DAAF:Degradation-Aware Adaptive Fusion Framework for Robust Infrared and Visible Images Fusion
DAAF:Degradation-Aware Adaptive Fusion Framework for Robust Infrared and Visible Images Fusion
Existing infrared and visible image fusion(IVIF) algorithms often prioritize high-quality images, neglecting image degradation such as low light and noise, which limits the practical potential. This paper propose Degradation-Aware Adaptive image Fusion (DAAF), which achieves unified modeling of adaptive degradation optimization and image fusion. Specifically, DAAF comprises an auxiliary Adaptive Degradation Optimization Network (ADON) and a Feature Interactive Local-Global Fusion (FILGF) Network. Firstly, ADON includes infrared and visible-light branches. Within the infrared branch, frequency-domain feature decomposition and extraction are employed to isolate Gaussian and stripe noise. In the visible-light branch, Retinex decomposition is applied to extract illumination and reflectance components, enabling complementary enhancement of detail and illumination distribution. Subsequently, FILGF performs interactive multi-scale local-global feature fusion. Local feature fusion consists of intra-inter model feature complement, while global feature fusion is achieved through a interactive cross-model attention. Extensive experiments have shown that DAAF outperforms current IVIF algorithms in normal and complex degradation scenarios.
Tianpei Zhang、Jufeng Zhao、Yiming Zhu、Guangmang Cui、Yuxin Jing、Yuhan Lyu
光电子技术计算技术、计算机技术
Tianpei Zhang,Jufeng Zhao,Yiming Zhu,Guangmang Cui,Yuxin Jing,Yuhan Lyu.DAAF:Degradation-Aware Adaptive Fusion Framework for Robust Infrared and Visible Images Fusion[EB/OL].(2025-04-15)[2025-06-06].https://arxiv.org/abs/2504.10871.点此复制
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