297 lines
10 KiB
Python
297 lines
10 KiB
Python
# TEED: is a Tiny but Efficient Edge Detection, it comes from the LDC-B3
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# with a Slightly modification
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# LDC parameters:
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# 155665
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# TED > 58K
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import torch
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import torch.nn as nn
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import torch.nn.functional as F
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from .Fsmish import smish as Fsmish
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from .Xsmish import Smish
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def weight_init(m):
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if isinstance(m, (nn.Conv2d,)):
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torch.nn.init.xavier_normal_(m.weight, gain=1.0)
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if m.bias is not None:
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torch.nn.init.zeros_(m.bias)
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# for fusion layer
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if isinstance(m, (nn.ConvTranspose2d,)):
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torch.nn.init.xavier_normal_(m.weight, gain=1.0)
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if m.bias is not None:
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torch.nn.init.zeros_(m.bias)
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class CoFusion(nn.Module):
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# from LDC
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def __init__(self, in_ch, out_ch):
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super(CoFusion, self).__init__()
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self.conv1 = nn.Conv2d(in_ch, 32, kernel_size=3,
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stride=1, padding=1) # before 64
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self.conv3= nn.Conv2d(32, out_ch, kernel_size=3,
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stride=1, padding=1)# before 64 instead of 32
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self.relu = nn.ReLU()
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self.norm_layer1 = nn.GroupNorm(4, 32) # before 64
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def forward(self, x):
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# fusecat = torch.cat(x, dim=1)
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attn = self.relu(self.norm_layer1(self.conv1(x)))
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attn = F.softmax(self.conv3(attn), dim=1)
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return ((x * attn).sum(1)).unsqueeze(1)
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class CoFusion2(nn.Module):
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# TEDv14-3
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def __init__(self, in_ch, out_ch):
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super(CoFusion2, self).__init__()
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self.conv1 = nn.Conv2d(in_ch, 32, kernel_size=3,
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stride=1, padding=1) # before 64
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# self.conv2 = nn.Conv2d(32, 32, kernel_size=3,
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# stride=1, padding=1)# before 64
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self.conv3 = nn.Conv2d(32, out_ch, kernel_size=3,
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stride=1, padding=1)# before 64 instead of 32
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self.smish= Smish()#nn.ReLU(inplace=True)
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def forward(self, x):
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# fusecat = torch.cat(x, dim=1)
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attn = self.conv1(self.smish(x))
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attn = self.conv3(self.smish(attn)) # before , )dim=1)
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# return ((fusecat * attn).sum(1)).unsqueeze(1)
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return ((x * attn).sum(1)).unsqueeze(1)
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class DoubleFusion(nn.Module):
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# TED fusion before the final edge map prediction
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def __init__(self, in_ch, out_ch):
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super(DoubleFusion, self).__init__()
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self.DWconv1 = nn.Conv2d(in_ch, in_ch*8, kernel_size=3,
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stride=1, padding=1, groups=in_ch) # before 64
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self.PSconv1 = nn.PixelShuffle(1)
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self.DWconv2 = nn.Conv2d(24, 24*1, kernel_size=3,
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stride=1, padding=1,groups=24)# before 64 instead of 32
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self.AF= Smish()#XAF() #nn.Tanh()# XAF() # # Smish()#
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def forward(self, x):
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# fusecat = torch.cat(x, dim=1)
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attn = self.PSconv1(self.DWconv1(self.AF(x))) # #TEED best res TEDv14 [8, 32, 352, 352]
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attn2 = self.PSconv1(self.DWconv2(self.AF(attn))) # #TEED best res TEDv14[8, 3, 352, 352]
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return Fsmish(((attn2 +attn).sum(1)).unsqueeze(1)) #TED best res
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class _DenseLayer(nn.Sequential):
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def __init__(self, input_features, out_features):
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super(_DenseLayer, self).__init__()
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self.add_module('conv1', nn.Conv2d(input_features, out_features,
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kernel_size=3, stride=1, padding=2, bias=True)),
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self.add_module('smish1', Smish()),
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self.add_module('conv2', nn.Conv2d(out_features, out_features,
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kernel_size=3, stride=1, bias=True))
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def forward(self, x):
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x1, x2 = x
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new_features = super(_DenseLayer, self).forward(Fsmish(x1)) # F.relu()
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return 0.5 * (new_features + x2), x2
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class _DenseBlock(nn.Sequential):
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def __init__(self, num_layers, input_features, out_features):
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super(_DenseBlock, self).__init__()
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for i in range(num_layers):
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layer = _DenseLayer(input_features, out_features)
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self.add_module('denselayer%d' % (i + 1), layer)
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input_features = out_features
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class UpConvBlock(nn.Module):
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def __init__(self, in_features, up_scale):
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super(UpConvBlock, self).__init__()
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self.up_factor = 2
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self.constant_features = 16
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layers = self.make_deconv_layers(in_features, up_scale)
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assert layers is not None, layers
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self.features = nn.Sequential(*layers)
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def make_deconv_layers(self, in_features, up_scale):
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layers = []
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all_pads=[0,0,1,3,7]
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for i in range(up_scale):
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kernel_size = 2 ** up_scale
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pad = all_pads[up_scale] # kernel_size-1
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out_features = self.compute_out_features(i, up_scale)
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layers.append(nn.Conv2d(in_features, out_features, 1))
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layers.append(Smish())
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layers.append(nn.ConvTranspose2d(
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out_features, out_features, kernel_size, stride=2, padding=pad))
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in_features = out_features
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return layers
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def compute_out_features(self, idx, up_scale):
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return 1 if idx == up_scale - 1 else self.constant_features
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def forward(self, x):
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return self.features(x)
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class SingleConvBlock(nn.Module):
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def __init__(self, in_features, out_features, stride, use_ac=False):
