Source code for mxnet.gluon.nn.conv_layers
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# coding: utf-8
# pylint: disable= arguments-differ, too-many-lines
"""Convolutional neural network layers."""
__all__ = ['Conv1D', 'Conv2D', 'Conv3D',
'Conv1DTranspose', 'Conv2DTranspose', 'Conv3DTranspose',
'MaxPool1D', 'MaxPool2D', 'MaxPool3D',
'AvgPool1D', 'AvgPool2D', 'AvgPool3D',
'GlobalMaxPool1D', 'GlobalMaxPool2D', 'GlobalMaxPool3D',
'GlobalAvgPool1D', 'GlobalAvgPool2D', 'GlobalAvgPool3D',
'ReflectionPad2D']
from ..block import HybridBlock
from ... import symbol
from ...base import numeric_types
from .activations import Activation
from ...util import is_np_array
def _infer_weight_shape(op_name, data_shape, kwargs):
data = symbol.var('data', shape=data_shape)
if is_np_array():
op = getattr(symbol.npx, op_name)
data = data.as_np_ndarray()
else:
op = getattr(symbol, op_name)
sym = op(data, **kwargs)
return sym.infer_shape_partial()[0]
class _Conv(HybridBlock):
"""Abstract nD convolution layer (private, used as implementation base).
This layer creates a convolution kernel that is convolved
with the layer input to produce a tensor of outputs.
If `use_bias` is `True`, a bias vector is created and added to the outputs.
Finally, if `activation` is not `None`,
it is applied to the outputs as well.
Parameters
----------
channels : int
The dimensionality of the output space
i.e. the number of output channels in the convolution.
kernel_size : int or tuple/list of n ints
Specifies the dimensions of the convolution window.
strides: int or tuple/list of n ints,
Specifies the strides of the convolution.
padding : int or tuple/list of n ints,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
dilation: int or tuple/list of n ints,
Specifies the dilation rate to use for dilated convolution.
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two convolution
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout : str,
Dimension ordering of data and weight. Can be 'NCW', 'NWC', 'NCHW',
'NHWC', 'NCDHW', 'NDHWC', etc. 'N', 'C', 'H', 'W', 'D' stands for
batch, channel, height, width and depth dimensions respectively.
Convolution is performed over 'D', 'H', and 'W' dimensions.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias: bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer: str or `Initializer`
Initializer for the bias vector.
"""
def __init__(self, channels, kernel_size, strides, padding, dilation,
groups, layout, in_channels=0, activation=None, use_bias=True,
weight_initializer=None, bias_initializer='zeros',
op_name='Convolution', adj=None, prefix=None, params=None):
super(_Conv, self).__init__(prefix=prefix, params=params)
with self.name_scope():
self._channels = channels
self._in_channels = in_channels
if isinstance(strides, numeric_types):
strides = (strides,)*len(kernel_size)
if isinstance(padding, numeric_types):
padding = (padding,)*len(kernel_size)
if isinstance(dilation, numeric_types):
dilation = (dilation,)*len(kernel_size)
self._op_name = op_name
self._kwargs = {
'kernel': kernel_size, 'stride': strides, 'dilate': dilation,
'pad': padding, 'num_filter': channels, 'num_group': groups,
'no_bias': not use_bias, 'layout': layout}
if adj is not None:
self._kwargs['adj'] = adj
if is_np_array():
dshape = [-1]*(len(kernel_size) + 2)
else:
dshape = [0]*(len(kernel_size) + 2)
dshape[layout.find('N')] = 1
dshape[layout.find('C')] = in_channels
wshapes = _infer_weight_shape(op_name, dshape, self._kwargs)
self.weight = self.params.get('weight', shape=wshapes[1],
init=weight_initializer,
allow_deferred_init=True)
if use_bias:
self.bias = self.params.get('bias', shape=wshapes[2],
init=bias_initializer,
allow_deferred_init=True)
else:
self.bias = None
if activation is not None:
self.act = Activation(activation, prefix=activation+'_')
else:
self.act = None
def hybrid_forward(self, F, x, weight, bias=None):
if is_np_array():
F = F.npx
if bias is None:
act = getattr(F, self._op_name)(x, weight, name='fwd', **self._kwargs)
else:
act = getattr(F, self._op_name)(x, weight, bias, name='fwd', **self._kwargs)
if self.act is not None:
act = self.act(act)
return act
def _alias(self):
return 'conv'
def __repr__(self):
s = '{name}({mapping}, kernel_size={kernel}, stride={stride}'
len_kernel_size = len(self._kwargs['kernel'])
if self._kwargs['pad'] != (0,) * len_kernel_size:
s += ', padding={pad}'
if self._kwargs['dilate'] != (1,) * len_kernel_size:
s += ', dilation={dilate}'
if hasattr(self, 'out_pad') and self.out_pad != (0,) * len_kernel_size:
s += ', output_padding={out_pad}'.format(out_pad=self.out_pad)
if self._kwargs['num_group'] != 1:
s += ', groups={num_group}'
if self.bias is None:
s += ', bias=False'
if self.act:
s += ', {}'.format(self.act)
s += ')'
shape = self.weight.shape
return s.format(name=self.__class__.__name__,
mapping='{0} -> {1}'.format(shape[1] if shape[1] else None, shape[0]),
**self._kwargs)
[docs]class Conv1D(_Conv):
r"""1D convolution layer (e.g. temporal convolution).
