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TOPAL

This is an implement of the TOPAL, Target Oriented Perceptual Adversarial Fusion Network for Underwater Image Enhancement, Zhiying Jiang, Zhuoxiao Li, Shuzhou Yang, Xin Fan, Risheng Liu*, IEEE Transactions on Circuits and Systems for Video Technology (TCSVT), 2022.

Overview

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Installation

Clone this repo:

conda create -n TOPAL python=3.7
conda activate TOPAL
conda install pytorch torchvision torchaudio cudatoolkit=11.3 -c pytorch
pip3 install thop matplotlib scikit-image opencv-python yacs joblib natsort h5py tqdm

Download

Download the pre-trained model and put it in networks/model

Quick Run

Put the images you want to process in the Underwater folder.
To test the pre-trained models for Underwater Enhancement on your own images, run ​ python main.py ​
Results will be shown in Result folder.

Citation

If you use TOPAL, please consider citing:

@ARTICLE{TOPAL,
 author={Jiang, Zhiying and Li, Zhuoxiao and Yang, Shuzhou and Fan, Xin and Liu, Risheng},
 journal={IEEE Transactions on Circuits and Systems for Video Technology},
 title={Target Oriented Perceptual Adversarial Fusion Network for Underwater Image Enhancement},
 year={2022},
 pages={1-1},
 doi={10.1109/TCSVT.2022.3174817}}

Contact

Should you have any question, please contact Zhiying Jiang.

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TCSVT 2022 | Target Oriented Perceptual Adversarial Fusion Network for Underwater Image Enhancement.

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