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Starting
on
T4
import numpy as np | |
import random | |
import torch | |
from collections import OrderedDict | |
from torch.nn import functional as F | |
from basicsr.data.degradations import random_add_gaussian_noise_pt, random_add_poisson_noise_pt | |
from basicsr.data.transforms import paired_random_crop | |
from basicsr.losses.loss_util import get_refined_artifact_map | |
from basicsr.models.srgan_model import SRGANModel | |
from basicsr.utils import DiffJPEG, USMSharp | |
from basicsr.utils.img_process_util import filter2D | |
from basicsr.utils.registry import MODEL_REGISTRY | |
class RealESRGANModel(SRGANModel): | |
"""RealESRGAN Model for Real-ESRGAN: Training Real-World Blind Super-Resolution with Pure Synthetic Data. | |
It mainly performs: | |
1. randomly synthesize LQ images in GPU tensors | |
2. optimize the networks with GAN training. | |
""" | |
def __init__(self, opt): | |
super(RealESRGANModel, self).__init__(opt) | |
self.jpeger = DiffJPEG(differentiable=False).cuda() # simulate JPEG compression artifacts | |
self.usm_sharpener = USMSharp().cuda() # do usm sharpening | |
self.queue_size = opt.get('queue_size', 180) | |
def _dequeue_and_enqueue(self): | |
"""It is the training pair pool for increasing the diversity in a batch. | |
Batch processing limits the diversity of synthetic degradations in a batch. For example, samples in a | |
batch could not have different resize scaling factors. Therefore, we employ this training pair pool | |
to increase the degradation diversity in a batch. | |
""" | |
# initialize | |
b, c, h, w = self.lq.size() | |
if not hasattr(self, 'queue_lr'): | |
assert self.queue_size % b == 0, f'queue size {self.queue_size} should be divisible by batch size {b}' | |
self.queue_lr = torch.zeros(self.queue_size, c, h, w).cuda() | |
_, c, h, w = self.gt.size() | |
self.queue_gt = torch.zeros(self.queue_size, c, h, w).cuda() | |
self.queue_ptr = 0 | |
if self.queue_ptr == self.queue_size: # the pool is full | |
# do dequeue and enqueue | |
# shuffle | |
idx = torch.randperm(self.queue_size) | |
self.queue_lr = self.queue_lr[idx] | |
self.queue_gt = self.queue_gt[idx] | |
# get first b samples | |
lq_dequeue = self.queue_lr[0:b, :, :, :].clone() | |
gt_dequeue = self.queue_gt[0:b, :, :, :].clone() | |
# update the queue | |
self.queue_lr[0:b, :, :, :] = self.lq.clone() | |
self.queue_gt[0:b, :, :, :] = self.gt.clone() | |
self.lq = lq_dequeue | |
self.gt = gt_dequeue | |
else: | |
# only do enqueue | |
self.queue_lr[self.queue_ptr:self.queue_ptr + b, :, :, :] = self.lq.clone() | |
self.queue_gt[self.queue_ptr:self.queue_ptr + b, :, :, :] = self.gt.clone() | |
self.queue_ptr = self.queue_ptr + b | |
def feed_data(self, data): | |
"""Accept data from dataloader, and then add two-order degradations to obtain LQ images. | |
""" | |
if self.is_train and self.opt.get('high_order_degradation', True): | |
# training data synthesis | |
self.gt = data['gt'].to(self.device) | |
self.gt_usm = self.usm_sharpener(self.gt) | |
self.kernel1 = data['kernel1'].to(self.device) | |
self.kernel2 = data['kernel2'].to(self.device) | |
self.sinc_kernel = data['sinc_kernel'].to(self.device) | |
ori_h, ori_w = self.gt.size()[2:4] | |
# ----------------------- The first degradation process ----------------------- # | |
# blur | |
out = filter2D(self.gt_usm, self.kernel1) | |
# random resize | |
updown_type = random.choices(['up', 'down', 'keep'], self.opt['resize_prob'])[0] | |