This layer creates a convolution kernel that is convolved
with the layer input over a single spatial (or temporal) dimension
to produce a tensor of outputs.
If `use_bias` is True, a bias vector is created and added to the outputs.
Finally, if `activation` is not `None`,
it is applied to the outputs as well.
If `in_channels` is not specified, `Parameter` initialization will be
deferred to the first time `forward` is called and `in_channels` will be
inferred from the shape of input data.
Parameters
----------
channels : int
The dimensionality of the output space, i.e. the number of output
channels (filters) in the convolution.
kernel_size :int or tuple/list of 1 int
Specifies the dimensions of the convolution window.
strides : int or tuple/list of 1 int,
Specify the strides of the convolution.
padding : int or a tuple/list of 1 int,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
dilation : int or tuple/list of 1 int
Specifies the dilation rate to use for dilated convolution.
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two conv
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout: str, default 'NCW'
Dimension ordering of data and weight. Only supports 'NCW' layout for now.
'N', 'C', 'W' stands for batch, channel, and width (time) dimensions
respectively. Convolution is applied on the 'W' dimension.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias : bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer : str or `Initializer`
Initializer for the bias vector.
Inputs:
- **data**: 3D input tensor with shape `(batch_size, in_channels, width)`
when `layout` is `NCW`. For other layouts shape is permuted accordingly.
Outputs:
- **out**: 3D output tensor with shape `(batch_size, channels, out_width)`
when `layout` is `NCW`. out_width is calculated as::
out_width = floor((width+2*padding-dilation*(kernel_size-1)-1)/stride)+1
"""
def __init__(self, channels, kernel_size, strides=1, padding=0, dilation=1,
groups=1, layout='NCW', activation=None, use_bias=True,
weight_initializer=None, bias_initializer='zeros',
in_channels=0, **kwargs):
assert layout == 'NCW', "Only supports 'NCW' layout for now"
if isinstance(kernel_size, numeric_types):
kernel_size = (kernel_size,)
assert len(kernel_size) == 1, "kernel_size must be a number or a list of 1 ints"
op_name = kwargs.pop('op_name', 'Convolution')
if is_np_array():
op_name = 'convolution'
super(Conv1D, self).__init__(
channels, kernel_size, strides, padding, dilation, groups, layout,
in_channels, activation, use_bias, weight_initializer, bias_initializer,
op_name, **kwargs)
[docs]class Conv2D(_Conv):
r"""2D convolution layer (e.g. spatial convolution over images).
This layer creates a convolution kernel that is convolved
with the layer input to produce a tensor of
outputs. If `use_bias` is True,
a bias vector is created and added to the outputs. Finally, if
`activation` is not `None`, it is applied to the outputs as well.
If `in_channels` is not specified, `Parameter` initialization will be
deferred to the first time `forward` is called and `in_channels` will be
inferred from the shape of input data.
Parameters
----------
channels : int
The dimensionality of the output space, i.e. the number of output
channels (filters) in the convolution.
kernel_size :int or tuple/list of 2 int
Specifies the dimensions of the convolution window.
strides : int or tuple/list of 2 int,
Specify the strides of the convolution.
padding : int or a tuple/list of 2 int,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
dilation : int or tuple/list of 2 int
Specifies the dilation rate to use for dilated convolution.
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two conv
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout : str, default 'NCHW'
Dimension ordering of data and weight. Only supports 'NCHW' and 'NHWC'
layout for now. 'N', 'C', 'H', 'W' stands for batch, channel, height,
and width dimensions respectively. Convolution is applied on the 'H' and
'W' dimensions.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias : bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer : str or `Initializer`
Initializer for the bias vector.
Inputs:
- **data**: 4D input tensor with shape
`(batch_size, in_channels, height, width)` when `layout` is `NCHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 4D output tensor with shape
`(batch_size, channels, out_height, out_width)` when `layout` is `NCHW`.
out_height and out_width are calculated as::
out_height = floor((height+2*padding[0]-dilation[0]*(kernel_size[0]-1)-1)/stride[0])+1
out_width = floor((width+2*padding[1]-dilation[1]*(kernel_size[1]-1)-1)/stride[1])+1
"""
def __init__(self, channels, kernel_size, strides=(1, 1), padding=(0, 0),
dilation=(1, 1), groups=1, layout='NCHW',
activation=None, use_bias=True, weight_initializer=None,
bias_initializer='zeros', in_channels=0, **kwargs):
assert layout in ('NCHW', 'NHWC'), "Only supports 'NCHW' and 'NHWC' layout for now"
if isinstance(kernel_size, numeric_types):
kernel_size = (kernel_size,)*2
assert len(kernel_size) == 2, "kernel_size must be a number or a list of 2 ints"
op_name = kwargs.pop('op_name', 'Convolution')
if is_np_array():
op_name = 'convolution'
super(Conv2D, self).__init__(
channels, kernel_size, strides, padding, dilation, groups, layout,
in_channels, activation, use_bias, weight_initializer, bias_initializer,
op_name, **kwargs)
[docs]class Conv3D(_Conv):
"""3D convolution layer (e.g. spatial convolution over volumes).
This layer creates a convolution kernel that is convolved
with the layer input to produce a tensor of
outputs. If `use_bias` is `True`,
a bias vector is created and added to the outputs. Finally, if
`activation` is not `None`, it is applied to the outputs as well.
