| import importlib |
| import torch |
| from collections import OrderedDict |
| from copy import deepcopy |
| from os import path as osp |
| from tqdm import tqdm |
|
|
| from basicsr.models.archs import define_network |
| from basicsr.models.base_model import BaseModel |
| from basicsr.utils import get_root_logger, imwrite, tensor2img |
| from huggingface_hub import PyTorchModelHubMixin |
| loss_module = importlib.import_module('basicsr.models.losses') |
| metric_module = importlib.import_module('basicsr.metrics') |
|
|
| import os |
| import random |
| import numpy as np |
| import cv2 |
| import torch.nn.functional as F |
| from functools import partial |
| |
| import torch.autograd as autograd |
|
|
| class Mixing_Augment: |
| def __init__(self, mixup_beta, use_identity, device): |
| self.dist = torch.distributions.beta.Beta(torch.tensor([mixup_beta]), torch.tensor([mixup_beta])) |
| self.device = device |
|
|
| self.use_identity = use_identity |
|
|
| self.augments = [self.mixup] |
|
|
| def mixup(self, target, input_): |
| lam = self.dist.rsample((1,1)).item() |
| |
| r_index = torch.randperm(target.size(0)).to(self.device) |
| |
| target = lam * target + (1-lam) * target[r_index, :] |
| input_ = lam * input_ + (1-lam) * input_[r_index, :] |
| |
| return target, input_ |
|
|
| def __call__(self, target, input_): |
| if self.use_identity: |
| augment = random.randint(0, len(self.augments)) |
| if augment < len(self.augments): |
| target, input_ = self.augments[augment](target, input_) |
| else: |
| augment = random.randint(0, len(self.augments)-1) |
| target, input_ = self.augments[augment](target, input_) |
| return target, input_ |
|
|
| class ImageCleanModel(BaseModel): |
| """Base Deblur model for single image deblur.""" |
|
|
| def __init__(self, opt): |
| super(ImageCleanModel, self).__init__(opt) |
|
|
| |
|
|
| self.mixing_flag = self.opt['train']['mixing_augs'].get('mixup', False) |
| if self.mixing_flag: |
| mixup_beta = self.opt['train']['mixing_augs'].get('mixup_beta', 1.2) |
| use_identity = self.opt['train']['mixing_augs'].get('use_identity', False) |
| self.mixing_augmentation = Mixing_Augment(mixup_beta, use_identity, self.device) |
|
|
| self.net_g = define_network(deepcopy(opt['network_g'])) |
| self.net_g = self.model_to_device(self.net_g) |
| self.print_network(self.net_g) |
|
|
| |
| load_path = self.opt['path'].get('pretrain_network_g', None) |
| if load_path is not None: |
| self.load_network(self.net_g, load_path, |
| self.opt['path'].get('strict_load_g', True), param_key=self.opt['path'].get('param_key', 'params')) |
|
|
| if self.is_train: |
| self.init_training_settings() |
| self.psnr_best = -1 |
| def init_training_settings(self): |
| self.net_g.train() |
| train_opt = self.opt['train'] |
|
|
| self.ema_decay = train_opt.get('ema_decay', 0) |
| if self.ema_decay > 0: |
| logger = get_root_logger() |
| logger.info( |
| f'Use Exponential Moving Average with decay: {self.ema_decay}') |
| |
| |
| |
| self.net_g_ema = define_network(self.opt['network_g']).to( |
| self.device) |
| |
| load_path = self.opt['path'].get('pretrain_network_g', None) |
| if load_path is not None: |
| self.load_network(self.net_g_ema, load_path, |
| self.opt['path'].get('strict_load_g', |
| True), 'params_ema') |
| else: |
| self.model_ema(0) |
| self.net_g_ema.eval() |
|
|
| |
| if train_opt.get('pixel_opt'): |
| pixel_type = train_opt['pixel_opt'].pop('type') |
| cri_pix_cls = getattr(loss_module, pixel_type) |
| self.cri_pix = cri_pix_cls(**train_opt['pixel_opt']).to( |
| self.device) |
| else: |
| raise ValueError('pixel loss are None.') |
| if train_opt.get('seq_opt'): |
| |
| |
| self.cri_seq = self.pearson_correlation_loss |
| self.cri_celoss = torch.nn.CrossEntropyLoss() |
| |
| self.setup_optimizers() |
| self.setup_schedulers() |
|
|
| def pearson_correlation_loss(self, x1, x2): |