if updown_type == 'up': | |
scale = np.random.uniform(1, self.opt['resize_range'][1]) | |
elif updown_type == 'down': | |
scale = np.random.uniform(self.opt['resize_range'][0], 1) | |
else: | |
scale = 1 | |
mode = random.choice(['area', 'bilinear', 'bicubic']) | |
out = F.interpolate(out, scale_factor=scale, mode=mode) | |
# add noise | |
gray_noise_prob = self.opt['gray_noise_prob'] | |
if np.random.uniform() < self.opt['gaussian_noise_prob']: | |
out = random_add_gaussian_noise_pt( | |
out, sigma_range=self.opt['noise_range'], clip=True, rounds=False, gray_prob=gray_noise_prob) | |
else: | |
out = random_add_poisson_noise_pt( | |
out, | |
scale_range=self.opt['poisson_scale_range'], | |
gray_prob=gray_noise_prob, | |
clip=True, | |
rounds=False) | |
# JPEG compression | |
jpeg_p = out.new_zeros(out.size(0)).uniform_(*self.opt['jpeg_range']) | |
out = torch.clamp(out, 0, 1) # clamp to [0, 1], otherwise JPEGer will result in unpleasant artifacts | |
out = self.jpeger(out, quality=jpeg_p) | |
# ----------------------- The second degradation process ----------------------- # | |
# blur | |
if np.random.uniform() < self.opt['second_blur_prob']: | |
out = filter2D(out, self.kernel2) | |
# random resize | |
updown_type = random.choices(['up', 'down', 'keep'], self.opt['resize_prob2'])[0] | |
if updown_type == 'up': | |
scale = np.random.uniform(1, self.opt['resize_range2'][1]) | |
elif updown_type == 'down': | |
scale = np.random.uniform(self.opt['resize_range2'][0], 1) | |
else: | |
scale = 1 | |
mode = random.choice(['area', 'bilinear', 'bicubic']) | |
out = F.interpolate( | |
out, size=(int(ori_h / self.opt['scale'] * scale), int(ori_w / self.opt['scale'] * scale)), mode=mode) | |
# add noise | |
gray_noise_prob = self.opt['gray_noise_prob2'] | |
if np.random.uniform() < self.opt['gaussian_noise_prob2']: | |
out = random_add_gaussian_noise_pt( | |
out, sigma_range=self.opt['noise_range2'], clip=True, rounds=False, gray_prob=gray_noise_prob) | |
else: | |
out = random_add_poisson_noise_pt( | |
out, | |
scale_range=self.opt['poisson_scale_range2'], | |
gray_prob=gray_noise_prob, | |
clip=True, | |
rounds=False) | |
# JPEG compression + the final sinc filter | |
# We also need to resize images to desired sizes. We group [resize back + sinc filter] together | |
# as one operation. | |
# We consider two orders: | |
# 1. [resize back + sinc filter] + JPEG compression | |
# 2. JPEG compression + [resize back + sinc filter] | |
# Empirically, we find other combinations (sinc + JPEG + Resize) will introduce twisted lines. | |
if np.random.uniform() < 0.5: | |
# resize back + the final sinc filter | |
mode = random.choice(['area', 'bilinear', 'bicubic']) | |
out = F.interpolate(out, size=(ori_h // self.opt['scale'], ori_w // self.opt['scale']), mode=mode) | |
out = filter2D(out, self.sinc_kernel) | |
# JPEG compression | |
jpeg_p = out.new_zeros(out.size(0)).uniform_(*self.opt['jpeg_range2']) | |
out = torch.clamp(out, 0, 1) | |
out = self.jpeger(out, quality=jpeg_p) | |
else: | |
# JPEG compression | |
jpeg_p = out.new_zeros(out.size(0)).uniform_(*self.opt['jpeg_range2']) | |
out = torch.clamp(out, 0, 1) | |
out = self.jpeger(out, quality=jpeg_p) | |
# resize back + the final sinc filter | |
mode = random.choice(['area', 'bilinear', 'bicubic']) | |
out = F.interpolate(out, size=(ori_h // self.opt['scale'], ori_w // self.opt['scale']), mode=mode) | |
out = filter2D(out, self.sinc_kernel) | |
