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[TAI 2023] Appearance Enhancement for Camera-captured Document Images in the Wild

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GCDRNet

This repository contains the inference code for our paper Appearance Enhancement for Camera-captured Document Images in the Wild, which has been accepted for IEEE Transactions on Artificial Intelligence.

Inference (model weights can be downloaded here)

Place the distorted image in the folder ./distorted, run the following command, and the results will be saved in the folder ./enhanced.

python infer.py

RealDAE

RealDAE (Real-world Document Image Appearance Enhancement) is a real-world dataset designed explicitly for camera-captured document images in the wild. It containes 600 pairs of degraded camera-captured document images and corresponding manually enhanced ground-truths (aligned at the pixel level). It can be downloaded here. Some examples are illustrated as below.

Citation

If you are using our code and data, please cite our paper.

@article{zhang2023appearance,
title={Appearance Enhancement for Camera-captured Document Images in the Wild},
author={Zhang, Jiaxin and Liang, Lingyu and Ding, Kai and Guo, Fengjun and Jin, Lianwen},
journal={IEEE Transactions on Artificial Intelligence},
year={2023}}

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