If `in_channels` is not specified, `Parameter` initialization will be
deferred to the first time `forward` is called and `in_channels` will be
inferred from the shape of input data.
Parameters
----------
channels : int
The dimensionality of the output space, i.e. the number of output
channels (filters) in the convolution.
kernel_size :int or tuple/list of 3 int
Specifies the dimensions of the convolution window.
strides : int or tuple/list of 3 int,
Specify the strides of the convolution.
padding : int or a tuple/list of 3 int,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
dilation : int or tuple/list of 3 int
Specifies the dilation rate to use for dilated convolution.
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two conv
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout : str, default 'NCDHW'
Dimension ordering of data and weight. Only supports 'NCDHW' and 'NDHWC'
layout for now. 'N', 'C', 'H', 'W', 'D' stands for batch, channel, height,
width and depth dimensions respectively. Convolution is applied on the 'D',
'H' and 'W' dimensions.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias : bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer : str or `Initializer`
Initializer for the bias vector.
Inputs:
- **data**: 5D input tensor with shape
`(batch_size, in_channels, depth, height, width)` when `layout` is `NCDHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 5D output tensor with shape
`(batch_size, channels, out_depth, out_height, out_width)` when `layout` is `NCDHW`.
out_depth, out_height and out_width are calculated as::
out_depth = floor((depth+2*padding[0]-dilation[0]*(kernel_size[0]-1)-1)/stride[0])+1
out_height = floor((height+2*padding[1]-dilation[1]*(kernel_size[1]-1)-1)/stride[1])+1
out_width = floor((width+2*padding[2]-dilation[2]*(kernel_size[2]-1)-1)/stride[2])+1
"""
def __init__(self, channels, kernel_size, strides=(1, 1, 1), padding=(0, 0, 0),
dilation=(1, 1, 1), groups=1, layout='NCDHW', activation=None,
use_bias=True, weight_initializer=None, bias_initializer='zeros',
in_channels=0, **kwargs):
assert layout in ('NCDHW', 'NDHWC'), "Only supports 'NCDHW' and 'NDHWC' layout for now"
if isinstance(kernel_size, numeric_types):
kernel_size = (kernel_size,)*3
assert len(kernel_size) == 3, "kernel_size must be a number or a list of 3 ints"
op_name = kwargs.pop('op_name', 'Convolution')
if is_np_array():
op_name = 'convolution'
super(Conv3D, self).__init__(
channels, kernel_size, strides, padding, dilation, groups, layout,
in_channels, activation, use_bias, weight_initializer, bias_initializer,
op_name, **kwargs)
[docs]class Conv1DTranspose(_Conv):
"""Transposed 1D convolution layer (sometimes called Deconvolution).
The need for transposed convolutions generally arises
from the desire to use a transformation going in the opposite direction
of a normal convolution, i.e., from something that has the shape of the
output of some convolution to something that has the shape of its input
while maintaining a connectivity pattern that is compatible with
said convolution.
If `in_channels` is not specified, `Parameter` initialization will be
deferred to the first time `forward` is called and `in_channels` will be
inferred from the shape of input data.
Parameters
----------
channels : int
The dimensionality of the output space, i.e. the number of output
channels (filters) in the convolution.
kernel_size :int or tuple/list of 1 int
Specifies the dimensions of the convolution window.
strides : int or tuple/list of 1 int
Specify the strides of the convolution.
padding : int or a tuple/list of 1 int,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
output_padding: int or a tuple/list of 1 int
Controls the amount of implicit zero-paddings on both sides of the
output for output_padding number of points for each dimension.
dilation : int or tuple/list of 1 int
Controls the spacing between the kernel points; also known as the
a trous algorithm
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two conv
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout : str, default 'NCW'
Dimension ordering of data and weight. Only supports 'NCW' layout for now.
'N', 'C', 'W' stands for batch, channel, and width (time) dimensions
respectively. Convolution is applied on the 'W' dimension.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias : bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer : str or `Initializer`
Initializer for the bias vector.
Inputs:
- **data**: 3D input tensor with shape `(batch_size, in_channels, width)`
when `layout` is `NCW`. For other layouts shape is permuted accordingly.
Outputs:
- **out**: 3D output tensor with shape `(batch_size, channels, out_width)`
when `layout` is `NCW`. out_width is calculated as::
out_width = (width-1)*strides-2*padding+kernel_size+output_padding
"""
def __init__(self, channels, kernel_size, strides=1, padding=0, output_padding=0,
dilation=1, groups=1, layout='NCW', activation=None, use_bias=True,
weight_initializer=None, bias_initializer='zeros',
in_channels=0, **kwargs):
assert layout == 'NCW', "Only supports 'NCW' layout for now"
if isinstance(kernel_size, numeric_types):
kernel_size = (kernel_size,)
if isinstance(output_padding, numeric_types):
output_padding = (output_padding,)
assert len(kernel_size) == 1, "kernel_size must be a number or a list of 1 ints"
assert len(output_padding) == 1, "output_padding must be a number or a list of 1 ints"
op_name = kwargs.pop('op_name', 'Deconvolution')
if is_np_array():
op_name = 'deconvolution'
super(Conv1DTranspose, self).__init__(
channels, kernel_size, strides, padding, dilation, groups, layout,
in_channels, activation, use_bias, weight_initializer,
bias_initializer, op_name=op_name, adj=output_padding, **kwargs)
self.outpad = output_padding
[docs]class Conv2DTranspose(_Conv):
"""Transposed 2D convolution layer (sometimes called Deconvolution).
