Skip to content

JaguAroo/DASR

Repository files navigation

DASR

Pytorch implementation of "Unsupervised Degradation Representation Learning for Blind Super-Resolution", CVPR 2021

[arXiv] [CVF] [Supp]

Overview

Requirements

  • Python 3.6
  • PyTorch == 1.1.0
  • numpy
  • skimage
  • imageio
  • matplotlib
  • cv2

Train

1. Prepare training data

1.1 Download the DIV2K dataset and the Flickr2K dataset.

1.2 Combine the HR images from these two datasets in your_data_path/DF2K/HR to build the DF2K dataset.

2. Begin to train

Run ./main.sh to train on the DF2K dataset. Please update dir_data in the bash file as your_data_path.

Test

1. Prepare test data

Download benchmark datasets (e.g., Set5, Set14 and other test sets) and prepare HR/LR images in your_data_path/benchmark.

2. Begin to test

Run ./test.sh to test on benchmark datasets. Please update dir_data in the bash file as your_data_path.

Quick Test on An LR Image

Run ./quick_test.sh to test on an LR image. Please update img_dir in the bash file as your_img_path.

Visualization of Degradation Representations

Comparative Results

Noise-Free Degradations with Isotropic Gaussian Kernels

General Degradations with Anisotropic Gaussian Kernels and Noises

Unseen Degradations

Real Degradations (AIM real-world SR challenge)

Citation

@InProceedings{Wang2021Unsupervised,
  author    = {Wang, Longguang and Wang, Yingqian and Dong, Xiaoyu and Xu, Qingyu and Yang, Jungang and An, Wei and Guo, Yulan},
  title     = {Unsupervised Degradation Representation Learning for Blind Super-Resolution},
  booktitle = {CVPR},
  year      = {2021},
}

Acknowledgements

This code is built on EDSR (PyTorch), IKC and MoCo. We thank the authors for sharing the codes.

About

No description, website, or topics provided.

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published