SAM-DiffSR / SwinIR /main_test_swinir.py
Traly's picture
fix-1
e9b996f
import argparse
import cv2
import glob
import numpy as np
from collections import OrderedDict
import os
import torch
import requests
from models.network_swinir import SwinIR as net
from utils import util_calculate_psnr_ssim as util
def main():
parser = argparse.ArgumentParser()
parser.add_argument('--task', type=str, default='color_dn', help='classical_sr, lightweight_sr, real_sr, '
'gray_dn, color_dn, jpeg_car, color_jpeg_car')
parser.add_argument('--scale', type=int, default=1, help='scale factor: 1, 2, 3, 4, 8') # 1 for dn and jpeg car
parser.add_argument('--noise', type=int, default=15, help='noise level: 15, 25, 50')
parser.add_argument('--jpeg', type=int, default=40, help='scale factor: 10, 20, 30, 40')
parser.add_argument('--training_patch_size', type=int, default=128, help='patch size used in training SwinIR. '
'Just used to differentiate two different settings in Table 2 of the paper. '
'Images are NOT tested patch by patch.')
parser.add_argument('--large_model', action='store_true', help='use large model, only provided for real image sr')
parser.add_argument('--model_path', type=str,
default='model_zoo/swinir/001_classicalSR_DIV2K_s48w8_SwinIR-M_x2.pth')
parser.add_argument('--folder_lq', type=str, default=None, help='input low-quality test image folder')
parser.add_argument('--folder_gt', type=str, default=None, help='input ground-truth test image folder')
parser.add_argument('--tile', type=int, default=None, help='Tile size, None for no tile during testing (testing as a whole)')
parser.add_argument('--tile_overlap', type=int, default=32, help='Overlapping of different tiles')
args = parser.parse_args()
device = torch.device('cuda' if torch.cuda.is_available() else 'cpu')
# set up model
if os.path.exists(args.model_path):
print(f'loading model from {args.model_path}')
else:
os.makedirs(os.path.dirname(args.model_path), exist_ok=True)
url = 'https://github.com/JingyunLiang/SwinIR/releases/download/v0.0/{}'.format(os.path.basename(args.model_path))
r = requests.get(url, allow_redirects=True)
print(f'downloading model {args.model_path}')
open(args.model_path, 'wb').write(r.content)
model = define_model(args)
model.eval()
model = model.to(device)
# setup folder and path
folder, save_dir, border, window_size = setup(args)
os.makedirs(save_dir, exist_ok=True)
test_results = OrderedDict()
test_results['psnr'] = []
test_results['ssim'] = []
test_results['psnr_y'] = []
test_results['ssim_y'] = []
test_results['psnrb'] = []
test_results['psnrb_y'] = []
psnr, ssim, psnr_y, ssim_y, psnrb, psnrb_y = 0, 0, 0, 0, 0, 0
for idx, path in enumerate(sorted(glob.glob(os.path.join(folder, '*')))):
# read image
imgname, img_lq, img_gt = get_image_pair(args, path) # image to HWC-BGR, float32
img_lq = np.transpose(img_lq if img_lq.shape[2] == 1 else img_lq[:, :, [2, 1, 0]], (2, 0, 1)) # HCW-BGR to CHW-RGB
img_lq = torch.from_numpy(img_lq).float().unsqueeze(0).to(device) # CHW-RGB to NCHW-RGB
# inference
with torch.no_grad():
# pad input image to be a multiple of window_size
_, _, h_old, w_old = img_lq.size()
h_pad = (h_old // window_size + 1) * window_size - h_old
w_pad = (w_old // window_size + 1) * window_size - w_old
img_lq = torch.cat([img_lq, torch.flip(img_lq, [2])], 2)[:, :, :h_old + h_pad, :]
img_lq = torch.cat([img_lq, torch.flip(img_lq, [3])], 3)[:, :, :, :w_old + w_pad]