The need for transposed convolutions generally arises
from the desire to use a transformation going in the opposite direction
of a normal convolution, i.e., from something that has the shape of the
output of some convolution to something that has the shape of its input
while maintaining a connectivity pattern that is compatible with
said convolution.
If `in_channels` is not specified, `Parameter` initialization will be
deferred to the first time `forward` is called and `in_channels` will be
inferred from the shape of input data.
Parameters
----------
channels : int
The dimensionality of the output space, i.e. the number of output
channels (filters) in the convolution.
kernel_size :int or tuple/list of 2 int
Specifies the dimensions of the convolution window.
strides : int or tuple/list of 2 int
Specify the strides of the convolution.
padding : int or a tuple/list of 2 int,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
output_padding: int or a tuple/list of 2 int
Controls the amount of implicit zero-paddings on both sides of the
output for output_padding number of points for each dimension.
dilation : int or tuple/list of 2 int
Controls the spacing between the kernel points; also known as the
a trous algorithm
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two conv
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout : str, default 'NCHW'
Dimension ordering of data and weight. Only supports 'NCHW' and 'NHWC'
layout for now. 'N', 'C', 'H', 'W' stands for batch, channel, height,
and width dimensions respectively. Convolution is applied on the 'H' and
'W' dimensions.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias : bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer : str or `Initializer`
Initializer for the bias vector.
Inputs:
- **data**: 4D input tensor with shape
`(batch_size, in_channels, height, width)` when `layout` is `NCHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 4D output tensor with shape
`(batch_size, channels, out_height, out_width)` when `layout` is `NCHW`.
out_height and out_width are calculated as::
out_height = (height-1)*strides[0]-2*padding[0]+kernel_size[0]+output_padding[0]
out_width = (width-1)*strides[1]-2*padding[1]+kernel_size[1]+output_padding[1]
"""
def __init__(self, channels, kernel_size, strides=(1, 1), padding=(0, 0),
output_padding=(0, 0), dilation=(1, 1), groups=1, layout='NCHW',
activation=None, use_bias=True, weight_initializer=None,
bias_initializer='zeros', in_channels=0, **kwargs):
assert layout in ('NCHW', 'NHWC'), "Only supports 'NCHW' and 'NHWC' layout for now"
if isinstance(kernel_size, numeric_types):
kernel_size = (kernel_size,)*2
if isinstance(output_padding, numeric_types):
output_padding = (output_padding,)*2
assert len(kernel_size) == 2, "kernel_size must be a number or a list of 2 ints"
assert len(output_padding) == 2, "output_padding must be a number or a list of 2 ints"
op_name = kwargs.pop('op_name', 'Deconvolution')
if is_np_array():
op_name = 'deconvolution'
super(Conv2DTranspose, self).__init__(
channels, kernel_size, strides, padding, dilation, groups, layout,
in_channels, activation, use_bias, weight_initializer,
bias_initializer, op_name=op_name, adj=output_padding, **kwargs)
self.outpad = output_padding
[docs]class Conv3DTranspose(_Conv):
"""Transposed 3D convolution layer (sometimes called Deconvolution).
The need for transposed convolutions generally arises
from the desire to use a transformation going in the opposite direction
of a normal convolution, i.e., from something that has the shape of the
output of some convolution to something that has the shape of its input
while maintaining a connectivity pattern that is compatible with
said convolution.
If `in_channels` is not specified, `Parameter` initialization will be
deferred to the first time `forward` is called and `in_channels` will be
inferred from the shape of input data.
Parameters
----------
channels : int
The dimensionality of the output space, i.e. the number of output
channels (filters) in the convolution.
kernel_size :int or tuple/list of 3 int
Specifies the dimensions of the convolution window.
strides : int or tuple/list of 3 int
Specify the strides of the convolution.
padding : int or a tuple/list of 3 int,
If padding is non-zero, then the input is implicitly zero-padded
on both sides for padding number of points
output_padding: int or a tuple/list of 3 int
Controls the amount of implicit zero-paddings on both sides of the
output for output_padding number of points for each dimension.
dilation : int or tuple/list of 3 int
Controls the spacing between the kernel points; also known as the
a trous algorithm.
groups : int
Controls the connections between inputs and outputs.
At groups=1, all inputs are convolved to all outputs.
At groups=2, the operation becomes equivalent to having two conv
layers side by side, each seeing half the input channels, and producing
half the output channels, and both subsequently concatenated.
layout : str, default 'NCDHW'
Dimension ordering of data and weight. Only supports 'NCDHW' and 'NDHWC'
layout for now. 'N', 'C', 'H', 'W', 'D' stands for batch, channel, height,
width and depth dimensions respectively. Convolution is applied on the 'D',
'H' and 'W' dimensions.
in_channels : int, default 0
The number of input channels to this layer. If not specified,
initialization will be deferred to the first time `forward` is called
and `in_channels` will be inferred from the shape of input data.
activation : str
Activation function to use. See :func:`~mxnet.ndarray.Activation`.
If you don't specify anything, no activation is applied
(ie. "linear" activation: `a(x) = x`).
use_bias : bool
Whether the layer uses a bias vector.
weight_initializer : str or `Initializer`
Initializer for the `weight` weights matrix.
bias_initializer : str or `Initializer`
Initializer for the bias vector.
