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CAWM-Mamba: A unified model for infrared-visible image fusion and compound adverse weather restoration

About

Multimodal Image Fusion (MMIF) integrates complementary information from various modalities to produce clearer and more informative fused images. MMIF under adverse weather is particularly crucial in autonomous driving and UAV monitoring applications. However, existing adverse weather fusion methods generally only tackle single types of degradation such as haze, rain, or snow, and fail when multiple degradations coexist (e.g., haze+rain, rain+snow). To address this challenge, we propose Compound Adverse Weather Mamba (CAWM-Mamba), the first end-to-end framework that jointly performs image fusion and compound weather restoration with unified shared weights. Our network contains three key components: (1) a Weather-Aware Preprocess Module (WAPM) to enhance degraded visible features and extracts global weather embeddings; (2) a Cross-modal Feature Interaction Module (CFIM) to facilitate the alignment of heterogeneous modalities and exchange of complementary features across modalities; and (3) a Wavelet Space State Block (WSSB) that leverages wavelet-domain decomposition to decouple multi-frequency degradations. WSSB includes Freq-SSM, a module that models anisotropic high-frequency degradation without redundancy, and a unified degradation representation mechanism to further improve generalization across complex compound weather conditions. Extensive experiments on the AWMM-100K benchmark and three standard fusion datasets demonstrate that CAWM-Mamba consistently outperforms state-of-the-art methods in both compound and single-weather scenarios. In addition, our fusion results excel in downstream tasks covering semantic segmentation and object detection, confirming the practical value in real-world adverse weather perception. The source code will be available at https://github.com/Feecuin/CAWM-Mamba.

Huichun Liu, Xiaosong Li, Zhuangfan Huang, Tao Ye, Yang Liu, Haishu Tan• 2026

Related benchmarks

TaskDatasetResultRank
Object DetectionM3FD
AP@[0.5:0.95]52.8
35
Image FusionMSRS
QMI78.98
11
Infrared and Visible Image FusionAWMM-100K (Haze&Rain)
QMI36.04
11
Infrared and Visible Image FusionAWMM-100K Rain&Snow
QMI0.477
11
Infrared and Visible Image FusionAWMM-100K Haze&Snow
QMI0.3675
11
Infrared and Visible Image FusionAWMM-100K Rain (test)
QMI0.431
11
Infrared and Visible Image FusionAWMM-100K Haze (test)
QMI0.5008
11
Infrared and Visible Image FusionAWMM-100K Snow (test)
QMI0.5322
11
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