Image de-raining is a critical task in computer vision to improve visibility and enhance the robustness of outdoor vision systems. While recent advances in de-raining methods have achieved remarkable performance, the challenge remains to produce high-quality and visually pleasing de-rained results. In this paper, we present a reference-guided de-raining filter, a transformer network that enhances de-raining results using a reference clean image as guidance. We leverage the capabilities of the proposed module to further refine the images de-rained by existing methods. We validate our method on three datasets and show that our module can improve the performance of existing prior-based, CNN-based, and transformer-based approaches.
@article{arxiv.2408.00258,
title = {Improving Image De-raining Using Reference-Guided Transformers},
author = {Zihao Ye and Jaehoon Cho and Changjae Oh},
journal= {arXiv preprint arXiv:2408.00258},
year = {2024}
}