=True)
>>> unpool = nn.MaxUnpool1d(2, stride=2)
>>> input = torch.tensor([[[1., 2, 3, 4, 5, 6, 7, 8]]])
>>> output, indices = pool(input)
>>> unpool(output, indices)
tensor([[[ 0., 2., 0., 4., 0., 6., 0., 8.]]])
>>> # Example showcasing the use of output_size
>>> input = torch.tensor([[[1., 2, 3, 4, 5, 6, 7, 8, 9]]])
>>> output, indices = pool(input)
>>> unpool(output, indices, output_size=input.size())
tensor([[[ 0., 2., 0., 4., 0., 6., 0., 8., 0.]]])
>>> unpool(output, indices)
tensor([[[ 0., 2., 0., 4., 0., 6., 0., 8.]]])
"""
kernel_size: _size_1_t
stride: _size_1_t
padding: _size_1_t
def __init__(self, kernel_size: _size_1_t, stride: Optional[_size_1_t] = None, padding: _size_1_t = 0) -> None:
super().__init__()
self.kernel_size = _single(kernel_size)
self.stride = _single(stride if (stride is not None) else kernel_size)
self.padding = _single(padding)
def forward(self, input: Tensor, indices: Tensor, output_size: Optional[List[int]] = None) -> Tensor:
return F.max_unpool1d(input, indices, self.kernel_size, self.stride,
self.padding, output_size)
[docs]class MaxUnpool2d(_MaxUnpoolNd):
r"""Computes a partial inverse of :class:`MaxPool2d`.
:class:`MaxPool2d` is not fully invertible, since the non-maximal values are lost.
:class:`MaxUnpool2d` takes in as input the output of :class:`MaxPool2d`
including the indices of the maximal values and computes a partial inverse
in which all non-maximal values are set to zero.
Note:
This operation may behave nondeterministically when the input indices has repeat values.
See https://github.com/pytorch/pytorch/issues/80827 and :doc:`/notes/randomness` for more information.
.. note:: :class:`MaxPool2d` can map several input sizes to the same output
sizes. Hence, the inversion process can get ambiguous.
To accommodate this, you can provide the needed output size
as an additional argument :attr:`output_size` in the forward call.
See the Inputs and Example below.
Args:
kernel_size (int or tuple): Size of the max pooling window.
stride (int or tuple): Stride of the max pooling window.
It is set to :attr:`kernel_size` by default.
padding (int or tuple): Padding that was added to the input
Inputs:
- `input`: the input Tensor to invert
- `indices`: the indices given out by :class:`~torch.nn.MaxPool2d`
- `output_size` (optional): the targeted output size
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`.
- Output: :math:`(N, C, H_{out}, W_{out})` or :math:`(C, H_{out}, W_{out})`, where
.. math::
H_{out} = (H_{in} - 1) \times \text{stride[0]} - 2 \times \text{padding[0]} + \text{kernel\_size[0]}
.. math::
W_{out} = (W_{in} - 1) \times \text{stride[1]} - 2 \times \text{padding[1]} + \text{kernel\_size[1]}
or as given by :attr:`output_size` in the call operator
Example::
>>> pool = nn.MaxPool2d(2, stride=2, return_indices=True)
>>> unpool = nn.MaxUnpool2d(2, stride=2)
>>> input = torch.tensor([[[[ 1., 2., 3., 4.],
[ 5., 6., 7., 8.],
[ 9., 10., 11., 12.],
[13., 14., 15., 16.]]]])
>>> output, indices = pool(input)
>>> unpool(output, indices)
tensor([[[[ 0., 0., 0., 0.],
[ 0., 6., 0., 8.],
[ 0., 0., 0., 0.],
[ 0., 14., 0., 16.]]]])
>>> # Now using output_size to resolve an ambiguous size for the inverse
>>> input = torch.tensor([[[[ 1., 2., 3., 4., 5.],
[ 6., 7., 8., 9., 10.],
[11., 12., 13., 14., 15.],
[16., 17., 18., 19., 20.]]]])
>>> output, indices = pool(input)
>>> # This call will not work without specifying output_size
>>> unpool(output, indices, output_size=input.size())
tensor([[[[ 0., 0., 0., 0., 0.],
[ 0., 7., 0., 9., 0.],
[ 0., 0., 0., 0., 0.],
[ 0., 17., 0., 19., 0.]]]])
"""
kernel_size: _size_2_t
stride: _size_2_t
padding: _size_2_t
def __init__(self, kernel_size: _size_2_t, stride: Optional[_size_2_t] = None, padding: _size_2_t = 0) -> None:
super().__init__()
self.kernel_size = _pair(kernel_size)
self.stride = _pair(stride if (stride is not None) else kernel_size)
self.padding = _pair(padding)
def forward(self, input: Tensor, indices: Tensor, output_size: Optional[List[int]] = None) -> Tensor:
return F.max_unpool2d(input, indices, self.kernel_size, self.stride,
self.padding, output_size)
[docs]class MaxUnpool3d(_MaxUnpoolNd):
r"""Computes a partial inverse of :class:`MaxPool3d`.
:class:`MaxPool3d` is not fully invertible, since the non-maximal values are lost.