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super(SingleConvBlock, self).__init__()
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# self.use_bn = use_bs
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self.use_ac=use_ac
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self.conv = nn.Conv2d(in_features, out_features, 1, stride=stride,
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bias=True)
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if self.use_ac:
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self.smish = Smish()
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def forward(self, x):
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x = self.conv(x)
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if self.use_ac:
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return self.smish(x)
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else:
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return x
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class DoubleConvBlock(nn.Module):
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def __init__(self, in_features, mid_features,
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out_features=None,
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stride=1,
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use_act=True):
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super(DoubleConvBlock, self).__init__()
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self.use_act = use_act
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if out_features is None:
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out_features = mid_features
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self.conv1 = nn.Conv2d(in_features, mid_features,
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3, padding=1, stride=stride)
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self.conv2 = nn.Conv2d(mid_features, out_features, 3, padding=1)
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self.smish= Smish()#nn.ReLU(inplace=True)
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def forward(self, x):
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x = self.conv1(x)
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x = self.smish(x)
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x = self.conv2(x)
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if self.use_act:
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x = self.smish(x)
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return x
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class TED(nn.Module):
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""" Definition of Tiny and Efficient Edge Detector
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model
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"""
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def __init__(self):
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super(TED, self).__init__()
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self.block_1 = DoubleConvBlock(3, 16, 16, stride=2,)
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self.block_2 = DoubleConvBlock(16, 32, use_act=False)
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self.dblock_3 = _DenseBlock(1, 32, 48) # [32,48,100,100] before (2, 32, 64)
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self.maxpool = nn.MaxPool2d(kernel_size=3, stride=2, padding=1)
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# skip1 connection, see fig. 2
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self.side_1 = SingleConvBlock(16, 32, 2)
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# skip2 connection, see fig. 2
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self.pre_dense_3 = SingleConvBlock(32, 48, 1) # before (32, 64, 1)
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# USNet
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self.up_block_1 = UpConvBlock(16, 1)
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self.up_block_2 = UpConvBlock(32, 1)
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self.up_block_3 = UpConvBlock(48, 2) # (32, 64, 1)
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self.block_cat = DoubleFusion(3,3) # TEED: DoubleFusion
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self.apply(weight_init)
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def slice(self, tensor, slice_shape):
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t_shape = tensor.shape
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img_h, img_w = slice_shape
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if img_w!=t_shape[-1] or img_h!=t_shape[2]:
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new_tensor = F.interpolate(
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tensor, size=(img_h, img_w), mode='bicubic',align_corners=False)
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else:
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new_tensor=tensor
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# tensor[..., :height, :width]
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return new_tensor
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def resize_input(self,tensor):
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t_shape = tensor.shape
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if t_shape[2] % 8 != 0 or t_shape[3] % 8 != 0:
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img_w= ((t_shape[3]// 8) + 1) * 8
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img_h = ((t_shape[2] // 8) + 1) * 8
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new_tensor = F.interpolate(
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tensor, size=(img_h, img_w), mode='bicubic', align_corners=False)
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else:
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new_tensor = tensor
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return new_tensor
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def crop_bdcn(data1, h, w, crop_h, crop_w):
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# Based on BDCN Implementation @ https://github.com/pkuCactus/BDCN
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_, _, h1, w1 = data1.size()
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assert (h <= h1 and w <= w1)
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data = data1[:, :, crop_h:crop_h + h, crop_w:crop_w + w]
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return data
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def forward(self, x, single_test=False):
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assert x.ndim == 4, x.shape
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# supose the image size is 352x352
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# Block 1
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block_1 = self.block_1(x) # [8,16,176,176]
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block_1_side = self.side_1(block_1) # 16 [8,32,88,88]
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# Block 2
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block_2 = self.block_2(block_1) # 32 # [8,32,176,176]
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block_2_down = self.maxpool(block_2) # [8,32,88,88]
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block_2_add = block_2_down + block_1_side # [8,32,88,88]
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# Block 3
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block_3_pre_dense = self.pre_dense_3(block_2_down) # [8,64,88,88] block 3 L connection
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block_3, _ = self.dblock_3([block_2_add, block_3_pre_dense]) # [8,64,88,88]
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# upsampling blocks
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out_1 = self.up_block_1(block_1)
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out_2 = self.up_block_2(block_2)
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out_3 = self.up_block_3(block_3)
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results = [out_1, out_2, out_3]
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# concatenate multiscale outputs
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block_cat = torch.cat(results, dim=1) # Bx6xHxW
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block_cat = self.block_cat(block_cat) # Bx1xHxW DoubleFusion
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results.append(block_cat)
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return results
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if __name__ == '__main__':
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batch_size = 8
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img_height = 352
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img_width = 352
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# device = "cuda" if torch.cuda.is_available() else "cpu"
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device = "cpu"
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input = torch.rand(batch_size, 3, img_height, img_width).to(device)
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# target = torch.rand(batch_size, 1, img_height, img_width).to(device)
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print(f"input shape: {input.shape}")
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model = TED().to(device)
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output = model(input)
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print(f"output shapes: {[t.shape for t in output]}")
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# for i in range(20000):
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# print(i)
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# output = model(input)
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# loss = nn.MSELoss()(output[-1], target)
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# loss.backward()
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