Towards Rolling Shutter Correction and Deblurring in Dynamic Scenes (CVPR2021)

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Deep LearningRSCD
Overview

RSCD (BS-RSCD & JCD)

Towards Rolling Shutter Correction and Deblurring in Dynamic Scenes (CVPR2021)

by Zhihang Zhong, Yinqiang Zheng, Imari Sato

We contributed the first real-world dataset (BS-RSCD) and end-to-end model (JCD) for joint rolling shutter correction and deblurring task.

We collected the data samples using the proposed beam-splitter acquisition system as below:
image

In the near future, we will add more data samples with larger distortion to the dataset...

Prerequisites

Install the dependent packages:

conda create -n rscd python=3.8
conda activate rscd
sh install.sh

Download lmdb file of BS-RSCD (or Fastec-RS for RSC task).

(PS, for how to create lmdb file, you can refer to ./data/create_rscd_lmdb.ipynb)

Training

Please specify the <path> (e.g. "./dataset/ ") where you put the dataset file or change the default value in " ./para/paramter.py".

Train JCD on BS-RSCD:

python main.py --data_root <path> --model JCD --dataset rscd_lmdb --video

Train JCD on Fastec-RS:

python main.py --data_root <path> --model JCD --dataset fastec_rs_lmdb --video

Testing

Please download checkpoints and unzip it under the main directory.

Run a pre-trained model:

python main.py --test_only --test_checkpoint ./checkpoints/JCD_BS-RSCD.tar --video

Citing

If BS-RSCD and JCD are useful for your research, please consider citing:

@InProceedings{Zhong_2021_Towards,
  title={Towards Rolling Shutter Correction and Deblurring in Dynamic Scenes},
  author={Zhong, Zhihang and Zheng, Yinqiang and Sato, Imari},
  booktitle={Proceedings of the IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)},
  month = {June},
  year={2021}
}
Owner
Ph.D. Candidate, Department of Computer Science, The University of Tokyo
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