| assert x1.shape == x2.shape |
| b, c = x1.shape[:2] |
| dim = -1 |
| x1, x2 = x1.reshape(b, -1), x2.reshape(b, -1) |
| x1_mean, x2_mean = x1.mean(dim=dim, keepdims=True), x2.mean(dim=dim, keepdims=True) |
| numerator = ((x1 - x1_mean) * (x2 - x2_mean)).sum( dim=dim, keepdims=True ) |
| |
| std1 = (x1 - x1_mean).pow(2).sum(dim=dim, keepdims=True).sqrt() |
| std2 = (x2 - x2_mean).pow(2).sum(dim=dim, keepdims=True).sqrt() |
| denominator = std1 * std2 |
| corr = numerator.div(denominator + 1e-6) |
| return corr |
|
|
| def setup_optimizers(self): |
| train_opt = self.opt['train'] |
| optim_params = [] |
|
|
| for k, v in self.net_g.named_parameters(): |
| if v.requires_grad: |
| optim_params.append(v) |
| else: |
| logger = get_root_logger() |
| logger.warning(f'Params {k} will not be optimized.') |
|
|
| optim_type = train_opt['optim_g'].pop('type') |
| if optim_type == 'Adam': |
| self.optimizer_g = torch.optim.Adam(optim_params, **train_opt['optim_g']) |
| elif optim_type == 'AdamW': |
| self.optimizer_g = torch.optim.AdamW(optim_params, **train_opt['optim_g']) |
| else: |
| raise NotImplementedError( |
| f'optimizer {optim_type} is not supperted yet.') |
| self.optimizers.append(self.optimizer_g) |
|
|
| def feed_train_data(self, data): |
| self.lq = data['lq'].to(self.device) |
| if 'gt' in data: |
| self.gt = data['gt'].to(self.device) |
| if 'label' in data: |
| self.label = data['label'] |
| |
| if self.mixing_flag: |
| self.gt, self.lq = self.mixing_augmentation(self.gt, self.lq) |
|
|
| def feed_data(self, data): |
| self.lq = data['lq'].to(self.device) |
| if 'gt' in data: |
| self.gt = data['gt'].to(self.device) |
|
|
| def check_inf_nan(self, x): |
| x[x.isnan()] = 0 |
| x[x.isinf()] = 1e7 |
| return x |
| def compute_correlation_loss(self, x1, x2): |
| b, c = x1.shape[0:2] |
| x1 = x1.view(b, -1) |
| x2 = x2.view(b, -1) |
| |
| pearson = (1. - self.cri_seq(x1, x2)) / 2. |
| return pearson[~pearson.isnan()*~pearson.isinf()].mean() |
|
|
| def optimize_parameters(self, current_iter): |
| self.optimizer_g.zero_grad() |
| self.output = self.net_g(self.lq, ) |
|
|
| loss_dict = OrderedDict() |
| |
| l_pix = self.cri_pix(self.output, self.gt) |
| loss_dict['l_pix'] = l_pix |
| ''' |
| l_mask = self.cri_pix(self.pred_mask, self.gt - self.output.detach()) |
| loss_dict['l_mask'] = l_mask |
| ''' |
| l_pear = self.compute_correlation_loss(self.output, self.gt) |
| loss_dict['l_pear'] = l_pear |
|
|
| |
| |
| |
| loss_total = l_pix + l_pear |
| loss_total.backward() |
| |
| if self.opt['train']['use_grad_clip']: |
| torch.nn.utils.clip_grad_norm_(self.net_g.parameters(), 0.01, error_if_nonfinite=False) |
| self.optimizer_g.step() |
|
|
| self.log_dict, self.loss_total = self.reduce_loss_dict(loss_dict) |
| self.loss_dict = loss_dict |
| if self.ema_decay > 0: |
| self.model_ema(decay=self.ema_decay) |
|
|
| def pad_test(self, window_size): |
| scale = self.opt.get('scale', 1) |
| mod_pad_h, mod_pad_w = 0, 0 |
| _, _, h, w = self.lq.size() |
| if h % window_size != 0: |
| mod_pad_h = window_size - h % window_size |
| if w % window_size != 0: |
| mod_pad_w = window_size - w % window_size |
| img = F.pad(self.lq, (0, mod_pad_w, 0, mod_pad_h), 'reflect') |
| self.nonpad_test(img) |
| _, _, h, w = self.output.size() |
| self.output = self.output[:, :, 0:h - mod_pad_h * scale, 0:w - mod_pad_w * scale] |
|
|
| def nonpad_test(self, img=None): |
| if img is None: |
| img = self.lq |
| if hasattr(self, 'net_g_ema'): |
| self.net_g_ema.eval() |
| with torch.no_grad(): |
| pred = self.net_g_ema(img) |
| if isinstance(pred, list): |
| pred = pred[-1] |
| self.output = pred |
| else: |
| self.net_g.eval() |
| with torch.no_grad(): |
| pred = self.net_g(img) |
| if isinstance(pred, list): |
| pred = pred[-1] |
| self.output = pred |
| self.net_g.train() |
|
|
