Gradual Network for Single Image De-raining
Zhe Huang, Weijiang Yu, Wayne Zhang, Litong Feng, Nong Xiao

TL;DR
This paper introduces GraNet, a coarse-to-fine neural network that effectively removes diverse rain streaks from single images while preserving details, outperforming existing methods on synthetic and real data.
Contribution
The paper proposes a novel two-stage network architecture that captures coarse and fine rain streak features for improved single image de-raining.
Findings
Outperforms state-of-the-art methods on synthetic data
Effectively removes rain streaks of various scales and shapes
Preserves image details in rain-free regions
Abstract
Most advances in single image de-raining meet a key challenge, which is removing rain streaks with different scales and shapes while preserving image details. Existing single image de-raining approaches treat rain-streak removal as a process of pixel-wise regression directly. However, they are lacking in mining the balance between over-de-raining (e.g. removing texture details in rain-free regions) and under-de-raining (e.g. leaving rain streaks). In this paper, we firstly propose a coarse-to-fine network called Gradual Network (GraNet) consisting of coarse stage and fine stage for delving into single image de-raining with different granularities. Specifically, to reveal coarse-grained rain-streak characteristics (e.g. long and thick rain streaks/raindrops), we propose a coarse stage by utilizing local-global spatial dependencies via a local-global subnetwork composed of region-aware…
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