Inputs:
- **data**: 5D input tensor with shape
`(batch_size, in_channels, depth, height, width)` when `layout` is `NCDHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 5D output tensor with shape
`(batch_size, channels, out_depth, out_height, out_width)` when `layout` is `NCDHW`.
out_depth, out_height and out_width are calculated as::
out_depth = (depth-1)*strides[0]-2*padding[0]+kernel_size[0]+output_padding[0]
out_height = (height-1)*strides[1]-2*padding[1]+kernel_size[1]+output_padding[1]
out_width = (width-1)*strides[2]-2*padding[2]+kernel_size[2]+output_padding[2]
"""
def __init__(self, channels, kernel_size, strides=(1, 1, 1), padding=(0, 0, 0),
output_padding=(0, 0, 0), dilation=(1, 1, 1), groups=1, layout='NCDHW',
activation=None, use_bias=True, weight_initializer=None,
bias_initializer='zeros', in_channels=0, **kwargs):
assert layout in ('NCDHW', 'NDHWC'), "Only supports 'NCDHW' and 'NDHWC' layout for now"
if isinstance(kernel_size, numeric_types):
kernel_size = (kernel_size,)*3
if isinstance(output_padding, numeric_types):
output_padding = (output_padding,)*3
assert len(kernel_size) == 3, "kernel_size must be a number or a list of 3 ints"
assert len(output_padding) == 3, "output_padding must be a number or a list of 3 ints"
op_name = kwargs.pop('op_name', 'Deconvolution')
if is_np_array():
op_name = 'deconvolution'
super(Conv3DTranspose, self).__init__(
channels, kernel_size, strides, padding, dilation, groups, layout,
in_channels, activation, use_bias, weight_initializer, bias_initializer,
op_name=op_name, adj=output_padding, **kwargs)
self.outpad = output_padding
class _Pooling(HybridBlock):
"""Abstract class for different pooling layers."""
def __init__(self, pool_size, strides, padding, ceil_mode, global_pool,
pool_type, layout, count_include_pad=None, **kwargs):
super(_Pooling, self).__init__(**kwargs)
if strides is None:
strides = pool_size
if isinstance(strides, numeric_types):
strides = (strides,)*len(pool_size)
if isinstance(padding, numeric_types):
padding = (padding,)*len(pool_size)
self._kwargs = {
'kernel': pool_size, 'stride': strides, 'pad': padding,
'global_pool': global_pool, 'pool_type': pool_type,
'layout': layout,
'pooling_convention': 'full' if ceil_mode else 'valid'}
if count_include_pad is not None:
self._kwargs['count_include_pad'] = count_include_pad
def _alias(self):
return 'pool'
def hybrid_forward(self, F, x):
pooling = F.npx.pooling if is_np_array() else F.Pooling
return pooling(x, name='fwd', **self._kwargs)
def __repr__(self):
s = '{name}(size={kernel}, stride={stride}, padding={pad}, ceil_mode={ceil_mode}'
s += ', global_pool={global_pool}, pool_type={pool_type}, layout={layout})'
return s.format(name=self.__class__.__name__,
ceil_mode=self._kwargs['pooling_convention'] == 'full',
**self._kwargs)
[docs]class MaxPool1D(_Pooling):
"""Max pooling operation for one dimensional data.
Parameters
----------
pool_size: int
Size of the max pooling windows.
strides: int, or None
Factor by which to downscale. E.g. 2 will halve the input size.
If `None`, it will default to `pool_size`.
padding: int
If padding is non-zero, then the input is implicitly
zero-padded on both sides for padding number of points.
layout : str, default 'NCW'
Dimension ordering of data and out ('NCW' or 'NWC').
'N', 'C', 'W' stands for batch, channel, and width (time) dimensions
respectively. Pooling is applied on the W dimension.
ceil_mode : bool, default False
When `True`, will use ceil instead of floor to compute the output shape.
Inputs:
- **data**: 3D input tensor with shape `(batch_size, in_channels, width)`
when `layout` is `NCW`. For other layouts shape is permuted accordingly.
Outputs:
- **out**: 3D output tensor with shape `(batch_size, channels, out_width)`
when `layout` is `NCW`. out_width is calculated as::
out_width = floor((width+2*padding-pool_size)/strides)+1
When `ceil_mode` is `True`, ceil will be used instead of floor in this
equation.
"""
def __init__(self, pool_size=2, strides=None, padding=0, layout='NCW',
ceil_mode=False, **kwargs):
assert layout in ('NCW', 'NWC'),\
"Only NCW and NWC layouts are valid for 1D Pooling"
if isinstance(pool_size, numeric_types):
pool_size = (pool_size,)
assert len(pool_size) == 1, "pool_size must be a number or a list of 1 ints"
super(MaxPool1D, self).__init__(
pool_size, strides, padding, ceil_mode, False, 'max', layout, **kwargs)
[docs]class MaxPool2D(_Pooling):
"""Max pooling operation for two dimensional (spatial) data.
Parameters
----------
pool_size: int or list/tuple of 2 ints,
Size of the max pooling windows.
strides: int, list/tuple of 2 ints, or None.
Factor by which to downscale. E.g. 2 will halve the input size.
If `None`, it will default to `pool_size`.
padding: int or list/tuple of 2 ints,
If padding is non-zero, then the input is implicitly
zero-padded on both sides for padding number of points.
layout : str, default 'NCHW'
Dimension ordering of data and out ('NCHW' or 'NHWC').