:class:`MaxUnpool3d` takes in as input the output of :class:`MaxPool3d`
including the indices of the maximal values and computes a partial inverse
in which all non-maximal values are set to zero.
Note:
This operation may behave nondeterministically when the input indices has repeat values.
See https://github.com/pytorch/pytorch/issues/80827 and :doc:`/notes/randomness` for more information.
.. note:: :class:`MaxPool3d` can map several input sizes to the same output
sizes. Hence, the inversion process can get ambiguous.
To accommodate this, you can provide the needed output size
as an additional argument :attr:`output_size` in the forward call.
See the Inputs section below.
Args:
kernel_size (int or tuple): Size of the max pooling window.
stride (int or tuple): Stride of the max pooling window.
It is set to :attr:`kernel_size` by default.
padding (int or tuple): Padding that was added to the input
Inputs:
- `input`: the input Tensor to invert
- `indices`: the indices given out by :class:`~torch.nn.MaxPool3d`
- `output_size` (optional): the targeted output size
Shape:
- Input: :math:`(N, C, D_{in}, H_{in}, W_{in})` or :math:`(C, D_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, D_{out}, H_{out}, W_{out})` or :math:`(C, D_{out}, H_{out}, W_{out})`, where
.. math::
D_{out} = (D_{in} - 1) \times \text{stride[0]} - 2 \times \text{padding[0]} + \text{kernel\_size[0]}
.. math::
H_{out} = (H_{in} - 1) \times \text{stride[1]} - 2 \times \text{padding[1]} + \text{kernel\_size[1]}
.. math::
W_{out} = (W_{in} - 1) \times \text{stride[2]} - 2 \times \text{padding[2]} + \text{kernel\_size[2]}
or as given by :attr:`output_size` in the call operator
Example::
>>> # pool of square window of size=3, stride=2
>>> pool = nn.MaxPool3d(3, stride=2, return_indices=True)
>>> unpool = nn.MaxUnpool3d(3, stride=2)
>>> output, indices = pool(torch.randn(20, 16, 51, 33, 15))
>>> unpooled_output = unpool(output, indices)
>>> unpooled_output.size()
torch.Size([20, 16, 51, 33, 15])
"""
kernel_size: _size_3_t
stride: _size_3_t
padding: _size_3_t
def __init__(self, kernel_size: _size_3_t, stride: Optional[_size_3_t] = None, padding: _size_3_t = 0) -> None:
super().__init__()
self.kernel_size = _triple(kernel_size)
self.stride = _triple(stride if (stride is not None) else kernel_size)
self.padding = _triple(padding)
def forward(self, input: Tensor, indices: Tensor, output_size: Optional[List[int]] = None) -> Tensor:
return F.max_unpool3d(input, indices, self.kernel_size, self.stride,
self.padding, output_size)
class _AvgPoolNd(Module):
__constants__ = ['kernel_size', 'stride', 'padding', 'ceil_mode', 'count_include_pad']
def extra_repr(self) -> str:
return f'kernel_size={self.kernel_size}, stride={self.stride}, padding={self.padding}'
[docs]class AvgPool1d(_AvgPoolNd):
r"""Applies a 1D average pooling over an input signal composed of several input planes.
In the simplest case, the output value of the layer with input size :math:`(N, C, L)`,
output :math:`(N, C, L_{out})` and :attr:`kernel_size` :math:`k`
can be precisely described as:
.. math::
\text{out}(N_i, C_j, l) = \frac{1}{k} \sum_{m=0}^{k-1}
\text{input}(N_i, C_j, \text{stride} \times l + m)
If :attr:`padding` is non-zero, then the input is implicitly zero-padded on both sides
for :attr:`padding` number of points.
Note:
When ceil_mode=True, sliding windows are allowed to go off-bounds if they start within the left padding
or the input. Sliding windows that would start in the right padded region are ignored.
The parameters :attr:`kernel_size`, :attr:`stride`, :attr:`padding` can each be
an ``int`` or a one-element tuple.
Args:
kernel_size: the size of the window
stride: the stride of the window. Default value is :attr:`kernel_size`
padding: implicit zero padding to be added on both sides
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
count_include_pad: when True, will include the zero-padding in the averaging calculation
Shape:
- Input: :math:`(N, C, L_{in})` or :math:`(C, L_{in})`.
- Output: :math:`(N, C, L_{out})` or :math:`(C, L_{out})`, where
.. math::
L_{out} = \left\lfloor \frac{L_{in} +
2 \times \text{padding} - \text{kernel\_size}}{\text{stride}} + 1\right\rfloor
Per the note above, if ``ceil_mode`` is True and :math:`(L_{out} - 1) \times \text{stride} \geq L_{in}
+ \text{padding}`, we skip the last window as it would start in the right padded region, resulting in
:math:`L_{out}` being reduced by one.
Examples::
>>> # pool with window of size=3, stride=2
>>> m = nn.AvgPool1d(3, stride=2)
>>> m(torch.tensor([[[1., 2, 3, 4, 5, 6, 7]]]))
tensor([[[2., 4., 6.]]])