output = test(img_lq, model, args, window_size)
output = output[..., :h_old * args.scale, :w_old * args.scale]
# save image
output = output.data.squeeze().float().cpu().clamp_(0, 1).numpy()
if output.ndim == 3:
output = np.transpose(output[[2, 1, 0], :, :], (1, 2, 0)) # CHW-RGB to HCW-BGR
output = (output * 255.0).round().astype(np.uint8) # float32 to uint8
cv2.imwrite(f'{save_dir}/{imgname}_SwinIR.png', output)
# evaluate psnr/ssim/psnr_b
if img_gt is not None:
img_gt = (img_gt * 255.0).round().astype(np.uint8) # float32 to uint8
img_gt = img_gt[:h_old * args.scale, :w_old * args.scale, ...] # crop gt
img_gt = np.squeeze(img_gt)
psnr = util.calculate_psnr(output, img_gt, crop_border=border)
ssim = util.calculate_ssim(output, img_gt, crop_border=border)
test_results['psnr'].append(psnr)
test_results['ssim'].append(ssim)
if img_gt.ndim == 3: # RGB image
psnr_y = util.calculate_psnr(output, img_gt, crop_border=border, test_y_channel=True)
ssim_y = util.calculate_ssim(output, img_gt, crop_border=border, test_y_channel=True)
test_results['psnr_y'].append(psnr_y)
test_results['ssim_y'].append(ssim_y)
if args.task in ['jpeg_car', 'color_jpeg_car']:
psnrb = util.calculate_psnrb(output, img_gt, crop_border=border, test_y_channel=False)
test_results['psnrb'].append(psnrb)
if args.task in ['color_jpeg_car']:
psnrb_y = util.calculate_psnrb(output, img_gt, crop_border=border, test_y_channel=True)
test_results['psnrb_y'].append(psnrb_y)
print('Testing {:d} {:20s} - PSNR: {:.2f} dB; SSIM: {:.4f}; PSNRB: {:.2f} dB;'
'PSNR_Y: {:.2f} dB; SSIM_Y: {:.4f}; PSNRB_Y: {:.2f} dB.'.
format(idx, imgname, psnr, ssim, psnrb, psnr_y, ssim_y, psnrb_y))
else:
print('Testing {:d} {:20s}'.format(idx, imgname))
# summarize psnr/ssim
if img_gt is not None:
ave_psnr = sum(test_results['psnr']) / len(test_results['psnr'])
ave_ssim = sum(test_results['ssim']) / len(test_results['ssim'])
print('\n{} \n-- Average PSNR/SSIM(RGB): {:.2f} dB; {:.4f}'.format(save_dir, ave_psnr, ave_ssim))
if img_gt.ndim == 3:
ave_psnr_y = sum(test_results['psnr_y']) / len(test_results['psnr_y'])
ave_ssim_y = sum(test_results['ssim_y']) / len(test_results['ssim_y'])
print('-- Average PSNR_Y/SSIM_Y: {:.2f} dB; {:.4f}'.format(ave_psnr_y, ave_ssim_y))
if args.task in ['jpeg_car', 'color_jpeg_car']:
ave_psnrb = sum(test_results['psnrb']) / len(test_results['psnrb'])
print('-- Average PSNRB: {:.2f} dB'.format(ave_psnrb))
if args.task in ['color_jpeg_car']:
ave_psnrb_y = sum(test_results['psnrb_y']) / len(test_results['psnrb_y'])
print('-- Average PSNRB_Y: {:.2f} dB'.format(ave_psnrb_y))
def define_model(args):
# 001 classical image sr
if args.task == 'classical_sr':
model = net(upscale=args.scale, in_chans=3, img_size=args.training_patch_size, window_size=8,
img_range=1., depths=[6, 6, 6, 6, 6, 6], embed_dim=180, num_heads=[6, 6, 6, 6, 6, 6],
mlp_ratio=2, upsampler='pixelshuffle', resi_connection='1conv')
param_key_g = 'params'
# 002 lightweight image sr
# use 'pixelshuffledirect' to save parameters
elif args.task == 'lightweight_sr':
model = net(upscale=args.scale, in_chans=3, img_size=64, window_size=8,
img_range=1., depths=[6, 6, 6, 6], embed_dim=60, num_heads=[6, 6, 6, 6],
mlp_ratio=2, upsampler='pixelshuffledirect', resi_connection='1conv')
param_key_g = 'params'
# 003 real-world image sr
elif args.task == 'real_sr':
if not args.large_model:
# use 'nearest+conv' to avoid block artifacts
model = net(upscale=args.scale, in_chans=3, img_size=64, window_size=8,
