Zhihui kongzhi yu fangzhen (Apr 2025)

Intelligent detection of camouflage object based on visible-infrared feature-level fusion in low-light conditions

  • GONG Jincheng, SUN Dianxing, PENG Ruihui, XU Le, ZHANG Yihong

DOI
https://doi.org/10.3969/j.issn.1673-3819.2025.02.005
Journal volume & issue
Vol. 47, no. 2
pp. 40 – 49

Abstract

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Camouflaged targets detection in low-light environments is one of the challenges in the field of deception detection. Especially with the continuous advancement of camouflaged technology, targets are highly integrated with their environmental background. Poor lighting conditions can often lead to performance degradation in conventional single-modal detection algorithms. To address this issue, this paper proposes a feature-level fusion network guided by the object detection task. First, this paper designs a residual dense connection to extract and stack information from multiple dimensions, enhancing the prominence of the target within the original information to obtain fused features of camouflaged targets. Then, the fused features are fed into the YOLOv7 network for camouflaged target detection. By optimizing the loss function and integrating spatial-channel attention mechanisms, the detection performance of camouflaged targets under low-light conditions is effectively improved. Additionally, this paper constructs an optical-infrared camouflaged target dataset for low-light environments to validate the proposed method with empirical data. The dataset shows an [email protected] of 87.38% and a precision (P) of 85.45%, indicating that the proposed algorithm has a detection advantage for camouflaged targets under low-light conditions.

Keywords