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from .model import MAnet |
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import torch | ||
import torch.nn as nn | ||
import torch.nn.functional as F | ||
from ..base import modules as md | ||
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class PAB(nn.Module): | ||
def __init__(self, in_channels, out_channels, pab_channels=64): | ||
super(PAB, self).__init__() | ||
# Series of 1x1 conv to generate attention feature maps | ||
self.pab_channels = pab_channels | ||
self.in_channels = in_channels | ||
self.top_conv = nn.Conv2d(in_channels, pab_channels, kernel_size=1) | ||
self.center_conv = nn.Conv2d(in_channels, pab_channels, kernel_size=1) | ||
self.bottom_conv = nn.Conv2d(in_channels, in_channels, kernel_size=3, padding=1) | ||
self.map_softmax = nn.Softmax(dim=1) | ||
self.out_conv = nn.Conv2d(in_channels, in_channels, kernel_size=3, padding=1) | ||
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def forward(self, x): | ||
bsize = x.size()[0] | ||
h = x.size()[2] | ||
w = x.size()[3] | ||
x_top = self.top_conv(x) | ||
x_center = self.center_conv(x) | ||
x_bottom = self.bottom_conv(x) | ||
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x_top = x_top.flatten(2) | ||
x_center = x_center.flatten(2).transpose(1, 2) | ||
x_bottom = x_bottom.flatten(2).transpose(1, 2) | ||
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sp_map = torch.matmul(x_center, x_top) | ||
sp_map = self.map_softmax(sp_map.view(bsize, -1)).view(bsize, h*w, h*w) | ||
sp_map = torch.matmul(sp_map, x_bottom) | ||
sp_map = sp_map.reshape(bsize, self.in_channels, h, w) | ||
x = x + sp_map | ||
x = self.out_conv(x) | ||
return x | ||
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class MFAB(nn.Module): | ||
def __init__(self, in_channels, skip_channels, out_channels, use_batchnorm=True, reduction=16): | ||
# MFAB is just a modified version of SE-blocks, one for skip, one for input | ||
super(MFAB, self).__init__() | ||
self.hl_conv = nn.Sequential( | ||
md.Conv2dReLU( | ||
in_channels, | ||
in_channels, | ||
kernel_size=3, | ||
padding=1, | ||
use_batchnorm=use_batchnorm, | ||
), | ||
md.Conv2dReLU( | ||
in_channels, | ||
skip_channels, | ||
kernel_size=1, | ||
use_batchnorm=use_batchnorm, | ||
) | ||
) | ||
self.SE_ll = nn.Sequential( | ||
nn.AdaptiveAvgPool2d(1), | ||
nn.Conv2d(skip_channels, skip_channels // reduction, 1), | ||
nn.ReLU(inplace=True), | ||
nn.Conv2d(skip_channels // reduction, skip_channels, 1), | ||
nn.Sigmoid(), | ||
) | ||
self.SE_hl = nn.Sequential( | ||
nn.AdaptiveAvgPool2d(1), | ||
nn.Conv2d(skip_channels, skip_channels // reduction, 1), | ||
nn.ReLU(inplace=True), | ||
nn.Conv2d(skip_channels // reduction, skip_channels, 1), | ||
nn.Sigmoid(), | ||
) | ||
self.conv1 = md.Conv2dReLU( | ||
skip_channels + skip_channels, # we transform C-prime form high level to C from skip connection | ||
out_channels, | ||
kernel_size=3, | ||
padding=1, | ||
use_batchnorm=use_batchnorm, | ||
) | ||
self.conv2 = md.Conv2dReLU( | ||
out_channels, | ||
out_channels, | ||
kernel_size=3, | ||
padding=1, | ||
use_batchnorm=use_batchnorm, | ||
) | ||
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def forward(self, x, skip=None): | ||
x = self.hl_conv(x) | ||
x = F.interpolate(x, scale_factor=2, mode="nearest") | ||
attention_hl = self.SE_hl(x) | ||
if skip is not None: | ||
attention_ll = self.SE_ll(skip) | ||
attention_hl = attention_hl + attention_ll | ||
x = x * attention_hl | ||
x = torch.cat([x, skip], dim=1) | ||
x = self.conv1(x) | ||
x = self.conv2(x) | ||
return x | ||
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class DecoderBlock(nn.Module): | ||
def __init__( | ||
self, | ||
in_channels, | ||
skip_channels, | ||
out_channels, | ||
use_batchnorm=True | ||
): | ||
super().__init__() | ||
self.conv1 = md.Conv2dReLU( | ||
in_channels + skip_channels, | ||
