Structure-Informed Shadow Removal Networks
Yuhao Liu, Qing Guo, Lan Fu, Zhanghan Ke, Ke Xu, Wei Feng, Ivor W., Tsang, and Rynson W.H. Lau

TL;DR
This paper introduces StructNet, a novel deep learning approach that removes shadows by reconstructing and leveraging image structure information, effectively reducing shadow remnants and improving shadow removal quality.
Contribution
The paper proposes a structure-informed shadow removal network that reconstructs shadow-free structures and guides shadow removal, with novel modules and an extension for multi-level structure information.
Findings
Outperforms existing shadow removal methods on benchmark datasets.
Effectively reduces shadow remnants in homogeneous regions.
Can be integrated with other methods for enhanced performance.
Abstract
Existing deep learning-based shadow removal methods still produce images with shadow remnants. These shadow remnants typically exist in homogeneous regions with low-intensity values, making them untraceable in the existing image-to-image mapping paradigm. We observe that shadows mainly degrade images at the image-structure level (in which humans perceive object shapes and continuous colors). Hence, in this paper, we propose to remove shadows at the image structure level. Based on this idea, we propose a novel structure-informed shadow removal network (StructNet) to leverage the image-structure information to address the shadow remnant problem. Specifically, StructNet first reconstructs the structure information of the input image without shadows and then uses the restored shadow-free structure prior to guiding the image-level shadow removal. StructNet contains two main novel modules:…
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Taxonomy
TopicsOil Spill Detection and Mitigation · Remote-Sensing Image Classification · Impact of Light on Environment and Health
