92 lines
3.0 KiB
Python
92 lines
3.0 KiB
Python
from models.archs.panet import common
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from models.archs.panet import attention
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import torch.nn as nn
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from utils.util import checkpoint
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def make_model(args, parent=False):
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return PANET(args)
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class PANET(nn.Module):
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def __init__(self, args, conv=common.default_conv):
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super(PANET, self).__init__()
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n_resblocks = args.n_resblocks
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n_feats = args.n_feats
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kernel_size = 3
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scale = args.scale[0]
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rgb_mean = (0.4488, 0.4371, 0.4040)
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rgb_std = (1.0, 1.0, 1.0)
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self.sub_mean = common.MeanShift(args.rgb_range, rgb_mean, rgb_std)
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self.msa = attention.PyramidAttention()
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# define head module
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m_head = [conv(args.n_colors, n_feats, kernel_size)]
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# define body module
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m_body = [
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common.ResBlock(
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conv, n_feats, kernel_size, nn.PReLU(), res_scale=args.res_scale
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) for _ in range(n_resblocks // 2)
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]
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m_body.append(self.msa)
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for i in range(n_resblocks // 2):
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m_body.append(common.ResBlock(conv, n_feats, kernel_size, nn.PReLU(), res_scale=args.res_scale))
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m_body.append(conv(n_feats, n_feats, kernel_size))
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# define tail module
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# m_tail = [
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# common.Upsampler(conv, scale, n_feats, act=False),
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# conv(n_feats, args.n_colors, kernel_size)
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# ]
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m_tail = [
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common.Upsampler(conv, scale, n_feats, act=False),
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conv(n_feats, args.n_colors, kernel_size)
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]
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self.add_mean = common.MeanShift(args.rgb_range, rgb_mean, rgb_std, 1)
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self.head = nn.Sequential(*m_head)
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self.body = nn.ModuleList(m_body)
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self.tail = nn.Sequential(*m_tail)
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def forward(self, x):
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# x = self.sub_mean(x)
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x = self.head(x)
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res = x
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for b in self.body:
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if b == self.msa:
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if __name__ == '__main__':
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res = self.msa(res)
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else:
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res = checkpoint(b, res)
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res += x
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x = checkpoint(self.tail, res)
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# x = self.add_mean(x)
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return x,
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def load_state_dict(self, state_dict, strict=True):
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own_state = self.state_dict()
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for name, param in state_dict.items():
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if name in own_state:
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if isinstance(param, nn.Parameter):
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param = param.data
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try:
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own_state[name].copy_(param)
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except Exception:
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if name.find('tail') == -1:
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raise RuntimeError('While copying the parameter named {}, '
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'whose dimensions in the model are {} and '
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'whose dimensions in the checkpoint are {}.'
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.format(name, own_state[name].size(), param.size()))
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elif strict:
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if name.find('tail') == -1:
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raise KeyError('unexpected key "{}" in state_dict'
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.format(name))
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