out_channels, | ||
kernel_size=3, | ||
padding=1, | ||
use_batchnorm=use_batchnorm, | ||
) | ||
self.conv2 = md.Conv2dReLU( | ||
out_channels, | ||
out_channels, | ||
kernel_size=3, | ||
padding=1, | ||
use_batchnorm=use_batchnorm, | ||
) | ||
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def forward(self, x, skip=None): | ||
x = F.interpolate(x, scale_factor=2, mode="nearest") | ||
if skip is not None: | ||
x = torch.cat([x, skip], dim=1) | ||
x = self.conv1(x) | ||
x = self.conv2(x) | ||
return x | ||
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class MAnetDecoder(nn.Module): | ||
def __init__( | ||
self, | ||
encoder_channels, | ||
decoder_channels, | ||
n_blocks=5, | ||
reduction=16, | ||
use_batchnorm=True, | ||
pab_channels=64 | ||
): | ||
super().__init__() | ||
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if n_blocks != len(decoder_channels): | ||
raise ValueError( | ||
"Model depth is {}, but you provide `decoder_channels` for {} blocks.".format( | ||
n_blocks, len(decoder_channels) | ||
) | ||
) | ||
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encoder_channels = encoder_channels[1:] # remove first skip with same spatial resolution | ||
encoder_channels = encoder_channels[::-1] # reverse channels to start from head of encoder | ||
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# computing blocks input and output channels | ||
head_channels = encoder_channels[0] | ||
in_channels = [head_channels] + list(decoder_channels[:-1]) | ||
skip_channels = list(encoder_channels[1:]) + [0] | ||
out_channels = decoder_channels | ||
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self.center = PAB(head_channels, head_channels, pab_channels=pab_channels) | ||
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# combine decoder keyword arguments | ||
kwargs = dict(use_batchnorm=use_batchnorm) # no attention type here | ||
blocks = [ | ||
MFAB(in_ch, skip_ch, out_ch, reduction=reduction, **kwargs) if skip_ch > 0 else | ||
DecoderBlock(in_ch, skip_ch, out_ch, **kwargs) | ||
for in_ch, skip_ch, out_ch in zip(in_channels, skip_channels, out_channels) | ||
] | ||
# for the last we dont have skip connection -> use simple decoder block | ||
self.blocks = nn.ModuleList(blocks) | ||
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def forward(self, *features): | ||
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features = features[1:] # remove first skip with same spatial resolution | ||
features = features[::-1] # reverse channels to start from head of encoder | ||
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head = features[0] | ||
skips = features[1:] | ||
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x = self.center(head) | ||
for i, decoder_block in enumerate(self.blocks): | ||
skip = skips[i] if i < len(skips) else None | ||
x = decoder_block(x, skip) | ||
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return x |
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from typing import Optional, Union, List | ||
from .decoder import MAnetDecoder | ||
from ..encoders import get_encoder | ||
from ..base import SegmentationModel | ||
from ..base import SegmentationHead, ClassificationHead | ||
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class MAnet(SegmentationModel): | ||
"""MAnet_ : Multi-scale Attention Net. | ||
The MA-Net can capture rich contextual dependencies based on the attention mechanism, using two blocks: | ||
Position-wise Attention Block (PAB, which captures the spatial dependencies between pixels in a global view) | ||
and Multi-scale Fusion Attention Block (MFAB, which captures the channel dependencies between any feature map by | ||
multi-scale semantic feature fusion) | ||
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Args: | ||
encoder_name: Name of the classification model that will be used as an encoder (a.k.a backbone) | ||