'N', 'C', 'H', 'W' stands for batch, channel, height, and width
dimensions respectively. padding is applied on 'H' and 'W' dimension.
ceil_mode : bool, default False
When `True`, will use ceil instead of floor to compute the output shape.
Inputs:
- **data**: 4D input tensor with shape
`(batch_size, in_channels, height, width)` when `layout` is `NCHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 4D output tensor with shape
`(batch_size, channels, out_height, out_width)` when `layout` is `NCHW`.
out_height and out_width are calculated as::
out_height = floor((height+2*padding[0]-pool_size[0])/strides[0])+1
out_width = floor((width+2*padding[1]-pool_size[1])/strides[1])+1
When `ceil_mode` is `True`, ceil will be used instead of floor in this
equation.
"""
def __init__(self, pool_size=(2, 2), strides=None, padding=0, layout='NCHW',
ceil_mode=False, **kwargs):
assert layout in ('NCHW', 'NHWC'),\
"Only NCHW and NHWC layouts are valid for 2D Pooling"
if isinstance(pool_size, numeric_types):
pool_size = (pool_size,)*2
assert len(pool_size) == 2, "pool_size must be a number or a list of 2 ints"
super(MaxPool2D, self).__init__(
pool_size, strides, padding, ceil_mode, False, 'max', layout, **kwargs)
[docs]class MaxPool3D(_Pooling):
"""Max pooling operation for 3D data (spatial or spatio-temporal).
Parameters
----------
pool_size: int or list/tuple of 3 ints,
Size of the max pooling windows.
strides: int, list/tuple of 3 ints, or None.
Factor by which to downscale. E.g. 2 will halve the input size.
If `None`, it will default to `pool_size`.
padding: int or list/tuple of 3 ints,
If padding is non-zero, then the input is implicitly
zero-padded on both sides for padding number of points.
layout : str, default 'NCDHW'
Dimension ordering of data and out ('NCDHW' or 'NDHWC').
'N', 'C', 'H', 'W', 'D' stands for batch, channel, height, width and
depth dimensions respectively. padding is applied on 'D', 'H' and 'W'
dimension.
ceil_mode : bool, default False
When `True`, will use ceil instead of floor to compute the output shape.
Inputs:
- **data**: 5D input tensor with shape
`(batch_size, in_channels, depth, height, width)` when `layout` is `NCW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 5D output tensor with shape
`(batch_size, channels, out_depth, out_height, out_width)` when `layout` is `NCDHW`.
out_depth, out_height and out_width are calculated as::
out_depth = floor((depth+2*padding[0]-pool_size[0])/strides[0])+1
out_height = floor((height+2*padding[1]-pool_size[1])/strides[1])+1
out_width = floor((width+2*padding[2]-pool_size[2])/strides[2])+1
When `ceil_mode` is `True`, ceil will be used instead of floor in this
equation.
"""
def __init__(self, pool_size=(2, 2, 2), strides=None, padding=0,
ceil_mode=False, layout='NCDHW', **kwargs):
assert layout in ('NCDHW', 'NDHWC'),\
"Only NCDHW and NDHWC layouts are valid for 3D Pooling"
if isinstance(pool_size, numeric_types):
pool_size = (pool_size,)*3
assert len(pool_size) == 3, "pool_size must be a number or a list of 3 ints"
super(MaxPool3D, self).__init__(
pool_size, strides, padding, ceil_mode, False, 'max', layout, **kwargs)
[docs]class AvgPool1D(_Pooling):
"""Average pooling operation for temporal data.
Parameters
----------
pool_size: int
Size of the average pooling windows.
strides: int, or None
Factor by which to downscale. E.g. 2 will halve the input size.
If `None`, it will default to `pool_size`.
padding: int
If padding is non-zero, then the input is implicitly
zero-padded on both sides for padding number of points.
layout : str, default 'NCW'
Dimension ordering of data and out ('NCW' or 'NWC').
'N', 'C', 'W' stands for batch, channel, and width (time) dimensions
respectively. padding is applied on 'W' dimension.
ceil_mode : bool, default False
When `True`, will use ceil instead of floor to compute the output shape.
count_include_pad : bool, default True
When 'False', will exclude padding elements when computing the average value.
Inputs:
- **data**: 3D input tensor with shape `(batch_size, in_channels, width)`
when `layout` is `NCW`. For other layouts shape is permuted accordingly.
Outputs:
- **out**: 3D output tensor with shape `(batch_size, channels, out_width)`
when `layout` is `NCW`. out_width is calculated as::
out_width = floor((width+2*padding-pool_size)/strides)+1
When `ceil_mode` is `True`, ceil will be used instead of floor in this
equation.
"""
def __init__(self, pool_size=2, strides=None, padding=0, layout='NCW',
ceil_mode=False, count_include_pad=True, **kwargs):
assert layout in ('NCW', 'NWC'),\
"Only NCW and NWC layouts are valid for 1D Pooling"
if isinstance(pool_size, numeric_types):
pool_size = (pool_size,)
assert len(pool_size) == 1, "pool_size must be a number or a list of 1 ints"
super(AvgPool1D, self).__init__(
pool_size, strides, padding, ceil_mode, False, 'avg', layout, count_include_pad,
**kwargs)
[docs]class AvgPool2D(_Pooling):
"""Average pooling operation for spatial data.