"""
kernel_size: _size_1_t
stride: _size_1_t
padding: _size_1_t
ceil_mode: bool
count_include_pad: bool
def __init__(self, kernel_size: _size_1_t, stride: _size_1_t = None, padding: _size_1_t = 0, ceil_mode: bool = False,
count_include_pad: bool = True) -> None:
super().__init__()
self.kernel_size = _single(kernel_size)
self.stride = _single(stride if stride is not None else kernel_size)
self.padding = _single(padding)
self.ceil_mode = ceil_mode
self.count_include_pad = count_include_pad
def forward(self, input: Tensor) -> Tensor:
return F.avg_pool1d(
input, self.kernel_size, self.stride, self.padding, self.ceil_mode,
self.count_include_pad)
[docs]class AvgPool2d(_AvgPoolNd):
r"""Applies a 2D average pooling over an input signal composed of several input planes.
In the simplest case, the output value of the layer with input size :math:`(N, C, H, W)`,
output :math:`(N, C, H_{out}, W_{out})` and :attr:`kernel_size` :math:`(kH, kW)`
can be precisely described as:
.. math::
out(N_i, C_j, h, w) = \frac{1}{kH * kW} \sum_{m=0}^{kH-1} \sum_{n=0}^{kW-1}
input(N_i, C_j, stride[0] \times h + m, stride[1] \times w + n)
If :attr:`padding` is non-zero, then the input is implicitly zero-padded on both sides
for :attr:`padding` number of points.
Note:
When ceil_mode=True, sliding windows are allowed to go off-bounds if they start within the left padding
or the input. Sliding windows that would start in the right padded region are ignored.
The parameters :attr:`kernel_size`, :attr:`stride`, :attr:`padding` can either be:
- a single ``int`` -- in which case the same value is used for the height and width dimension
- a ``tuple`` of two ints -- in which case, the first `int` is used for the height dimension,
and the second `int` for the width dimension
Args:
kernel_size: the size of the window
stride: the stride of the window. Default value is :attr:`kernel_size`
padding: implicit zero padding to be added on both sides
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
count_include_pad: when True, will include the zero-padding in the averaging calculation
divisor_override: if specified, it will be used as divisor, otherwise size of the pooling region will be used.
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`.
- Output: :math:`(N, C, H_{out}, W_{out})` or :math:`(C, H_{out}, W_{out})`, where
.. math::
H_{out} = \left\lfloor\frac{H_{in} + 2 \times \text{padding}[0] -
\text{kernel\_size}[0]}{\text{stride}[0]} + 1\right\rfloor
.. math::
W_{out} = \left\lfloor\frac{W_{in} + 2 \times \text{padding}[1] -
\text{kernel\_size}[1]}{\text{stride}[1]} + 1\right\rfloor
Per the note above, if ``ceil_mode`` is True and :math:`(H_{out} - 1)\times \text{stride}[0]\geq H_{in}
+ \text{padding}[0]`, we skip the last window as it would start in the bottom padded region,
resulting in :math:`H_{out}` being reduced by one.
The same applies for :math:`W_{out}`.
Examples::
>>> # pool of square window of size=3, stride=2
>>> m = nn.AvgPool2d(3, stride=2)
>>> # pool of non-square window
>>> m = nn.AvgPool2d((3, 2), stride=(2, 1))
>>> input = torch.randn(20, 16, 50, 32)
>>> output = m(input)
"""
__constants__ = ['kernel_size', 'stride', 'padding', 'ceil_mode', 'count_include_pad', 'divisor_override']
kernel_size: _size_2_t
stride: _size_2_t
padding: _size_2_t
ceil_mode: bool
count_include_pad: bool
def __init__(self, kernel_size: _size_2_t, stride: Optional[_size_2_t] = None, padding: _size_2_t = 0,
ceil_mode: bool = False, count_include_pad: bool = True, divisor_override: Optional[int] = None) -> None:
super().__init__()
self.kernel_size = kernel_size
self.stride = stride if (stride is not None) else kernel_size
self.padding = padding
self.ceil_mode = ceil_mode
self.count_include_pad = count_include_pad
self.divisor_override = divisor_override
def forward(self, input: Tensor) -> Tensor:
return F.avg_pool2d(input, self.kernel_size, self.stride,
self.padding, self.ceil_mode, self.count_include_pad, self.divisor_override)
[docs]class AvgPool3d(_AvgPoolNd):
r"""Applies a 3D average pooling over an input signal composed of several input planes.
In the simplest case, the output value of the layer with input size :math:`(N, C, D, H, W)`,
output :math:`(N, C, D_{out}, H_{out}, W_{out})` and :attr:`kernel_size` :math:`(kD, kH, kW)`
can be precisely described as:
.. math::
\begin{aligned}
\text{out}(N_i, C_j, d, h, w) ={} & \sum_{k=0}^{kD-1} \sum_{m=0}^{kH-1} \sum_{n=0}^{kW-1} \\
& \frac{\text{input}(N_i, C_j, \text{stride}[0] \times d + k,
\text{stride}[1] \times h + m, \text{stride}[2] \times w + n)}
{kD \times kH \times kW}
\end{aligned}
If :attr:`padding` is non-zero, then the input is implicitly zero-padded on all three sides
for :attr:`padding` number of points.
Note:
When ceil_mode=True, sliding windows are allowed to go off-bounds if they start within the left padding
or the input. Sliding windows that would start in the right padded region are ignored.