| def dist_validation(self, dataloader, current_iter, tb_logger, save_img, rgb2bgr, use_image): |
| if os.environ['LOCAL_RANK'] == '0': |
| return self.nondist_validation(dataloader, current_iter, tb_logger, save_img, rgb2bgr, use_image) |
| else: |
| return 0. |
|
|
| def nondist_validation(self, dataloader, current_iter, tb_logger, |
| save_img, rgb2bgr, use_image): |
| dataset_name = dataloader.dataset.opt['name'] |
| with_metrics = self.opt['val'].get('metrics') is not None |
| if with_metrics: |
| self.metric_results = { |
| metric: 0 |
| for metric in self.opt['val']['metrics'].keys() |
| } |
| |
|
|
| window_size = self.opt['val'].get('window_size', 0) |
|
|
| if window_size: |
| test = partial(self.pad_test, window_size) |
| else: |
| test = self.nonpad_test |
|
|
| cnt = 0 |
|
|
| for idx, val_data in enumerate(dataloader): |
| if idx >= 60: |
| break |
| img_name = osp.splitext(osp.basename(val_data['lq_path'][0]))[0] |
|
|
| self.feed_data(val_data) |
| test() |
|
|
| visuals = self.get_current_visuals() |
| sr_img = tensor2img([visuals['result']], rgb2bgr=rgb2bgr) |
| if 'gt' in visuals: |
| gt_img = tensor2img([visuals['gt']], rgb2bgr=rgb2bgr) |
| del self.gt |
|
|
| |
| del self.lq |
| del self.output |
| torch.cuda.empty_cache() |
|
|
| if save_img: |
| |
| if self.opt['is_train']: |
| |
| save_img_path = osp.join(self.opt['path']['visualization'], |
| img_name, |
| f'{img_name}_{current_iter}.png') |
| |
| save_gt_img_path = osp.join(self.opt['path']['visualization'], |
| img_name, |
| f'{img_name}_{current_iter}_gt.png') |
| else: |
| |
| save_img_path = osp.join( |
| self.opt['path']['visualization'], dataset_name, |
| f'{img_name}.png') |
| save_gt_img_path = osp.join( |
| self.opt['path']['visualization'], dataset_name, |
| f'{img_name}_gt.png') |
| |
| imwrite(sr_img, save_img_path) |
| imwrite(gt_img, save_gt_img_path) |
|
|
| if with_metrics: |
| |
| opt_metric = deepcopy(self.opt['val']['metrics']) |
| if use_image: |
| for name, opt_ in opt_metric.items(): |
| metric_type = opt_.pop('type') |
| self.metric_results[name] += getattr( |
| metric_module, metric_type)(sr_img, gt_img, **opt_) |
| else: |
| for name, opt_ in opt_metric.items(): |
| metric_type = opt_.pop('type') |
| self.metric_results[name] += getattr( |
| metric_module, metric_type)(visuals['result'], visuals['gt'], **opt_) |
|
|
| cnt += 1 |
|
|
| current_metric = 0. |
| if with_metrics: |
| for metric in self.metric_results.keys(): |
| self.metric_results[metric] /= cnt |
| current_metric = max(current_metric, self.metric_results[metric]) |
|
|
| self._log_validation_metric_values(current_iter, dataset_name, |
| tb_logger) |
| return current_metric |
|
|
|
|
| def _log_validation_metric_values(self, current_iter, dataset_name, |
| tb_logger): |
| log_str = f'Validation {dataset_name},\t' |
| for metric, value in self.metric_results.items(): |
| log_str += f'\t # {metric}: {value:.4f}' |
| if metric == 'psnr' and value >= self.psnr_best: |
| self.save(0, current_iter, best=True) |
| self.psnr_best = value |
| logger = get_root_logger() |
| logger.info(log_str) |
| if tb_logger: |
| for metric, value in self.metric_results.items(): |
| tb_logger.add_scalar(f'metrics/{metric}', value, current_iter) |
|
|
| def get_current_visuals(self): |
| out_dict = OrderedDict() |
| out_dict['lq'] = self.lq.detach().cpu() |
| out_dict['result'] = self.output.detach().cpu() |
| if hasattr(self, 'gt'): |
| out_dict['gt'] = self.gt.detach().cpu() |
| return out_dict |
|
|
| def save(self, epoch, current_iter, best=False): |
| if self.ema_decay > 0: |
| self.save_network([self.net_g, self.net_g_ema], |
| 'net_g', |
| current_iter, |
| param_key=['params', 'params_ema'], best=best) |
| else: |
| self.save_network(self.net_g, 'net_g', current_iter, best=best) |
| self.save_training_state(epoch, current_iter, best=best) |
|
|