Parameters
----------
pool_size: int or list/tuple of 2 ints,
Size of the average pooling windows.
strides: int, list/tuple of 2 ints, or None.
Factor by which to downscale. E.g. 2 will halve the input size.
If `None`, it will default to `pool_size`.
padding: int or list/tuple of 2 ints,
If padding is non-zero, then the input is implicitly
zero-padded on both sides for padding number of points.
layout : str, default 'NCHW'
Dimension ordering of data and out ('NCHW' or 'NHWC').
'N', 'C', 'H', 'W' stands for batch, channel, height, and width
dimensions respectively. padding is applied on 'H' and 'W' dimension.
ceil_mode : bool, default False
When True, will use ceil instead of floor to compute the output shape.
count_include_pad : bool, default True
When 'False', will exclude padding elements when computing the average value.
Inputs:
- **data**: 4D input tensor with shape
`(batch_size, in_channels, height, width)` when `layout` is `NCHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 4D output tensor with shape
`(batch_size, channels, out_height, out_width)` when `layout` is `NCHW`.
out_height and out_width are calculated as::
out_height = floor((height+2*padding[0]-pool_size[0])/strides[0])+1
out_width = floor((width+2*padding[1]-pool_size[1])/strides[1])+1
When `ceil_mode` is `True`, ceil will be used instead of floor in this
equation.
"""
def __init__(self, pool_size=(2, 2), strides=None, padding=0,
ceil_mode=False, layout='NCHW', count_include_pad=True, **kwargs):
assert layout in ('NCHW', 'NHWC'),\
"Only NCHW and NHWC layouts are valid for 2D Pooling"
if isinstance(pool_size, numeric_types):
pool_size = (pool_size,)*2
assert len(pool_size) == 2, "pool_size must be a number or a list of 2 ints"
super(AvgPool2D, self).__init__(
pool_size, strides, padding, ceil_mode, False, 'avg', layout, count_include_pad,
**kwargs)
[docs]class AvgPool3D(_Pooling):
"""Average pooling operation for 3D data (spatial or spatio-temporal).
Parameters
----------
pool_size: int or list/tuple of 3 ints,
Size of the average pooling windows.
strides: int, list/tuple of 3 ints, or None.
Factor by which to downscale. E.g. 2 will halve the input size.
If `None`, it will default to `pool_size`.
padding: int or list/tuple of 3 ints,
If padding is non-zero, then the input is implicitly
zero-padded on both sides for padding number of points.
layout : str, default 'NCDHW'
Dimension ordering of data and out ('NCDHW' or 'NDHWC').
'N', 'C', 'H', 'W', 'D' stands for batch, channel, height, width and
depth dimensions respectively. padding is applied on 'D', 'H' and 'W'
dimension.
ceil_mode : bool, default False
When True, will use ceil instead of floor to compute the output shape.
count_include_pad : bool, default True
When 'False', will exclude padding elements when computing the average value.
Inputs:
- **data**: 5D input tensor with shape
`(batch_size, in_channels, depth, height, width)` when `layout` is `NCDHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 5D output tensor with shape
`(batch_size, channels, out_depth, out_height, out_width)` when `layout` is `NCDHW`.
out_depth, out_height and out_width are calculated as::
out_depth = floor((depth+2*padding[0]-pool_size[0])/strides[0])+1
out_height = floor((height+2*padding[1]-pool_size[1])/strides[1])+1
out_width = floor((width+2*padding[2]-pool_size[2])/strides[2])+1
When `ceil_mode` is `True,` ceil will be used instead of floor in this
equation.
"""
def __init__(self, pool_size=(2, 2, 2), strides=None, padding=0,
ceil_mode=False, layout='NCDHW', count_include_pad=True, **kwargs):
assert layout in ('NCDHW', 'NDHWC'),\
"Only NCDHW and NDHWC layouts are valid for 3D Pooling"
if isinstance(pool_size, numeric_types):
pool_size = (pool_size,)*3
assert len(pool_size) == 3, "pool_size must be a number or a list of 3 ints"
super(AvgPool3D, self).__init__(
pool_size, strides, padding, ceil_mode, False, 'avg', layout, count_include_pad,
**kwargs)
[docs]class GlobalMaxPool1D(_Pooling):
"""Gloabl max pooling operation for one dimensional (temporal) data.
Parameters
----------
layout : str, default 'NCW'
Dimension ordering of data and out ('NCW' or 'NWC').
'N', 'C', 'W' stands for batch, channel, and width (time) dimensions
respectively. Pooling is applied on the W dimension.
Inputs:
- **data**: 3D input tensor with shape `(batch_size, in_channels, width)`
when `layout` is `NCW`. For other layouts shape is permuted accordingly.
Outputs:
- **out**: 3D output tensor with shape `(batch_size, channels, 1)`
when `layout` is `NCW`.
"""
def __init__(self, layout='NCW', **kwargs):
assert layout in ('NCW', 'NWC'),\
"Only NCW and NWC layouts are valid for 1D Pooling"
super(GlobalMaxPool1D, self).__init__(
(1,), None, 0, True, True, 'max', layout, **kwargs)
[docs]class GlobalMaxPool2D(_Pooling):
"""Global max pooling operation for two dimensional (spatial) data.
Parameters
----------
layout : str, default 'NCHW'
Dimension ordering of data and out ('NCHW' or 'NHWC').
'N', 'C', 'H', 'W' stands for batch, channel, height, and width
dimensions respectively. padding is applied on 'H' and 'W' dimension.