The parameters :attr:`kernel_size`, :attr:`stride` can either be:
- a single ``int`` -- in which case the same value is used for the depth, height and width dimension
- a ``tuple`` of three ints -- in which case, the first `int` is used for the depth dimension,
the second `int` for the height dimension and the third `int` for the width dimension
Args:
kernel_size: the size of the window
stride: the stride of the window. Default value is :attr:`kernel_size`
padding: implicit zero padding to be added on all three sides
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
count_include_pad: when True, will include the zero-padding in the averaging calculation
divisor_override: if specified, it will be used as divisor, otherwise :attr:`kernel_size` will be used
Shape:
- Input: :math:`(N, C, D_{in}, H_{in}, W_{in})` or :math:`(C, D_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, D_{out}, H_{out}, W_{out})` or
:math:`(C, D_{out}, H_{out}, W_{out})`, where
.. math::
D_{out} = \left\lfloor\frac{D_{in} + 2 \times \text{padding}[0] -
\text{kernel\_size}[0]}{\text{stride}[0]} + 1\right\rfloor
.. math::
H_{out} = \left\lfloor\frac{H_{in} + 2 \times \text{padding}[1] -
\text{kernel\_size}[1]}{\text{stride}[1]} + 1\right\rfloor
.. math::
W_{out} = \left\lfloor\frac{W_{in} + 2 \times \text{padding}[2] -
\text{kernel\_size}[2]}{\text{stride}[2]} + 1\right\rfloor
Per the note above, if ``ceil_mode`` is True and :math:`(D_{out} - 1)\times \text{stride}[0]\geq D_{in}
+ \text{padding}[0]`, we skip the last window as it would start in the padded region,
resulting in :math:`D_{out}` being reduced by one.
The same applies for :math:`W_{out}` and :math:`H_{out}`.
Examples::
>>> # pool of square window of size=3, stride=2
>>> m = nn.AvgPool3d(3, stride=2)
>>> # pool of non-square window
>>> m = nn.AvgPool3d((3, 2, 2), stride=(2, 1, 2))
>>> input = torch.randn(20, 16, 50, 44, 31)
>>> output = m(input)
"""
__constants__ = ['kernel_size', 'stride', 'padding', 'ceil_mode', 'count_include_pad', 'divisor_override']
kernel_size: _size_3_t
stride: _size_3_t
padding: _size_3_t
ceil_mode: bool
count_include_pad: bool
def __init__(self, kernel_size: _size_3_t, stride: Optional[_size_3_t] = None, padding: _size_3_t = 0,
ceil_mode: bool = False, count_include_pad: bool = True, divisor_override: Optional[int] = None) -> None:
super().__init__()
self.kernel_size = kernel_size
self.stride = stride if (stride is not None) else kernel_size
self.padding = padding
self.ceil_mode = ceil_mode
self.count_include_pad = count_include_pad
self.divisor_override = divisor_override
def forward(self, input: Tensor) -> Tensor:
return F.avg_pool3d(input, self.kernel_size, self.stride,
self.padding, self.ceil_mode, self.count_include_pad, self.divisor_override)
def __setstate__(self, d):
super().__setstate__(d)
self.__dict__.setdefault('padding', 0)
self.__dict__.setdefault('ceil_mode', False)
self.__dict__.setdefault('count_include_pad', True)
[docs]class FractionalMaxPool2d(Module):
r"""Applies a 2D fractional max pooling over an input signal composed of several input planes.
Fractional MaxPooling is described in detail in the paper `Fractional MaxPooling`_ by Ben Graham
The max-pooling operation is applied in :math:`kH \times kW` regions by a stochastic
step size determined by the target output size.
The number of output features is equal to the number of input planes.
.. note:: Exactly one of ``output_size`` or ``output_ratio`` must be defined.
Args:
kernel_size: the size of the window to take a max over.
Can be a single number k (for a square kernel of k x k) or a tuple `(kh, kw)`
output_size: the target output size of the image of the form `oH x oW`.
Can be a tuple `(oH, oW)` or a single number oH for a square image `oH x oH`.
Note that we must have :math:`kH + oH - 1 <= H_{in}` and :math:`kW + oW - 1 <= W_{in}`
output_ratio: If one wants to have an output size as a ratio of the input size, this option can be given.
This has to be a number or tuple in the range (0, 1).
Note that we must have :math:`kH + (output\_ratio\_H * H_{in}) - 1 <= H_{in}`
and :math:`kW + (output\_ratio\_W * W_{in}) - 1 <= W_{in}`
return_indices: if ``True``, will return the indices along with the outputs.
Useful to pass to :meth:`nn.MaxUnpool2d`. Default: ``False``
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`.
- Output: :math:`(N, C, H_{out}, W_{out})` or :math:`(C, H_{out}, W_{out})`, where
:math:`(H_{out}, W_{out})=\text{output\_size}` or
:math:`(H_{out}, W_{out})=\text{output\_ratio} \times (H_{in}, W_{in})`.
