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sr.py
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sr.py
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import torch
import data as Data
import model as Model
import argparse
import logging
import core.logger as Logger
import core.metrics as Metrics
from core.wandb_logger import WandbLogger
from tensorboardX import SummaryWriter
import os
import numpy as np
if __name__ == "__main__":
parser = argparse.ArgumentParser()
parser.add_argument('-c', '--config', type=str, default='config/sr_sr3_16_128.json',
help='JSON file for configuration')
parser.add_argument('-p', '--phase', type=str, choices=['train', 'val'],
help='Run either train(training) or val(generation)', default='train')
parser.add_argument('-gpu', '--gpu_ids', type=str, default=None)
parser.add_argument('-debug', '-d', action='store_true')
parser.add_argument('-enable_wandb', action='store_true')
parser.add_argument('-log_wandb_ckpt', action='store_true')
parser.add_argument('-log_eval', action='store_true')
# parse configs
args = parser.parse_args()
opt = Logger.parse(args)
# Convert to NoneDict, which return None for missing key.
opt = Logger.dict_to_nonedict(opt)
# logging
torch.backends.cudnn.enabled = True
torch.backends.cudnn.benchmark = True
Logger.setup_logger(None, opt['path']['log'],
'train', level=logging.INFO, screen=True)
Logger.setup_logger('val', opt['path']['log'], 'val', level=logging.INFO)
logger = logging.getLogger('base')
logger.info(Logger.dict2str(opt))
tb_logger = SummaryWriter(log_dir=opt['path']['tb_logger'])
# Initialize WandbLogger
if opt['enable_wandb']:
import wandb
wandb_logger = WandbLogger(opt)
wandb.define_metric('validation/val_step')
wandb.define_metric('epoch')
wandb.define_metric("validation/*", step_metric="val_step")
val_step = 0
else:
wandb_logger = None
# dataset
for phase, dataset_opt in opt['datasets'].items():
if phase == 'train' and args.phase != 'val':
train_set = Data.create_dataset(dataset_opt, phase)
train_loader = Data.create_dataloader(
train_set, dataset_opt, phase)
elif phase == 'val':
val_set = Data.create_dataset(dataset_opt, phase)
val_loader = Data.create_dataloader(
val_set, dataset_opt, phase)
logger.info('Initial Dataset Finished')
# model
diffusion = Model.create_model(opt)
logger.info('Initial Model Finished')
# Train
current_step = diffusion.begin_step
current_epoch = diffusion.begin_epoch
n_iter = opt['train']['n_iter']
if opt['path']['resume_state']:
logger.info('Resuming training from epoch: {}, iter: {}.'.format(
current_epoch, current_step))
diffusion.set_new_noise_schedule(
opt['model']['beta_schedule'][opt['phase']], schedule_phase=opt['phase'])
if opt['phase'] == 'train':
while current_step < n_iter:
current_epoch += 1
for _, train_data in enumerate(train_loader):
current_step += 1
if current_step > n_iter:
break
diffusion.feed_data(train_data)
diffusion.optimize_parameters()
# log
if current_step % opt['train']['print_freq'] == 0:
logs = diffusion.get_current_log()
message = '<epoch:{:3d}, iter:{:8,d}> '.format(
current_epoch, current_step)
for k, v in logs.items():
message += '{:s}: {:.4e} '.format(k, v)
tb_logger.add_scalar(k, v, current_step)
logger.info(message)
if wandb_logger:
wandb_logger.log_metrics(logs)
# validation
if current_step % opt['train']['val_freq'] == 0:
avg_psnr = 0.0
idx = 0
result_path = '{}/{}'.format(opt['path']
['results'], current_epoch)
os.makedirs(result_path, exist_ok=True)
diffusion.set_new_noise_schedule(
opt['model']['beta_schedule']['val'], schedule_phase='val')
for _, val_data in enumerate(val_loader):
idx += 1
diffusion.feed_data(val_data)
diffusion.test(continous=False)
visuals = diffusion.get_current_visuals()
sr_img = Metrics.tensor2img(visuals['SR']) # uint8
hr_img = Metrics.tensor2img(visuals['HR']) # uint8
lr_img = Metrics.tensor2img(visuals['LR']) # uint8
fake_img = Metrics.tensor2img(visuals['INF']) # uint8
# generation
Metrics.save_img(
hr_img, '{}/{}_{}_hr.png'.format(result_path, current_step, idx))
Metrics.save_img(
sr_img, '{}/{}_{}_sr.png'.format(result_path, current_step, idx))
Metrics.save_img(
lr_img, '{}/{}_{}_lr.png'.format(result_path, current_step, idx))
Metrics.save_img(
fake_img, '{}/{}_{}_inf.png'.format(result_path, current_step, idx))
tb_logger.add_image(
'Iter_{}'.format(current_step),
np.transpose(np.concatenate(
(fake_img, sr_img, hr_img), axis=1), [2, 0, 1]),
idx)
avg_psnr += Metrics.calculate_psnr(
sr_img, hr_img)
if wandb_logger:
wandb_logger.log_image(
f'validation_{idx}',
np.concatenate((fake_img, sr_img, hr_img), axis=1)
)
avg_psnr = avg_psnr / idx
diffusion.set_new_noise_schedule(
opt['model']['beta_schedule']['train'], schedule_phase='train')
# log
logger.info('# Validation # PSNR: {:.4e}'.format(avg_psnr))
logger_val = logging.getLogger('val') # validation logger
logger_val.info('<epoch:{:3d}, iter:{:8,d}> psnr: {:.4e}'.format(
current_epoch, current_step, avg_psnr))
# tensorboard logger
tb_logger.add_scalar('psnr', avg_psnr, current_step)
if wandb_logger:
wandb_logger.log_metrics({
'validation/val_psnr': avg_psnr,
'validation/val_step': val_step
})
val_step += 1
if current_step % opt['train']['save_checkpoint_freq'] == 0:
logger.info('Saving models and training states.')