to extract features of different spatial resolution | ||
encoder_depth: A number of stages used in encoder in range [3, 5]. Each stage generate features | ||
two times smaller in spatial dimentions than previous one (e.g. for depth 0 we will have features | ||
with shapes [(N, C, H, W),], for depth 1 - [(N, C, H, W), (N, C, H // 2, W // 2)] and so on). | ||
Default is 5 | ||
encoder_weights: One of **None** (random initialization), **"imagenet"** (pre-training on ImageNet) and | ||
other pretrained weights (see table with available weights for each encoder_name) | ||
decoder_channels: List of integers which specify **in_channels** parameter for convolutions used in decoder. | ||
Lenght of the list should be the same as **encoder_depth** | ||
decoder_use_batchnorm: If **True**, BatchNorm2d layer between Conv2D and Activation layers | ||
is used. If **"inplace"** InplaceABN will be used, allows to decrease memory consumption. | ||
Avaliable options are **True, False, "inplace"** | ||
decoder_pab_channels: A number of channels for PAB module in decoder. | ||
Default is 64. | ||
in_channels: A number of input channels for the model, default is 3 (RGB images) | ||
classes: A number of classes for output mask (or you can think as a number of channels of output mask) | ||
activation: An activation function to apply after the final convolution layer. | ||
Avaliable options are **"sigmoid"**, **"softmax"**, **"logsoftmax"**, **"identity"**, **callable** and **None**. | ||
Default is **None** | ||
aux_params: Dictionary with parameters of the auxiliary output (classification head). Auxiliary output is build | ||
on top of encoder if **aux_params** is not **None** (default). Supported params: | ||
- classes (int): A number of classes | ||
- pooling (str): One of "max", "avg". Default is "avg" | ||
- dropout (float): Dropout factor in [0, 1) | ||
- activation (str): An activation function to apply "sigmoid"/"softmax" (could be **None** to return logits) | ||
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Returns: | ||
``torch.nn.Module``: **MAnet** | ||
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.. _MAnet: | ||
https://ieeexplore.ieee.org/abstract/document/9201310 | ||
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""" | ||
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def __init__( | ||
self, | ||
encoder_name: str = "resnet34", | ||
encoder_depth: int = 5, | ||
encoder_weights: str = "imagenet", | ||
decoder_use_batchnorm: bool = True, | ||
decoder_channels: List[int] = (256, 128, 64, 32, 16), | ||
decoder_pab_channels: int = 64, | ||
in_channels: int = 3, | ||
classes: int = 1, | ||
activation: Optional[Union[str, callable]] = None, | ||
aux_params: Optional[dict] = None | ||
): | ||
super().__init__() | ||
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self.encoder = get_encoder( | ||
encoder_name, | ||
in_channels=in_channels, | ||
depth=encoder_depth, | ||
weights=encoder_weights, | ||
) | ||
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self.decoder = MAnetDecoder( | ||
encoder_channels=self.encoder.out_channels, | ||
decoder_channels=decoder_channels, | ||
n_blocks=encoder_depth, | ||
use_batchnorm=decoder_use_batchnorm, | ||
pab_channels=decoder_pab_channels | ||
) | ||
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self.segmentation_head = SegmentationHead( | ||
in_channels=decoder_channels[-1], | ||
out_channels=classes, | ||
activation=activation, | ||
kernel_size=3, | ||
) | ||
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if aux_params is not None: | ||
self.classification_head = ClassificationHead( | ||
in_channels=self.encoder.out_channels[-1], **aux_params | ||
) | ||
else: | ||
self.classification_head = None | ||
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self.name = "manet-{}".format(encoder_name) | ||
self.initialize() |
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