Examples:
>>> # pool of square window of size=3, and target output size 13x12
>>> m = nn.FractionalMaxPool2d(3, output_size=(13, 12))
>>> # pool of square window and target output size being half of input image size
>>> m = nn.FractionalMaxPool2d(3, output_ratio=(0.5, 0.5))
>>> input = torch.randn(20, 16, 50, 32)
>>> output = m(input)
.. _Fractional MaxPooling:
https://arxiv.org/abs/1412.6071
"""
__constants__ = ['kernel_size', 'return_indices', 'output_size',
'output_ratio']
kernel_size: _size_2_t
return_indices: bool
output_size: _size_2_t
output_ratio: _ratio_2_t
def __init__(self, kernel_size: _size_2_t, output_size: Optional[_size_2_t] = None,
output_ratio: Optional[_ratio_2_t] = None,
return_indices: bool = False, _random_samples=None) -> None:
super().__init__()
self.kernel_size = _pair(kernel_size)
self.return_indices = return_indices
self.register_buffer('_random_samples', _random_samples)
self.output_size = _pair(output_size) if output_size is not None else None
self.output_ratio = _pair(output_ratio) if output_ratio is not None else None
if output_size is None and output_ratio is None:
raise ValueError("FractionalMaxPool2d requires specifying either "
"an output size, or a pooling ratio")
if output_size is not None and output_ratio is not None:
raise ValueError("only one of output_size and output_ratio may be specified")
if self.output_ratio is not None:
if not (0 < self.output_ratio[0] < 1 and 0 < self.output_ratio[1] < 1):
raise ValueError(f"output_ratio must be between 0 and 1 (got {output_ratio})")
def forward(self, input: Tensor):
return F.fractional_max_pool2d(
input, self.kernel_size, self.output_size, self.output_ratio,
self.return_indices,
_random_samples=self._random_samples)
[docs]class FractionalMaxPool3d(Module):
r"""Applies a 3D fractional max pooling over an input signal composed of several input planes.
Fractional MaxPooling is described in detail in the paper `Fractional MaxPooling`_ by Ben Graham
The max-pooling operation is applied in :math:`kT \times kH \times kW` regions by a stochastic
step size determined by the target output size.
The number of output features is equal to the number of input planes.
.. note:: Exactly one of ``output_size`` or ``output_ratio`` must be defined.
Args:
kernel_size: the size of the window to take a max over.
Can be a single number k (for a square kernel of k x k x k) or a tuple `(kt x kh x kw)`
output_size: the target output size of the image of the form `oT x oH x oW`.
Can be a tuple `(oT, oH, oW)` or a single number oH for a square image `oH x oH x oH`
output_ratio: If one wants to have an output size as a ratio of the input size, this option can be given.
This has to be a number or tuple in the range (0, 1)
return_indices: if ``True``, will return the indices along with the outputs.
Useful to pass to :meth:`nn.MaxUnpool3d`. Default: ``False``
Shape:
- Input: :math:`(N, C, T_{in}, H_{in}, W_{in})` or :math:`(C, T_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, T_{out}, H_{out}, W_{out})` or :math:`(C, T_{out}, H_{out}, W_{out})`, where
:math:`(T_{out}, H_{out}, W_{out})=\text{output\_size}` or
:math:`(T_{out}, H_{out}, W_{out})=\text{output\_ratio} \times (T_{in}, H_{in}, W_{in})`
Examples:
>>> # pool of cubic window of size=3, and target output size 13x12x11
>>> m = nn.FractionalMaxPool3d(3, output_size=(13, 12, 11))
>>> # pool of cubic window and target output size being half of input size
>>> m = nn.FractionalMaxPool3d(3, output_ratio=(0.5, 0.5, 0.5))
>>> input = torch.randn(20, 16, 50, 32, 16)
>>> output = m(input)
.. _Fractional MaxPooling:
https://arxiv.org/abs/1412.6071
"""
__constants__ = ['kernel_size', 'return_indices', 'output_size',
'output_ratio']
kernel_size: _size_3_t
return_indices: bool
output_size: _size_3_t
output_ratio: _ratio_3_t
def __init__(self, kernel_size: _size_3_t, output_size: Optional[_size_3_t] = None,
output_ratio: Optional[_ratio_3_t] = None,
return_indices: bool = False, _random_samples=None) -> None:
super().__init__()
self.kernel_size = _triple(kernel_size)
self.return_indices = return_indices
self.register_buffer('_random_samples', _random_samples)
self.output_size = _triple(output_size) if output_size is not None else None
self.output_ratio = _triple(output_ratio) if output_ratio is not None else None
if output_size is None and output_ratio is None:
raise ValueError("FractionalMaxPool3d requires specifying either "
"an output size, or a pooling ratio")
if output_size is not None and output_ratio is not None:
raise ValueError("only one of output_size and output_ratio may be specified")
if self.output_ratio is not None:
if not (0 < self.output_ratio[0] < 1 and 0 < self.output_ratio[1] < 1 and 0 < self.output_ratio[2] < 1):
raise ValueError(f"output_ratio must be between 0 and 1 (got {output_ratio})")
def forward(self, input: Tensor):
return F.fractional_max_pool3d(
input, self.kernel_size, self.output_size, self.output_ratio,
self.return_indices,
_random_samples=self._random_samples)
class _LPPoolNd(Module):
__constants__ = ['norm_type', 'kernel_size', 'stride', 'ceil_mode']
norm_type: float
ceil_mode: bool
def __init__(self, norm_type: float, kernel_size: _size_any_t, stride: Optional[_size_any_t] = None,
ceil_mode: bool = False) -> None:
super().__init__()
self.norm_type = norm_type
self.kernel_size = kernel_size
self.stride = stride
self.ceil_mode = ceil_mode
def extra_repr(self) -> str:
return 'norm_type={norm_type}, kernel_size={kernel_size}, stride={stride}, ' \
'ceil_mode={ceil_mode}'.format(**self.__dict__)
[docs]class LPPool1d(_LPPoolNd):
r"""Applies a 1D power-average pooling over an input signal composed of several input planes.