Inputs:
- **data**: 4D input tensor with shape
`(batch_size, in_channels, height, width)` when `layout` is `NCHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 4D output tensor with shape
`(batch_size, channels, 1, 1)` when `layout` is `NCHW`.
"""
def __init__(self, layout='NCHW', **kwargs):
assert layout in ('NCHW', 'NHWC'),\
"Only NCHW and NHWC layouts are valid for 2D Pooling"
super(GlobalMaxPool2D, self).__init__(
(1, 1), None, 0, True, True, 'max', layout, **kwargs)
[docs]class GlobalMaxPool3D(_Pooling):
"""Global max pooling operation for 3D data (spatial or spatio-temporal).
Parameters
----------
layout : str, default 'NCDHW'
Dimension ordering of data and out ('NCDHW' or 'NDHWC').
'N', 'C', 'H', 'W', 'D' stands for batch, channel, height, width and
depth dimensions respectively. padding is applied on 'D', 'H' and 'W'
dimension.
Inputs:
- **data**: 5D input tensor with shape
`(batch_size, in_channels, depth, height, width)` when `layout` is `NCW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 5D output tensor with shape
`(batch_size, channels, 1, 1, 1)` when `layout` is `NCDHW`.
"""
def __init__(self, layout='NCDHW', **kwargs):
assert layout in ('NCDHW', 'NDHWC'),\
"Only NCDHW and NDHWC layouts are valid for 3D Pooling"
super(GlobalMaxPool3D, self).__init__(
(1, 1, 1), None, 0, True, True, 'max', layout, **kwargs)
[docs]class GlobalAvgPool1D(_Pooling):
"""Global average pooling operation for temporal data.
Parameters
----------
layout : str, default 'NCW'
Dimension ordering of data and out ('NCW' or 'NWC').
'N', 'C', 'W' stands for batch, channel, and width (time) dimensions
respectively. padding is applied on 'W' dimension.
Inputs:
- **data**: 3D input tensor with shape `(batch_size, in_channels, width)`
when `layout` is `NCW`. For other layouts shape is permuted accordingly.
Outputs:
- **out**: 3D output tensor with shape `(batch_size, channels, 1)`.
"""
def __init__(self, layout='NCW', **kwargs):
assert layout in ('NCW', 'NWC'),\
"Only NCW and NWC layouts are valid for 1D Pooling"
super(GlobalAvgPool1D, self).__init__(
(1,), None, 0, True, True, 'avg', layout, **kwargs)
[docs]class GlobalAvgPool2D(_Pooling):
"""Global average pooling operation for spatial data.
Parameters
----------
layout : str, default 'NCHW'
Dimension ordering of data and out ('NCHW' or 'NHWC').
'N', 'C', 'H', 'W' stands for batch, channel, height, and width
dimensions respectively.
Inputs:
- **data**: 4D input tensor with shape
`(batch_size, in_channels, height, width)` when `layout` is `NCHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 4D output tensor with shape
`(batch_size, channels, 1, 1)` when `layout` is `NCHW`.
"""
def __init__(self, layout='NCHW', **kwargs):
assert layout in ('NCHW', 'NHWC'),\
"Only NCHW and NHWC layouts are valid for 2D Pooling"
super(GlobalAvgPool2D, self).__init__(
(1, 1), None, 0, True, True, 'avg', layout, **kwargs)
[docs]class GlobalAvgPool3D(_Pooling):
"""Global average pooling operation for 3D data (spatial or spatio-temporal).
Parameters
----------
layout : str, default 'NCDHW'
Dimension ordering of data and out ('NCDHW' or 'NDHWC').
'N', 'C', 'H', 'W', 'D' stands for batch, channel, height, width and
depth dimensions respectively. padding is applied on 'D', 'H' and 'W'
dimension.
Inputs:
- **data**: 5D input tensor with shape
`(batch_size, in_channels, depth, height, width)` when `layout` is `NCDHW`.
For other layouts shape is permuted accordingly.
Outputs:
- **out**: 5D output tensor with shape
`(batch_size, channels, 1, 1, 1)` when `layout` is `NCDHW`.
"""
def __init__(self, layout='NCDHW', **kwargs):
assert layout in ('NCDHW', 'NDHWC'),\
"Only NCDHW and NDHWC layouts are valid for 3D Pooling"
super(GlobalAvgPool3D, self).__init__(
(1, 1, 1), None, 0, True, True, 'avg', layout, **kwargs)
[docs]class ReflectionPad2D(HybridBlock):
r"""Pads the input tensor using the reflection of the input boundary.
Parameters
----------
padding: int
An integer padding size
Inputs:
- **data**: input tensor with the shape :math:`(N, C, H_{in}, W_{in})`.
Outputs:
- **out**: output tensor with the shape :math:`(N, C, H_{out}, W_{out})`, where
.. math::
H_{out} = H_{in} + 2 \cdot padding
W_{out} = W_{in} + 2 \cdot padding
Examples
--------
>>> m = nn.ReflectionPad2D(3)
>>> input = mx.nd.random.normal(shape=(16, 3, 224, 224))
>>> output = m(input)
"""
def __init__(self, padding=0, **kwargs):
super(ReflectionPad2D, self).__init__(**kwargs)
if isinstance(padding, numeric_types):
padding = (0, 0, 0, 0, padding, padding, padding, padding)
assert(len(padding) == 8)
self._padding = padding
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