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# Copyright (c) OpenMMLab. All rights reserved.
import warnings
import torch.nn as nn
from annotator.mmpkg.mmcv.utils import _BatchNorm, _InstanceNorm
from ..utils import constant_init, kaiming_init
from .activation import build_activation_layer
from .conv import build_conv_layer
from .norm import build_norm_layer
from .padding import build_padding_layer
from .registry import PLUGIN_LAYERS
@PLUGIN_LAYERS.register_module()
class ConvModule(nn.Module):
"""A conv block that bundles conv/norm/activation layers.
This block simplifies the usage of convolution layers, which are commonly
used with a norm layer (e.g., BatchNorm) and activation layer (e.g., ReLU).
It is based upon three build methods: `build_conv_layer()`,
`build_norm_layer()` and `build_activation_layer()`.
Besides, we add some additional features in this module.
1. Automatically set `bias` of the conv layer.
2. Spectral norm is supported.
3. More padding modes are supported. Before PyTorch 1.5, nn.Conv2d only
supports zero and circular padding, and we add "reflect" padding mode.
Args:
in_channels (int): Number of channels in the input feature map.
Same as that in ``nn._ConvNd``.
out_channels (int): Number of channels produced by the convolution.
Same as that in ``nn._ConvNd``.
kernel_size (int | tuple[int]): Size of the convolving kernel.
Same as that in ``nn._ConvNd``.
stride (int | tuple[int]): Stride of the convolution.
Same as that in ``nn._ConvNd``.
padding (int | tuple[int]): Zero-padding added to both sides of
the input. Same as that in ``nn._ConvNd``.
dilation (int | tuple[int]): Spacing between kernel elements.
Same as that in ``nn._ConvNd``.
groups (int): Number of blocked connections from input channels to
output channels. Same as that in ``nn._ConvNd``.
bias (bool | str): If specified as `auto`, it will be decided by the
norm_cfg. Bias will be set as True if `norm_cfg` is None, otherwise
False. Default: "auto".
conv_cfg (dict): Config dict for convolution layer. Default: None,
which means using conv2d.
norm_cfg (dict): Config dict for normalization layer. Default: None.
act_cfg (dict): Config dict for activation layer.
Default: dict(type='ReLU').
inplace (bool): Whether to use inplace mode for activation.
Default: True.
with_spectral_norm (bool): Whether use spectral norm in conv module.
Default: False.
padding_mode (str): If the `padding_mode` has not been supported by
current `Conv2d` in PyTorch, we will use our own padding layer
instead. Currently, we support ['zeros', 'circular'] with official
implementation and ['reflect'] with our own implementation.
Default: 'zeros'.
order (tuple[str]): The order of conv/norm/activation layers. It is a
sequence of "conv", "norm" and "act". Common examples are
("conv", "norm", "act") and ("act", "conv", "norm").
Default: ('conv', 'norm', 'act').
"""
_abbr_ = 'conv_block'
def __init__(self,
in_channels,
out_channels,
kernel_size,
stride=1,
padding=0,
dilation=1,
groups=1,
bias='auto',
conv_cfg=None,
norm_cfg=None,
act_cfg=dict(type='ReLU'),
inplace=True,
with_spectral_norm=False,
padding_mode='zeros',
order=('conv', 'norm', 'act')):
super(ConvModule, self).__init__()
assert conv_cfg is None or isinstance(conv_cfg, dict)
assert norm_cfg is None or isinstance(norm_cfg, dict)
assert act_cfg is None or isinstance(act_cfg, dict)
official_padding_mode = ['zeros', 'circular']
self.conv_cfg = conv_cfg
self.norm_cfg = norm_cfg
self.act_cfg = act_cfg
self.inplace = inplace
self.with_spectral_norm = with_spectral_norm
self.with_explicit_padding = padding_mode not in official_padding_mode
self.order = order
assert isinstance(self.order, tuple) and len(self.order) == 3
assert set(order) == set(['conv', 'norm', 'act'])
self.with_norm = norm_cfg is not None
self.with_activation = act_cfg is not None
# if the conv layer is before a norm layer, bias is unnecessary.
if bias == 'auto':
bias = not self.with_norm
self.with_bias = bias
if self.with_explicit_padding:
pad_cfg = dict(type=padding_mode)
self.padding_layer = build_padding_layer(pad_cfg, padding)
# reset padding to 0 for conv module
conv_padding = 0 if self.with_explicit_padding else padding
# build convolution layer
self.conv = build_conv_layer(
conv_cfg,
in_channels,
out_channels,
kernel_size,
stride=stride,
padding=conv_padding,
dilation=dilation,
groups=groups,
bias=bias)
# export the attributes of self.conv to a higher level for convenience
self.in_channels = self.conv.in_channels
self.out_channels = self.conv.out_channels
self.kernel_size = self.conv.kernel_size
self.stride = self.conv.stride
self.padding = padding
self.dilation = self.conv.dilation
self.transposed = self.conv.transposed
self.output_padding = self.conv.output_padding
self.groups = self.conv.groups
if self.with_spectral_norm:
self.conv = nn.utils.spectral_norm(self.conv)
# build normalization layers
if self.with_norm:
# norm layer is after conv layer
if order.index('norm') > order.index('conv'):
norm_channels = out_channels
else:
norm_channels = in_channels
self.norm_name, norm = build_norm_layer(norm_cfg, norm_channels)
self.add_module(self.norm_name, norm)
if self.with_bias:
if isinstance(norm, (_BatchNorm, _InstanceNorm)):
warnings.warn(
'Unnecessary conv bias before batch/instance norm')
else:
self.norm_name = None
# build activation layer
if self.with_activation:
act_cfg_ = act_cfg.copy()
# nn.Tanh has no 'inplace' argument
if act_cfg_['type'] not in [
'Tanh', 'PReLU', 'Sigmoid', 'HSigmoid', 'Swish'
]:
act_cfg_.setdefault('inplace', inplace)
self.activate = build_activation_layer(act_cfg_)
# Use msra init by default
self.init_weights()
@property
def norm(self):
if self.norm_name:
return getattr(self, self.norm_name)
else:
return None
def init_weights(self):
# 1. It is mainly for customized conv layers with their own
# initialization manners by calling their own ``init_weights()``,
# and we do not want ConvModule to override the initialization.
# 2. For customized conv layers without their own initialization
# manners (that is, they don't have their own ``init_weights()``)
# and PyTorch's conv layers, they will be initialized by
# this method with default ``kaiming_init``.
# Note: For PyTorch's conv layers, they will be overwritten by our
# initialization implementation using default ``kaiming_init``.
if not hasattr(self.conv, 'init_weights'):
if self.with_activation and self.act_cfg['type'] == 'LeakyReLU':
nonlinearity = 'leaky_relu'
a = self.act_cfg.get('negative_slope', 0.01)
else:
nonlinearity = 'relu'
a = 0
kaiming_init(self.conv, a=a, nonlinearity=nonlinearity)
if self.with_norm:
constant_init(self.norm, 1, bias=0)
def forward(self, x, activate=True, norm=True):
for layer in self.order:
if layer == 'conv':
if self.with_explicit_padding:
x = self.padding_layer(x)
x = self.conv(x)
elif layer == 'norm' and norm and self.with_norm:
x = self.norm(x)
elif layer == 'act' and activate and self.with_activation:
x = self.activate(x)
return x
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