img_range=1., depths=[6, 6, 6, 6, 6, 6], embed_dim=180, num_heads=[6, 6, 6, 6, 6, 6],
mlp_ratio=2, upsampler='nearest+conv', resi_connection='1conv')
else:
# larger model size; use '3conv' to save parameters and memory; use ema for GAN training
model = net(upscale=args.scale, in_chans=3, img_size=64, window_size=8,
img_range=1., depths=[6, 6, 6, 6, 6, 6, 6, 6, 6], embed_dim=240,
num_heads=[8, 8, 8, 8, 8, 8, 8, 8, 8],
mlp_ratio=2, upsampler='nearest+conv', resi_connection='3conv')
param_key_g = 'params_ema'
# 004 grayscale image denoising
elif args.task == 'gray_dn':
model = net(upscale=1, in_chans=1, img_size=128, window_size=8,
img_range=1., depths=[6, 6, 6, 6, 6, 6], embed_dim=180, num_heads=[6, 6, 6, 6, 6, 6],
mlp_ratio=2, upsampler='', resi_connection='1conv')
param_key_g = 'params'
# 005 color image denoising
elif args.task == 'color_dn':
model = net(upscale=1, in_chans=3, img_size=128, window_size=8,
img_range=1., depths=[6, 6, 6, 6, 6, 6], embed_dim=180, num_heads=[6, 6, 6, 6, 6, 6],
mlp_ratio=2, upsampler='', resi_connection='1conv')
param_key_g = 'params'
# 006 grayscale JPEG compression artifact reduction
# use window_size=7 because JPEG encoding uses 8x8; use img_range=255 because it's sligtly better than 1
elif args.task == 'jpeg_car':
model = net(upscale=1, in_chans=1, img_size=126, window_size=7,
img_range=255., depths=[6, 6, 6, 6, 6, 6], embed_dim=180, num_heads=[6, 6, 6, 6, 6, 6],
mlp_ratio=2, upsampler='', resi_connection='1conv')
param_key_g = 'params'
# 006 color JPEG compression artifact reduction
# use window_size=7 because JPEG encoding uses 8x8; use img_range=255 because it's sligtly better than 1
elif args.task == 'color_jpeg_car':
model = net(upscale=1, in_chans=3, img_size=126, window_size=7,
img_range=255., depths=[6, 6, 6, 6, 6, 6], embed_dim=180, num_heads=[6, 6, 6, 6, 6, 6],
mlp_ratio=2, upsampler='', resi_connection='1conv')
param_key_g = 'params'
pretrained_model = torch.load(args.model_path)
model.load_state_dict(pretrained_model[param_key_g] if param_key_g in pretrained_model.keys() else pretrained_model, strict=True)
return model
def setup(args):
# 001 classical image sr/ 002 lightweight image sr
if args.task in ['classical_sr', 'lightweight_sr']:
save_dir = f'results/swinir_{args.task}_x{args.scale}'
folder = args.folder_gt
border = args.scale
window_size = 8
# 003 real-world image sr
elif args.task in ['real_sr']:
save_dir = f'results/swinir_{args.task}_x{args.scale}'
if args.large_model:
save_dir += '_large'
folder = args.folder_lq
border = 0
window_size = 8
# 004 grayscale image denoising/ 005 color image denoising
elif args.task in ['gray_dn', 'color_dn']:
save_dir = f'results/swinir_{args.task}_noise{args.noise}'
folder = args.folder_gt
border = 0
window_size = 8
# 006 JPEG compression artifact reduction
elif args.task in ['jpeg_car', 'color_jpeg_car']:
save_dir = f'results/swinir_{args.task}_jpeg{args.jpeg}'
folder = args.folder_gt
border = 0
window_size = 7
return folder, save_dir, border, window_size
def get_image_pair(args, path):
(imgname, imgext) = os.path.splitext(os.path.basename(path))
# 001 classical image sr/ 002 lightweight image sr (load lq-gt image pairs)
if args.task in ['classical_sr', 'lightweight_sr']:
img_gt = cv2.imread(path, cv2.IMREAD_COLOR).astype(np.float32) / 255.
img_lq = cv2.imread(f'{args.folder_lq}/{imgname}x{args.scale}{imgext}', cv2.IMREAD_COLOR).astype(
np.float32) / 255.