# clamp and round | |
self.lq = torch.clamp((out * 255.0).round(), 0, 255) / 255. | |
# random crop | |
gt_size = self.opt['gt_size'] | |
(self.gt, self.gt_usm), self.lq = paired_random_crop([self.gt, self.gt_usm], self.lq, gt_size, | |
self.opt['scale']) | |
# training pair pool | |
self._dequeue_and_enqueue() | |
# sharpen self.gt again, as we have changed the self.gt with self._dequeue_and_enqueue | |
self.gt_usm = self.usm_sharpener(self.gt) | |
self.lq = self.lq.contiguous() # for the warning: grad and param do not obey the gradient layout contract | |
else: | |
# for paired training or validation | |
self.lq = data['lq'].to(self.device) | |
if 'gt' in data: | |
self.gt = data['gt'].to(self.device) | |
self.gt_usm = self.usm_sharpener(self.gt) | |
def nondist_validation(self, dataloader, current_iter, tb_logger, save_img): | |
# do not use the synthetic process during validation | |
self.is_train = False | |
super(RealESRGANModel, self).nondist_validation(dataloader, current_iter, tb_logger, save_img) | |
self.is_train = True | |
def optimize_parameters(self, current_iter): | |
# usm sharpening | |
l1_gt = self.gt_usm | |
percep_gt = self.gt_usm | |
gan_gt = self.gt_usm | |
if self.opt['l1_gt_usm'] is False: | |
l1_gt = self.gt | |
if self.opt['percep_gt_usm'] is False: | |
percep_gt = self.gt | |
if self.opt['gan_gt_usm'] is False: | |
gan_gt = self.gt | |
# optimize net_g | |
for p in self.net_d.parameters(): | |
p.requires_grad = False | |
self.optimizer_g.zero_grad() | |
self.output = self.net_g(self.lq) | |
if self.cri_ldl: | |
self.output_ema = self.net_g_ema(self.lq) | |
l_g_total = 0 | |
loss_dict = OrderedDict() | |
if (current_iter % self.net_d_iters == 0 and current_iter > self.net_d_init_iters): | |
# pixel loss | |
if self.cri_pix: | |
l_g_pix = self.cri_pix(self.output, l1_gt) | |
l_g_total += l_g_pix | |
loss_dict['l_g_pix'] = l_g_pix | |
if self.cri_ldl: | |
pixel_weight = get_refined_artifact_map(self.gt, self.output, self.output_ema, 7) | |
l_g_ldl = self.cri_ldl(torch.mul(pixel_weight, self.output), torch.mul(pixel_weight, self.gt)) | |
l_g_total += l_g_ldl | |
loss_dict['l_g_ldl'] = l_g_ldl | |
# perceptual loss | |
if self.cri_perceptual: | |
l_g_percep, l_g_style = self.cri_perceptual(self.output, percep_gt) | |
if l_g_percep is not None: | |
l_g_total += l_g_percep | |
loss_dict['l_g_percep'] = l_g_percep | |
if l_g_style is not None: | |
l_g_total += l_g_style | |
loss_dict['l_g_style'] = l_g_style | |
# gan loss | |
fake_g_pred = self.net_d(self.output) | |
l_g_gan = self.cri_gan(fake_g_pred, True, is_disc=False) | |
l_g_total += l_g_gan | |
loss_dict['l_g_gan'] = l_g_gan | |
l_g_total.backward() | |
self.optimizer_g.step() | |
# optimize net_d | |
for p in self.net_d.parameters(): | |
p.requires_grad = True | |
self.optimizer_d.zero_grad() | |
# real | |
real_d_pred = self.net_d(gan_gt) | |
l_d_real = self.cri_gan(real_d_pred, True, is_disc=True) | |
loss_dict['l_d_real'] = l_d_real | |
loss_dict['out_d_real'] = torch.mean(real_d_pred.detach()) | |
l_d_real.backward() | |
# fake | |
fake_d_pred = self.net_d(self.output.detach().clone()) # clone for pt1.9 | |
l_d_fake = self.cri_gan(fake_d_pred, False, is_disc=True) | |
loss_dict['l_d_fake'] = l_d_fake | |
loss_dict['out_d_fake'] = torch.mean(fake_d_pred.detach()) | |
l_d_fake.backward() | |
self.optimizer_d.step() | |
if self.ema_decay > 0: | |
self.model_ema(decay=self.ema_decay) | |
self.log_dict = self.reduce_loss_dict(loss_dict) | |