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{Song Wang Yanting Liu Xinyi Wu Zhenyao Wu Hui Yin Jin Wan}

Abstract
Shadow removal is an important topic in image restoration, and it can benefit many computer vision tasks. State-of-the-art shadow-removal methods typically employ deep learning by minimizing a pixel-level difference between the de-shadowed region and their corresponding (pseudo) shadow-free version. After shadow removal, the shadow and non-shadow regions may exhibit inconsistent appearance, leading to a visually disharmonious image. To address this problem, we propose a style-guided shadow removal network (SG-ShadowNet) for better image-style consistency after shadow removal. In SG-ShadowNet, we first learn the style representation of the non-shadow region via a simple region style estimator. Then we propose a novel effective normalization strategy with the region-level style to adjust the coarsely re-covered shadow region to be more harmonized with the rest of the image. Extensive experiments show that our proposed SG-ShadowNet outperforms all the existing competitive models and achieves a new state-of-the-art performance on ISTD+, SRD, and Video Shadow Removal benchmark datasets. Code is available at: https://github.com/jinwan1994/SG-ShadowNet.
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| shadow-removal-on-istd-1 | SG-ShadowNet (ECCV 2022) (256x256) | LPIPS: 0.369 PSNR: 26.8 RMSE: 3.32 SSIM: 0.717 |
| shadow-removal-on-istd-1 | SG-ShadowNet (ECCV 2022) (512x512) | LPIPS: 0.205 PSNR: 28.25 RMSE: 2.98 SSIM: 0.849 |
| shadow-removal-on-srd | SG-ShadowNet (ECCV 2022) (256x256) | LPIPS: 0.443 PSNR: 24.1 RMSE: 4.6 SSIM: 0.636 |
| shadow-removal-on-srd | SG-ShadowNet (ECCV 2022) (512x512) | LPIPS: 0.279 PSNR: 25.56 RMSE: 4.01 SSIM: 0.786 |
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