DAAF:Degradation-Aware Adaptive Fusion Framework for Robust Infrared and Visible Images Fusion
- URL: http://arxiv.org/abs/2504.10871v1
- Date: Tue, 15 Apr 2025 05:02:49 GMT
- Title: DAAF:Degradation-Aware Adaptive Fusion Framework for Robust Infrared and Visible Images Fusion
- Authors: Tianpei Zhang, Jufeng Zhao, Yiming Zhu, Guangmang Cui, Yuxin Jing, Yuhan Lyu,
- Abstract summary: Existing infrared and visible image fusion(IVIF) algorithms prioritize high-quality images, neglecting image degradation such as low light and noise.<n>This paper propose Degradation-Aware Adaptive image Fusion (DAAF), which achieves unified modeling of adaptive degradation optimization and image fusion.
- Score: 7.123531685299389
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: 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.
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