On each window, the function computed is:
.. math::
f(X) = \sqrt[p]{\sum_{x \in X} x^{p}}
- At p = :math:`\infty`, one gets Max Pooling
- At p = 1, one gets Sum Pooling (which is proportional to Average Pooling)
.. note:: If the sum to the power of `p` is zero, the gradient of this function is
not defined. This implementation will set the gradient to zero in this case.
Args:
kernel_size: a single int, the size of the window
stride: a single int, the stride of the window. Default value is :attr:`kernel_size`
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
Shape:
- Input: :math:`(N, C, L_{in})` or :math:`(C, L_{in})`.
- Output: :math:`(N, C, L_{out})` or :math:`(C, L_{out})`, where
.. math::
L_{out} = \left\lfloor\frac{L_{in} - \text{kernel\_size}}{\text{stride}} + 1\right\rfloor
Examples::
>>> # power-2 pool of window of length 3, with stride 2.
>>> m = nn.LPPool1d(2, 3, stride=2)
>>> input = torch.randn(20, 16, 50)
>>> output = m(input)
"""
kernel_size: _size_1_t
stride: _size_1_t
def forward(self, input: Tensor) -> Tensor:
return F.lp_pool1d(input, float(self.norm_type), self.kernel_size,
self.stride, self.ceil_mode)
[docs]class LPPool2d(_LPPoolNd):
r"""Applies a 2D power-average pooling over an input signal composed of several input planes.
On each window, the function computed is:
.. math::
f(X) = \sqrt[p]{\sum_{x \in X} x^{p}}
- At p = :math:`\infty`, one gets Max Pooling
- At p = 1, one gets Sum Pooling (which is proportional to average pooling)
The parameters :attr:`kernel_size`, :attr:`stride` can either be:
- a single ``int`` -- in which case the same value is used for the height and width dimension
- a ``tuple`` of two ints -- in which case, the first `int` is used for the height dimension,
and the second `int` for the width dimension
.. note:: If the sum to the power of `p` is zero, the gradient of this function is
not defined. This implementation will set the gradient to zero in this case.
Args:
kernel_size: the size of the window
stride: the stride of the window. Default value is :attr:`kernel_size`
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`.
- Output: :math:`(N, C, H_{out}, W_{out})` or :math:`(C, H_{out}, W_{out})`, where
.. math::
H_{out} = \left\lfloor\frac{H_{in} - \text{kernel\_size}[0]}{\text{stride}[0]} + 1\right\rfloor
.. math::
W_{out} = \left\lfloor\frac{W_{in} - \text{kernel\_size}[1]}{\text{stride}[1]} + 1\right\rfloor
Examples::
>>> # power-2 pool of square window of size=3, stride=2
>>> m = nn.LPPool2d(2, 3, stride=2)
>>> # pool of non-square window of power 1.2
>>> m = nn.LPPool2d(1.2, (3, 2), stride=(2, 1))
>>> input = torch.randn(20, 16, 50, 32)
>>> output = m(input)
"""
kernel_size: _size_2_t
stride: _size_2_t
def forward(self, input: Tensor) -> Tensor:
return F.lp_pool2d(input, float(self.norm_type), self.kernel_size,
self.stride, self.ceil_mode)
[docs]class LPPool3d(_LPPoolNd):
r"""Applies a 3D power-average pooling over an input signal composed of several input planes.
On each window, the function computed is:
.. math::
f(X) = \sqrt[p]{\sum_{x \in X} x^{p}}
- At p = :math:`\infty`, one gets Max Pooling
- At p = 1, one gets Sum Pooling (which is proportional to average pooling)
The parameters :attr:`kernel_size`, :attr:`stride` can either be:
- a single ``int`` -- in which case the same value is used for the height, width and depth dimension
- a ``tuple`` of three ints -- in which case, the first `int` is used for the depth dimension,
the second `int` for the height dimension and the third `int` for the width dimension
.. note:: If the sum to the power of `p` is zero, the gradient of this function is
not defined. This implementation will set the gradient to zero in this case.