# 003 real-world image sr (load lq image only)
elif args.task in ['real_sr']:
img_gt = None
img_lq = cv2.imread(path, cv2.IMREAD_COLOR).astype(np.float32) / 255.
# 004 grayscale image denoising (load gt image and generate lq image on-the-fly)
elif args.task in ['gray_dn']:
img_gt = cv2.imread(path, cv2.IMREAD_GRAYSCALE).astype(np.float32) / 255.
np.random.seed(seed=0)
img_lq = img_gt + np.random.normal(0, args.noise / 255., img_gt.shape)
img_gt = np.expand_dims(img_gt, axis=2)
img_lq = np.expand_dims(img_lq, axis=2)
# 005 color image denoising (load gt image and generate lq image on-the-fly)
elif args.task in ['color_dn']:
img_gt = cv2.imread(path, cv2.IMREAD_COLOR).astype(np.float32) / 255.
np.random.seed(seed=0)
img_lq = img_gt + np.random.normal(0, args.noise / 255., img_gt.shape)
# 006 grayscale JPEG compression artifact reduction (load gt image and generate lq image on-the-fly)
elif args.task in ['jpeg_car']:
img_gt = cv2.imread(path, cv2.IMREAD_UNCHANGED)
if img_gt.ndim != 2:
img_gt = util.bgr2ycbcr(img_gt, y_only=True)
result, encimg = cv2.imencode('.jpg', img_gt, [int(cv2.IMWRITE_JPEG_QUALITY), args.jpeg])
img_lq = cv2.imdecode(encimg, 0)
img_gt = np.expand_dims(img_gt, axis=2).astype(np.float32) / 255.
img_lq = np.expand_dims(img_lq, axis=2).astype(np.float32) / 255.
# 006 JPEG compression artifact reduction (load gt image and generate lq image on-the-fly)
elif args.task in ['color_jpeg_car']:
img_gt = cv2.imread(path)
result, encimg = cv2.imencode('.jpg', img_gt, [int(cv2.IMWRITE_JPEG_QUALITY), args.jpeg])
img_lq = cv2.imdecode(encimg, 1)
img_gt = img_gt.astype(np.float32)/ 255.
img_lq = img_lq.astype(np.float32)/ 255.
return imgname, img_lq, img_gt
def test(img_lq, model, args, window_size):
if args.tile is None:
# test the image as a whole
output = model(img_lq)
else:
# test the image tile by tile
b, c, h, w = img_lq.size()
tile = min(args.tile, h, w)
assert tile % window_size == 0, "tile size should be a multiple of window_size"
tile_overlap = args.tile_overlap
sf = args.scale
stride = tile - tile_overlap
h_idx_list = list(range(0, h-tile, stride)) + [h-tile]
w_idx_list = list(range(0, w-tile, stride)) + [w-tile]
E = torch.zeros(b, c, h*sf, w*sf).type_as(img_lq)
W = torch.zeros_like(E)
for h_idx in h_idx_list:
for w_idx in w_idx_list:
in_patch = img_lq[..., h_idx:h_idx+tile, w_idx:w_idx+tile]
out_patch = model(in_patch)
out_patch_mask = torch.ones_like(out_patch)
E[..., h_idx*sf:(h_idx+tile)*sf, w_idx*sf:(w_idx+tile)*sf].add_(out_patch)
W[..., h_idx*sf:(h_idx+tile)*sf, w_idx*sf:(w_idx+tile)*sf].add_(out_patch_mask)
output = E.div_(W)
return output
if __name__ == '__main__':
main()