MDeRainNet: An Efficient Macro-pixel Image Rain Removal Network
Tao Yan, Weijiang He, Chenglong Wang, Cihang Wei, Xiangjie Zhu, Yinghui Wang, Rynson W.H. Lau

TL;DR
MDeRainNet is a novel macro-pixel image-based network that leverages multi-scale encoding, Transformer-based attention, and semi-supervised learning to effectively remove rain streaks from light field images, outperforming existing methods.
Contribution
The paper introduces MDeRainNet, which exploits global correlations in 4D light field data using a Transformer-based module and semi-supervised training for improved rain removal.
Findings
Outperforms state-of-the-art methods quantitatively.
Effective in real-world rainy scenes.
Utilizes semi-supervised learning for better generalization.
Abstract
Since rainy weather always degrades image quality and poses significant challenges to most computer vision-based intelligent systems, image de-raining has been a hot research topic. Fortunately, in a rainy light field (LF) image, background obscured by rain streaks in one sub-view may be visible in the other sub-views, and implicit depth information and recorded 4D structural information may benefit rain streak detection and removal. However, existing LF image rain removal methods either do not fully exploit the global correlations of 4D LF data or only utilize partial sub-views, resulting in sub-optimal rain removal performance and no-equally good quality for all de-rained sub-views. In this paper, we propose an efficient network, called MDeRainNet, for rain streak removal from LF images. The proposed network adopts a multi-scale encoder-decoder architecture, which directly works on…
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Taxonomy
TopicsImage Enhancement Techniques
