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| import sys |
| import os |
| import torch |
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| root_path = os.path.abspath('.') |
| sys.path.append(root_path) |
| from architecture.cunet import UNet_Full |
| from architecture.discriminator import UNetDiscriminatorSN |
| from train_code.train_master import train_master |
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| class train_cugan(train_master): |
| def __init__(self, options, args) -> None: |
| super().__init__(options, args, "cugan", True) |
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| def loss_init(self): |
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| self.pixel_loss_load() |
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| self.GAN_loss_load() |
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| def call_model(self): |
| self.generator = UNet_Full().cuda() |
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| self.discriminator = UNetDiscriminatorSN(3).cuda() |
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| self.generator.train(); self.discriminator.train() |
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| def run(self): |
| self.master_run() |
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| def calculate_loss(self, gen_hr, imgs_hr): |
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| l_g_pix = self.cri_pix(gen_hr, imgs_hr) |
| self.generator_loss += l_g_pix |
| self.weight_store["pixel_loss"] = l_g_pix |
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| l_g_percep_danbooru = self.cri_danbooru_perceptual(gen_hr, imgs_hr) |
| l_g_percep_vgg = self.cri_vgg_perceptual(gen_hr, imgs_hr) |
| l_g_percep = l_g_percep_danbooru + l_g_percep_vgg |
| self.generator_loss += l_g_percep |
| self.weight_store["perceptual_loss"] = l_g_percep |
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| fake_g_preds = self.discriminator(gen_hr) |
| l_g_gan = self.cri_gan(fake_g_preds, True, is_disc=False) |
| self.generator_loss += l_g_gan |
| self.weight_store["gan_loss"] = l_g_gan |
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| def tensorboard_report(self, iteration): |
| self.writer.add_scalar('Loss/train-Generator_Loss-Iteration', self.generator_loss, iteration) |
| self.writer.add_scalar('Loss/train-Pixel_Loss-Iteration', self.weight_store["pixel_loss"], iteration) |
| self.writer.add_scalar('Loss/train-Perceptual_Loss-Iteration', self.weight_store["perceptual_loss"], iteration) |
| self.writer.add_scalar('Loss/train-Discriminator_Loss-Iteration', self.weight_store["gan_loss"], iteration) |
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