Xiang Ji1, Zhixiang Wang1,2, Shin'ichi Satoh2,1, Yinqiang Zheng1
1The University of Tokyo 2National Institute of Informatics
This repository provides the official PyTorch implementation of the paper.
This paper explores a novel in-between exposure mode called global reset release (GRR) shutter, which produces GS-like blur but with row-dependent blur magnitude. We take advantage of this unique characteristic of GRR to explore the latent frames within a single image and restore a clear counterpart by relying only on these latent contexts.
- Python and Pytorch
- Pyhotn=3.8 (Anaconda recommended)
- Pytorch=1.11.0
- CUDA=11.3/11.4
conda create -n rsst python=3.8
conda activate rsst
conda install pytorch==1.11.0 torchvision==0.12.0 torchaudio==0.11.0 cudatoolkit=11.3 -c pytorch
- Other packages
pip install -r requirements.txt
- Download datasets GRR_real and RSGR-GS_v1.
- Unzip them under a specified directory by yourself.
- The dataset folder structure should be like the format below (Minor adjustments to the folder structure of RSGR-GS_v1 may be needed.):
GRR_real
├─ train
│ ├─ seq1 % 50 sequences
│ │ ├─ GS
| | | ├─ PNG
| | | | ├─xxxx.png
| | | | ├─......
| | | ├─ RAW (same as PNG)
| | | | ├─ ......
│ │ ├─ RSGR (same as GS)
| | | ├─ ......
│ │
│─ validate % 7 sequences
│ ├─ ...... (same as train)
│
├─ test % 7 sequences
│ ├─ ...... (same as train)
- Please download checkpoints from this link and put them under root directory of this project.
To test RSS-T, please run the command below:
bash ./test.sh ### Please specify your data directory and output path in the script
To train RSS-T, please run the command below:
bash ./train.sh ### Please refer to the script for more info.
If you find our work useful, please kindly cite as:
@InProceedings{Ji_2023_ICCV,
author = {Ji, Xiang and Wang, Zhixiang and Satoh, Shin'ichi and Zheng, Yinqiang},
title = {Single Image Deblurring with Row-dependent Blur Magnitude},
booktitle = {Proceedings of the IEEE/CVF International Conference on Computer Vision (ICCV)},
month = {October},
year = {2023},
pages = {12269-12280}
}
This project is based on public works below: