Code repo for "Cross-Scale Internal Graph Neural Network for Image Super-Resolution" [paper] [supp]
1 Download training dataset and test datasets from here.
2 Crop training dataset DIV2K to sub-images.
python ./datasets/prepare_DIV2K_subimages.py
Remember to modify the 'input_folder' and 'save_folder' in the above script.
The denoising code is tested with Python 3.7, PyTorch 1.1.0 and Cuda 9.0 but is likely to run with newer versions of PyTorch and Cuda.
1 Create conda environment.
conda create --name ignn
conda activate ignn
conda install pytorch=1.1.0 torchvision=0.3.0 cudatoolkit=9.0 -c pytorch
2 Install PyInn.
pip install git+https://github.com/szagoruyko/pyinn.git@master
3 Install matmul_cuda.
bash install.sh
4 Install other dependencies.
pip install -r requirements.txt
Downloading the pretrained models from this link and put them into ./ckpt
Use the following command to train the network:
python runner.py
--gpu [gpu_id]\
--phase 'train'\
--scale [2/3/4]\
--dataroot [dataset root]\
--out [output path]
Use the following command to resume training the network:
python runner.py
--gpu [gpu_id]\
--phase 'resume'\
--weights './ckpt/IGNN_x[2/3/4].pth'\
--scale [2/3/4]\
--dataroot [dataset root]\
--out [output path]
You can also use the following simple command with different settings in config.py:
python runner.py
Use the following command to test the network on benchmark datasets (w/ GT):
python runner.py \
--gpu [gpu_id]\
--phase 'test'\
--weights './ckpt/IGNN_x[2/3/4].pth'\
--scale [2/3/4]\
--dataroot [dataset root]\
--testname [Set5, Set14, BSD100, Urban100, Manga109]\
--out [output path]
Use the following command to test the network on your demo images (w/o GT):
python runner.py \
--gpu [gpu_id]\
--phase 'test'\
--weights './ckpt/IGNN_x[2/3/4].pth'\
--scale [2/3/4]\
--demopath [test folder path]\
--testname 'Demo'\
--out [output path]
You can also use the following simple command with different settings in config.py:
python runner.py
For visual comparison on the 5 benchmarks, you can download our IGNN results from here.
If you find our work useful for your research, please consider citing the following papers :)
@inproceedings{zhou2020cross,
title={Cross-scale internal graph neural network for image super-resolution},
author={Zhou, Shangchen and Zhang, Jiawei and Zuo, Wangmeng and Loy, Chen Change},
booktitle={Advances in Neural Information Processing Systems},
year={2020}
}
We are glad to hear from you. If you have any questions, please feel free to contact [email protected].
This project is open sourced under MIT license.