Args:
kernel_size: the size of the window
stride: the stride of the window. Default value is :attr:`kernel_size`
ceil_mode: when True, will use `ceil` instead of `floor` to compute the output shape
Shape:
- Input: :math:`(N, C, D_{in}, H_{in}, W_{in})` or :math:`(C, D_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, D_{out}, H_{out}, W_{out})` or
:math:`(C, D_{out}, H_{out}, W_{out})`, where
.. math::
D_{out} = \left\lfloor\frac{D_{in} - \text{kernel\_size}[0]}{\text{stride}[0]} + 1\right\rfloor
.. math::
H_{out} = \left\lfloor\frac{H_{in} - \text{kernel\_size}[1]}{\text{stride}[1]} + 1\right\rfloor
.. math::
W_{out} = \left\lfloor\frac{W_{in} - \text{kernel\_size}[2]}{\text{stride}[2]} + 1\right\rfloor
Examples::
>>> # power-2 pool of square window of size=3, stride=2
>>> m = nn.LPPool3d(2, 3, stride=2)
>>> # pool of non-square window of power 1.2
>>> m = nn.LPPool3d(1.2, (3, 2, 2), stride=(2, 1, 2))
>>> input = torch.randn(20, 16, 50, 44, 31)
>>> output = m(input)
"""
kernel_size: _size_3_t
stride: _size_3_t
def forward(self, input: Tensor) -> Tensor:
return F.lp_pool3d(input, float(self.norm_type), self.kernel_size,
self.stride, self.ceil_mode)
class _AdaptiveMaxPoolNd(Module):
__constants__ = ['output_size', 'return_indices']
return_indices: bool
def __init__(self, output_size: _size_any_opt_t, return_indices: bool = False) -> None:
super().__init__()
self.output_size = output_size
self.return_indices = return_indices
def extra_repr(self) -> str:
return f'output_size={self.output_size}'
# FIXME (by @ssnl): Improve adaptive pooling docs: specify what the input and
# output shapes are, and how the operation computes output.
[docs]class AdaptiveMaxPool1d(_AdaptiveMaxPoolNd):
r"""Applies a 1D adaptive max pooling over an input signal composed of several input planes.
The output size is :math:`L_{out}`, for any input size.
The number of output features is equal to the number of input planes.
Args:
output_size: the target output size :math:`L_{out}`.
return_indices: if ``True``, will return the indices along with the outputs.
Useful to pass to nn.MaxUnpool1d. Default: ``False``
Shape:
- Input: :math:`(N, C, L_{in})` or :math:`(C, L_{in})`.
- Output: :math:`(N, C, L_{out})` or :math:`(C, L_{out})`, where
:math:`L_{out}=\text{output\_size}`.
Examples:
>>> # target output size of 5
>>> m = nn.AdaptiveMaxPool1d(5)
>>> input = torch.randn(1, 64, 8)
>>> output = m(input)
"""
output_size: _size_1_t
def forward(self, input: Tensor):
return F.adaptive_max_pool1d(input, self.output_size, self.return_indices)
[docs]class AdaptiveMaxPool2d(_AdaptiveMaxPoolNd):
r"""Applies a 2D adaptive max pooling over an input signal composed of several input planes.
The output is of size :math:`H_{out} \times W_{out}`, for any input size.
The number of output features is equal to the number of input planes.
Args:
output_size: the target output size of the image of the form :math:`H_{out} \times W_{out}`.
Can be a tuple :math:`(H_{out}, W_{out})` or a single :math:`H_{out}` for a
square image :math:`H_{out} \times H_{out}`. :math:`H_{out}` and :math:`W_{out}`
can be either a ``int``, or ``None`` which means the size will be the same as that
of the input.
return_indices: if ``True``, will return the indices along with the outputs.
Useful to pass to nn.MaxUnpool2d. Default: ``False``
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`.
- Output: :math:`(N, C, H_{out}, W_{out})` or :math:`(C, H_{out}, W_{out})`, where
:math:`(H_{out}, W_{out})=\text{output\_size}`.
Examples:
>>> # target output size of 5x7
>>> m = nn.AdaptiveMaxPool2d((5, 7))
>>> input = torch.randn(1, 64, 8, 9)
>>> output = m(input)
>>> # target output size of 7x7 (square)
>>> m = nn.AdaptiveMaxPool2d(7)
>>> input = torch.randn(1, 64, 10, 9)
>>> output = m(input)
>>> # target output size of 10x7
>>> m = nn.AdaptiveMaxPool2d((None, 7))
>>> input = torch.randn(1, 64, 10, 9)
>>> output = m(input)
"""
output_size: _size_2_opt_t
def forward(self, input: Tensor):
return F.adaptive_max_pool2d(input, self.output_size, self.return_indices)
[docs]class AdaptiveMaxPool3d(_AdaptiveMaxPoolNd):
r"""Applies a 3D adaptive max pooling over an input signal composed of several input planes.
The output is of size :math:`D_{out} \times H_{out} \times W_{out}`, for any input size.
The number of output features is equal to the number of input planes.
Args:
output_size: the target output size of the image of the form :math:`D_{out} \times H_{out} \times W_{out}`.
Can be a tuple :math:`(D_{out}, H_{out}, W_{out})` or a single
:math:`D_{out}` for a cube :math:`D_{out} \times D_{out} \times D_{out}`.
:math:`D_{out}`, :math:`H_{out}` and :math:`W_{out}` can be either a
``int``, or ``None`` which means the size will be the same as that of the input.
return_indices: if ``True``, will return the indices along with the outputs.
Useful to pass to nn.MaxUnpool3d. Default: ``False``
Shape:
- Input: :math:`(N, C, D_{in}, H_{in}, W_{in})` or :math:`(C, D_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, D_{out}, H_{out}, W_{out})` or :math:`(C, D_{out}, H_{out}, W_{out})`,
where :math:`(D_{out}, H_{out}, W_{out})=\text{output\_size}`.
