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Papers/ShadowDiffusion: When Degradation Prior Meets Diffusion Mo...

ShadowDiffusion: When Degradation Prior Meets Diffusion Model for Shadow Removal

Lanqing Guo, Chong Wang, Wenhan Yang, Siyu Huang, YuFei Wang, Hanspeter Pfister, Bihan Wen

2022-12-09CVPR 2023 1Shadow RemovalImage Shadow RemovalImage RestorationImage GenerationRolling Shutter Correction
PaperPDFCode(official)

Abstract

Recent deep learning methods have achieved promising results in image shadow removal. However, their restored images still suffer from unsatisfactory boundary artifacts, due to the lack of degradation prior embedding and the deficiency in modeling capacity. Our work addresses these issues by proposing a unified diffusion framework that integrates both the image and degradation priors for highly effective shadow removal. In detail, we first propose a shadow degradation model, which inspires us to build a novel unrolling diffusion model, dubbed ShandowDiffusion. It remarkably improves the model's capacity in shadow removal via progressively refining the desired output with both degradation prior and diffusive generative prior, which by nature can serve as a new strong baseline for image restoration. Furthermore, ShadowDiffusion progressively refines the estimated shadow mask as an auxiliary task of the diffusion generator, which leads to more accurate and robust shadow-free image generation. We conduct extensive experiments on three popular public datasets, including ISTD, ISTD+, and SRD, to validate our method's effectiveness. Compared to the state-of-the-art methods, our model achieves a significant improvement in terms of PSNR, increasing from 31.69dB to 34.73dB over SRD dataset.

Results

TaskDatasetMetricValueModel
Image EditingSRDLPIPS0.363ShadowDiffusion (CVPR 2023) (256x256)
Image EditingSRDPSNR23.26ShadowDiffusion (CVPR 2023) (256x256)
Image EditingSRDRMSE4.84ShadowDiffusion (CVPR 2023) (256x256)
Image EditingSRDSSIM0.684ShadowDiffusion (CVPR 2023) (256x256)
Image EditingSRDLPIPS0.24ShadowDiffusion (CVPR 2023) (512x512)
Image EditingSRDPSNR23.09ShadowDiffusion (CVPR 2023) (512x512)
Image EditingSRDRMSE5.11ShadowDiffusion (CVPR 2023) (512x512)
Image EditingSRDSSIM0.804ShadowDiffusion (CVPR 2023) (512x512)
Image EditingISTD+LPIPS0.222ShadowDiffusion (CVPR 2023) (512x512)
Image EditingISTD+PSNR27.87ShadowDiffusion (CVPR 2023) (512x512)
Image EditingISTD+RMSE3.1ShadowDiffusion (CVPR 2023) (512x512)
Image EditingISTD+SSIM0.839ShadowDiffusion (CVPR 2023) (512x512)
Image EditingISTD+LPIPS0.404ShadowDiffusion (CVPR 2023) (256x256)
Image EditingISTD+PSNR26.51ShadowDiffusion (CVPR 2023) (256x256)
Image EditingISTD+RMSE3.44ShadowDiffusion (CVPR 2023) (256x256)
Image EditingISTD+SSIM0.688ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalSRDLPIPS0.363ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalSRDPSNR23.26ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalSRDRMSE4.84ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalSRDSSIM0.684ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalSRDLPIPS0.24ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalSRDPSNR23.09ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalSRDRMSE5.11ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalSRDSSIM0.804ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalISTD+LPIPS0.222ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalISTD+PSNR27.87ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalISTD+RMSE3.1ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalISTD+SSIM0.839ShadowDiffusion (CVPR 2023) (512x512)
Shadow RemovalISTD+LPIPS0.404ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalISTD+PSNR26.51ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalISTD+RMSE3.44ShadowDiffusion (CVPR 2023) (256x256)
Shadow RemovalISTD+SSIM0.688ShadowDiffusion (CVPR 2023) (256x256)
16kSRDLPIPS0.363ShadowDiffusion (CVPR 2023) (256x256)
16kSRDPSNR23.26ShadowDiffusion (CVPR 2023) (256x256)
16kSRDRMSE4.84ShadowDiffusion (CVPR 2023) (256x256)
16kSRDSSIM0.684ShadowDiffusion (CVPR 2023) (256x256)
16kSRDLPIPS0.24ShadowDiffusion (CVPR 2023) (512x512)
16kSRDPSNR23.09ShadowDiffusion (CVPR 2023) (512x512)
16kSRDRMSE5.11ShadowDiffusion (CVPR 2023) (512x512)
16kSRDSSIM0.804ShadowDiffusion (CVPR 2023) (512x512)
16kISTD+LPIPS0.222ShadowDiffusion (CVPR 2023) (512x512)
16kISTD+PSNR27.87ShadowDiffusion (CVPR 2023) (512x512)
16kISTD+RMSE3.1ShadowDiffusion (CVPR 2023) (512x512)
16kISTD+SSIM0.839ShadowDiffusion (CVPR 2023) (512x512)
16kISTD+LPIPS0.404ShadowDiffusion (CVPR 2023) (256x256)
16kISTD+PSNR26.51ShadowDiffusion (CVPR 2023) (256x256)
16kISTD+RMSE3.44ShadowDiffusion (CVPR 2023) (256x256)
16kISTD+SSIM0.688ShadowDiffusion (CVPR 2023) (256x256)

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