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dnl_head.py
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dnl_head.py
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# Copyright (c) OpenMMLab. All rights reserved.
import torch
from mmcv.cnn import NonLocal2d
from torch import nn
from ..builder import HEADS
from .fcn_head import FCNHead
class DisentangledNonLocal2d(NonLocal2d):
"""Disentangled Non-Local Blocks.
Args:
temperature (float): Temperature to adjust attention. Default: 0.05
"""
def __init__(self, *arg, temperature, **kwargs):
super().__init__(*arg, **kwargs)
self.temperature = temperature
self.conv_mask = nn.Conv2d(self.in_channels, 1, kernel_size=1)
def embedded_gaussian(self, theta_x, phi_x):
"""Embedded gaussian with temperature."""
# NonLocal2d pairwise_weight: [N, HxW, HxW]
pairwise_weight = torch.matmul(theta_x, phi_x)
if self.use_scale:
# theta_x.shape[-1] is `self.inter_channels`
pairwise_weight /= theta_x.shape[-1]**0.5
pairwise_weight /= self.temperature
pairwise_weight = pairwise_weight.softmax(dim=-1)
return pairwise_weight
def forward(self, x):
# x: [N, C, H, W]
n = x.size(0)
# g_x: [N, HxW, C]
g_x = self.g(x).view(n, self.inter_channels, -1)
g_x = g_x.permute(0, 2, 1)
# theta_x: [N, HxW, C], phi_x: [N, C, HxW]
if self.mode == 'gaussian':
theta_x = x.view(n, self.in_channels, -1)
theta_x = theta_x.permute(0, 2, 1)
if self.sub_sample:
phi_x = self.phi(x).view(n, self.in_channels, -1)
else:
phi_x = x.view(n, self.in_channels, -1)
elif self.mode == 'concatenation':
theta_x = self.theta(x).view(n, self.inter_channels, -1, 1)
phi_x = self.phi(x).view(n, self.inter_channels, 1, -1)
else:
theta_x = self.theta(x).view(n, self.inter_channels, -1)
theta_x = theta_x.permute(0, 2, 1)
phi_x = self.phi(x).view(n, self.inter_channels, -1)
# subtract mean
theta_x -= theta_x.mean(dim=-2, keepdim=True)
phi_x -= phi_x.mean(dim=-1, keepdim=True)
pairwise_func = getattr(self, self.mode)
# pairwise_weight: [N, HxW, HxW]
pairwise_weight = pairwise_func(theta_x, phi_x)
# y: [N, HxW, C]
y = torch.matmul(pairwise_weight, g_x)
# y: [N, C, H, W]
y = y.permute(0, 2, 1).contiguous().reshape(n, self.inter_channels,
*x.size()[2:])
# unary_mask: [N, 1, HxW]
unary_mask = self.conv_mask(x)
unary_mask = unary_mask.view(n, 1, -1)
unary_mask = unary_mask.softmax(dim=-1)
# unary_x: [N, 1, C]
unary_x = torch.matmul(unary_mask, g_x)
# unary_x: [N, C, 1, 1]
unary_x = unary_x.permute(0, 2, 1).contiguous().reshape(
n, self.inter_channels, 1, 1)
output = x + self.conv_out(y + unary_x)
return output
@HEADS.register_module()
class DNLHead(FCNHead):
"""Disentangled Non-Local Neural Networks.
This head is the implementation of `DNLNet
<https://arxiv.org/abs/2006.06668>`_.
Args:
reduction (int): Reduction factor of projection transform. Default: 2.
use_scale (bool): Whether to scale pairwise_weight by
sqrt(1/inter_channels). Default: False.
mode (str): The nonlocal mode. Options are 'embedded_gaussian',
'dot_product'. Default: 'embedded_gaussian.'.
temperature (float): Temperature to adjust attention. Default: 0.05
"""
def __init__(self,
reduction=2,
use_scale=True,
mode='embedded_gaussian',
temperature=0.05,
**kwargs):
super(DNLHead, self).__init__(num_convs=2, **kwargs)
self.reduction = reduction
self.use_scale = use_scale
self.mode = mode
self.temperature = temperature
self.dnl_block = DisentangledNonLocal2d(
in_channels=self.channels,
reduction=self.reduction,
use_scale=self.use_scale,
conv_cfg=self.conv_cfg,
norm_cfg=self.norm_cfg,
mode=self.mode,
temperature=self.temperature)
def forward(self, inputs):
"""Forward function."""
x = self._transform_inputs(inputs)
output = self.convs[0](x)
output = self.dnl_block(output)
output = self.convs[1](output)
if self.concat_input:
output = self.conv_cat(torch.cat([x, output], dim=1))
output = self.cls_seg(output)
return output