Examples:
>>> # target output size of 5x7x9
>>> m = nn.AdaptiveMaxPool3d((5, 7, 9))
>>> input = torch.randn(1, 64, 8, 9, 10)
>>> output = m(input)
>>> # target output size of 7x7x7 (cube)
>>> m = nn.AdaptiveMaxPool3d(7)
>>> input = torch.randn(1, 64, 10, 9, 8)
>>> output = m(input)
>>> # target output size of 7x9x8
>>> m = nn.AdaptiveMaxPool3d((7, None, None))
>>> input = torch.randn(1, 64, 10, 9, 8)
>>> output = m(input)
"""
output_size: _size_3_opt_t
def forward(self, input: Tensor):
return F.adaptive_max_pool3d(input, self.output_size, self.return_indices)
class _AdaptiveAvgPoolNd(Module):
__constants__ = ['output_size']
def __init__(self, output_size: _size_any_opt_t) -> None:
super().__init__()
self.output_size = output_size
def extra_repr(self) -> str:
return f'output_size={self.output_size}'
[docs]class AdaptiveAvgPool1d(_AdaptiveAvgPoolNd):
r"""Applies a 1D adaptive average pooling over an input signal composed of several input planes.
The output size is :math:`L_{out}`, for any input size.
The number of output features is equal to the number of input planes.
Args:
output_size: the target output size :math:`L_{out}`.
Shape:
- Input: :math:`(N, C, L_{in})` or :math:`(C, L_{in})`.
- Output: :math:`(N, C, L_{out})` or :math:`(C, L_{out})`, where
:math:`L_{out}=\text{output\_size}`.
Examples:
>>> # target output size of 5
>>> m = nn.AdaptiveAvgPool1d(5)
>>> input = torch.randn(1, 64, 8)
>>> output = m(input)
"""
output_size: _size_1_t
def forward(self, input: Tensor) -> Tensor:
return F.adaptive_avg_pool1d(input, self.output_size)
[docs]class AdaptiveAvgPool2d(_AdaptiveAvgPoolNd):
r"""Applies a 2D adaptive average pooling over an input signal composed of several input planes.
The output is of size H x W, for any input size.
The number of output features is equal to the number of input planes.
Args:
output_size: the target output size of the image of the form H x W.
Can be a tuple (H, W) or a single H for a square image H x H.
H and W can be either a ``int``, or ``None`` which means the size will
be the same as that of the input.
Shape:
- Input: :math:`(N, C, H_{in}, W_{in})` or :math:`(C, H_{in}, W_{in})`.
- Output: :math:`(N, C, S_{0}, S_{1})` or :math:`(C, S_{0}, S_{1})`, where
:math:`S=\text{output\_size}`.
Examples:
>>> # target output size of 5x7
>>> m = nn.AdaptiveAvgPool2d((5, 7))
>>> input = torch.randn(1, 64, 8, 9)
>>> output = m(input)
>>> # target output size of 7x7 (square)
>>> m = nn.AdaptiveAvgPool2d(7)
>>> input = torch.randn(1, 64, 10, 9)
>>> output = m(input)
>>> # target output size of 10x7
>>> m = nn.AdaptiveAvgPool2d((None, 7))
>>> input = torch.randn(1, 64, 10, 9)
>>> output = m(input)
"""
output_size: _size_2_opt_t
def forward(self, input: Tensor) -> Tensor:
return F.adaptive_avg_pool2d(input, self.output_size)
[docs]class AdaptiveAvgPool3d(_AdaptiveAvgPoolNd):
r"""Applies a 3D adaptive average pooling over an input signal composed of several input planes.
The output is of size D x H x W, for any input size.
The number of output features is equal to the number of input planes.
Args:
output_size: the target output size of the form D x H x W.
Can be a tuple (D, H, W) or a single number D for a cube D x D x D.
D, H and W can be either a ``int``, or ``None`` which means the size will
be the same as that of the input.
Shape:
- Input: :math:`(N, C, D_{in}, H_{in}, W_{in})` or :math:`(C, D_{in}, H_{in}, W_{in})`.
- Output: :math:`(N, C, S_{0}, S_{1}, S_{2})` or :math:`(C, S_{0}, S_{1}, S_{2})`,
where :math:`S=\text{output\_size}`.
Examples:
>>> # target output size of 5x7x9
>>> m = nn.AdaptiveAvgPool3d((5, 7, 9))
>>> input = torch.randn(1, 64, 8, 9, 10)
>>> output = m(input)
>>> # target output size of 7x7x7 (cube)
>>> m = nn.AdaptiveAvgPool3d(7)
>>> input = torch.randn(1, 64, 10, 9, 8)
>>> output = m(input)
>>> # target output size of 7x9x8
>>> m = nn.AdaptiveAvgPool3d((7, None, None))
>>> input = torch.randn(1, 64, 10, 9, 8)
>>> output = m(input)
"""
output_size: _size_3_opt_t
def forward(self, input: Tensor) -> Tensor:
return F.adaptive_avg_pool3d(input, self.output_size)