diffusion.save_network(current_epoch, current_step)
if wandb_logger and opt['log_wandb_ckpt']:
wandb_logger.log_checkpoint(current_epoch, current_step)
if wandb_logger:
wandb_logger.log_metrics({'epoch': current_epoch-1})
# save model
logger.info('End of training.')
else:
logger.info('Begin Model Evaluation.')
avg_psnr = 0.0
avg_ssim = 0.0
idx = 0
result_path = '{}'.format(opt['path']['results'])
os.makedirs(result_path, exist_ok=True)
for _, val_data in enumerate(val_loader):
idx += 1
diffusion.feed_data(val_data)
diffusion.test(continous=True)
visuals = diffusion.get_current_visuals()
hr_img = Metrics.tensor2img(visuals['HR']) # uint8
lr_img = Metrics.tensor2img(visuals['LR']) # uint8
fake_img = Metrics.tensor2img(visuals['INF']) # uint8
sr_img_mode = 'grid'
if sr_img_mode == 'single':
# single img series
sr_img = visuals['SR'] # uint8
sample_num = sr_img.shape[0]
for iter in range(0, sample_num):
Metrics.save_img(
Metrics.tensor2img(sr_img[iter]), '{}/{}_{}_sr_{}.png'.format(result_path, current_step, idx, iter))
else:
# grid img
sr_img = Metrics.tensor2img(visuals['SR']) # uint8
Metrics.save_img(
sr_img, '{}/{}_{}_sr_process.png'.format(result_path, current_step, idx))
Metrics.save_img(
Metrics.tensor2img(visuals['SR'][-1]), '{}/{}_{}_sr.png'.format(result_path, current_step, idx))
Metrics.save_img(
hr_img, '{}/{}_{}_hr.png'.format(result_path, current_step, idx))
Metrics.save_img(
lr_img, '{}/{}_{}_lr.png'.format(result_path, current_step, idx))
Metrics.save_img(
fake_img, '{}/{}_{}_inf.png'.format(result_path, current_step, idx))
# generation
eval_psnr = Metrics.calculate_psnr(Metrics.tensor2img(visuals['SR'][-1]), hr_img)
eval_ssim = Metrics.calculate_ssim(Metrics.tensor2img(visuals['SR'][-1]), hr_img)
avg_psnr += eval_psnr
avg_ssim += eval_ssim
if wandb_logger and opt['log_eval']:
wandb_logger.log_eval_data(fake_img, Metrics.tensor2img(visuals['SR'][-1]), hr_img, eval_psnr, eval_ssim)
avg_psnr = avg_psnr / idx
avg_ssim = avg_ssim / idx
# log
logger.info('# Validation # PSNR: {:.4e}'.format(avg_psnr))
logger.info('# Validation # SSIM: {:.4e}'.format(avg_ssim))
logger_val = logging.getLogger('val') # validation logger
logger_val.info('<epoch:{:3d}, iter:{:8,d}> psnr: {:.4e}, ssim:{:.4e}'.format(
current_epoch, current_step, avg_psnr, avg_ssim))
if wandb_logger:
if opt['log_eval']:
wandb_logger.log_eval_table()
wandb_logger.log_metrics({
'PSNR': float(avg_psnr),
'SSIM': float(avg_ssim)
})