计算机科学
目标检测
恶劣天气
计算机视觉
人工智能
传感器融合
数据挖掘
机器学习
稳健性(进化)
融合
可靠性(半导体)
代表(政治)
模式识别(心理学)
构造(python库)
建筑
理论(学习稳定性)
图像融合
图像分割
特征提取
计算复杂性理论
编码(集合论)
变更检测
资源(消歧)
高光谱成像
作者
Haoyuan Li,Qi Hu,Binjia Zhou,You Yao,Jiacheng Lin,Kailun Yang,Peng Chen
标识
DOI:10.1109/tcsvt.2025.3587918
摘要
Visible-infrared image pairs provide complementary information, enhancing the reliability and robustness of object detection applications in real-world scenarios. However, most existing methods face challenges in maintaining robustness under complex weather conditions, which limits their applicability. Meanwhile, the reliance on attention mechanisms in modality fusion introduces significant computational complexity and storage overhead, particularly when dealing with high-resolution images. To address these challenges, we propose the Cross-modality Fusion Mamba with Weather-removal (CFMW) to augment stability and cost-effectiveness under adverse weather conditions. Leveraging the proposed Perturbation-Adaptive Diffusion Model (PADM) and Cross-modality Fusion Mamba (CFM) modules, CFMW is able to reconstruct visual features affected by adverse weather, enriching the representation of image details. With efficient architecture design, CFMW is 3 times faster than Transformer-style fusion (e.g., CFT). To bridge the gap in relevant datasets, we construct a new Severe Weather Visible-Infrared (SWVI) dataset, encompassing diverse adverse weather scenarios such as rain, haze, and snow. The dataset contains 64, 281 paired visible-infrared images, providing a valuable resource for future research. Extensive experiments on public datasets (i.e., M3FD and LLVIP) and the newly constructed SWVI dataset conclusively demonstrate that CFMW achieves state-of-the-art detection performance. Both the dataset and source code will be made publicly available at https://github.com/lhy-zjut/CFMW.
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