CVNov 22, 2025

SD-PSFNet: Sequential and Dynamic Point Spread Function Network for Image Deraining

arXiv:2511.17993v11 citations
Originality Incremental advance
AI Analysis

It addresses image deraining for vision applications, offering a physics-aware approach that is incremental in combining dynamic modeling with sequential refinement.

The paper tackles the problem of image deraining by proposing SD-PSFNet, a sequential and dynamic network that uses Point Spread Function mechanisms to model rain degradation, achieving state-of-the-art PSNR/SSIM metrics such as 33.12dB/0.9371 on Rain100H.

Image deraining is crucial for vision applications but is challenged by the complex multi-scale physics of rain and its coupling with scenes. To address this challenge, a novel approach inspired by multi-stage image restoration is proposed, incorporating Point Spread Function (PSF) mechanisms to reveal the image degradation process while combining dynamic physical modeling with sequential feature fusion transfer, named SD-PSFNet. Specifically, SD-PSFNet employs a sequential restoration architecture with three cascaded stages, allowing multiple dynamic evaluations and refinements of the degradation process estimation. The network utilizes components with learned PSF mechanisms to dynamically simulate rain streak optics, enabling effective rain-background separation while progressively enhancing outputs through novel PSF components at each stage. Additionally, SD-PSFNet incorporates adaptive gated fusion for optimal cross-stage feature integration, enabling sequential refinement from coarse rain removal to fine detail restoration. Our model achieves state-of-the-art PSNR/SSIM metrics on Rain100H (33.12dB/0.9371), RealRain-1k-L (42.28dB/0.9872), and RealRain-1k-H (41.08dB/0.9838). In summary, SD-PSFNet demonstrates excellent capability in complex scenes and dense rainfall conditions, providing a new physics-aware approach to image deraining.

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