Author
Listed:
- Tian Luan
(Civil Aviation Flight Technology and Flight Safety Engineering Technology Research Institute of Sichuan Province, Civil Aviation Flight University of China, Deyang 618307, China
College of Air Traffic Management, Civil Aviation Flight University of China, Deyang 618307, China)
- Shixiong Zhou
(Civil Aviation Flight Technology and Flight Safety Engineering Technology Research Institute of Sichuan Province, Civil Aviation Flight University of China, Deyang 618307, China
College of Air Traffic Management, Civil Aviation Flight University of China, Deyang 618307, China)
- Yicheng Zhang
(Institute for Infocom Research (I2R) at the Agency for Science, Technology and Research (A*STAR), Singapore 138632, Singapore)
- Weijun Pan
(Civil Aviation Flight Technology and Flight Safety Engineering Technology Research Institute of Sichuan Province, Civil Aviation Flight University of China, Deyang 618307, China
College of Air Traffic Management, Civil Aviation Flight University of China, Deyang 618307, China)
Abstract
To address the critical challenges of insufficient monitoring capabilities and vulnerable defense systems against drones in regional airports, this study proposes a multi-source data fusion framework for rapid UAV detection. Building upon the YOLO v11 architecture, we develop an enhanced model incorporating four key innovations: (1) A dual-path RGB-IR fusion architecture that exploits complementary multi-modal data; (2) C3k2-DATB dynamic attention modules for enhanced feature extraction and semantic perception; (3) A bilevel routing attention mechanism with agent queries (BRSA) for precise target localization; (4) A semantic-detail injection (SDI) module coupled with windmill-shaped convolutional detection heads (PCHead) and Wasserstein Distance loss to expand receptive fields and accelerate convergence. Experimental results demonstrate superior performance with 99.3% mAP@50 (17.4% improvement over baseline YOLOv11), while maintaining lightweight characteristics (2.54M parameters, 7.8 GFLOPS). For practical deployment, we further enhance tracking robustness through an improved BoT-SORT algorithm within an interactive multiple model framework, achieving 91.3% MOTA and 93.0% IDF1 under low-light conditions. This integrated solution provides cost-effective, high-precision drone surveillance for resource-constrained airports.
Suggested Citation
Tian Luan & Shixiong Zhou & Yicheng Zhang & Weijun Pan, 2025.
"Fast Identification and Detection Algorithm for Maneuverable Unmanned Aircraft Based on Multimodal Data Fusion,"
Mathematics, MDPI, vol. 13(11), pages 1-39, May.
Handle:
RePEc:gam:jmathe:v:13:y:2025:i:11:p:1825-:d:1668159
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