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| from models.model_plain import ModelPlain | |
| import numpy as np | |
| class ModelPlain4(ModelPlain): | |
| """Train with four inputs (L, k, sf, sigma) and with pixel loss for USRNet""" | |
| # ---------------------------------------- | |
| # feed L/H data | |
| # ---------------------------------------- | |
| def feed_data(self, data, need_H=True): | |
| self.L = data['L'].to(self.device) # low-quality image | |
| self.k = data['k'].to(self.device) # blur kernel | |
| self.sf = np.int(data['sf'][0,...].squeeze().cpu().numpy()) # scale factor | |
| self.sigma = data['sigma'].to(self.device) # noise level | |
| if need_H: | |
| self.H = data['H'].to(self.device) # H | |
| # ---------------------------------------- | |
| # feed (L, C) to netG and get E | |
| # ---------------------------------------- | |
| def netG_forward(self): | |
| self.E = self.netG(self.L, self.k, self.sf, self.sigma) | |