光学
材料科学
变压器
反射率
折射率
激光束
衰减系数
光电子学
大气光学
遥感
作者
Qichen Zhang,Tong Zhang,Kaining Yang,Riffat Tehseen,Xue Dong,Pingli Han,Meng Xiang,Fei Liu
出处
期刊:Optics Express
[Optica Publishing Group]
日期:2026-03-24
卷期号:34 (8): 13950-13950
摘要
Foggy scenes pose significant challenges to image restoration due to complex light scattering, which reduces contrast and obscures fine details. Existing defogging methods that rely solely on intensity inputs struggle in dense fog conditions, lacking both physical priors and global reasoning capabilities. A novel dual-branch transformer-based architecture, termed PDFormer, is proposed to integrate physics-based and data-driven insights, aiming to jointly capture global context and recover fine-grained details: the intensity branch employs a hierarchical multiscale window-based Transformer to capture long-range dependencies and structural coherence, while the polarization branch leverages multi-angle polarization images to extract scattering-aware local features guided by physical priors. A lightweight fusion module adaptively integrates both branches, enabling comprehensive restoration across varying fog densities. Extensive experiments on both synthetic and real-world datasets demonstrate that PDFormer achieves state-of-the-art performance in terms of perceptual quality and quantitative metrics, effectively restoring visibility even under challenging atmospheric conditions.
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