Journal of Applied Sciences ›› 2026, Vol. 44 ›› Issue (3): 358-376.doi: 10.3969/j.issn.0255-8297.2026.03.002

• Intelligent Information Processing • Previous Articles    

Uncertainty Modeling-Driven LiDAR-Vision Adaptive Fusion for Dynamic Obstacle Detection

ZHU Lei1,2,3, ZHONG Ruofei1,2, YUAN Xinze1,2, FAN Hongchao3, SUN Zhenxing1,2   

  1. 1. Key Laboratory of 3D Information Acquisition and Application, Ministry of Education, Capital Normal University, Beijing 100048, China;
    2. College of Resource Environment and Tourism, Capital Normal University, Beijing 100048, China;
    3. Department of Civil and Environmental Engineering, Norwegian University of Science and Technology, Trondheim 7491, Norway
  • Received:2026-02-02 Published:2026-06-23

Abstract: Accurate and reliable dynamic obstacle perception is a crucial prerequisite for the safe navigation of autonomous mapping UAVs in confined and spatially constrained environments. However, existing LiDAR-vision fusion methods often struggle to cope with significant variations in sensor reliability under degraded conditions, such as poor illumination, reflection interference, or motion blur. To address these challenges, this paper proposed an uncertainty-modeling-driven LiDAR-vision fusion framework for dynamic obstacle detection, which adaptively adjusted sensor contributions by explicitly modeling sensor observation uncertainty. Based on probabilistic models, the framework performed real-time uncertainty quantification for both LiDAR point clouds and RGB images and introduced an adaptive sensor reliability score(ASRS) mechanism to guide fusion decisions and subsequent object tracking. Experiments were conducted on a self-constructed multi-condition dataset, and the results show that the proposed method improves the F1-score by approximately 15%-20% compared with existing methods in challenging scenarios involving low illumination, glass reflections, and motion blur. Furthermore, it maintains real-time processing performance at approximately 25 Hz on embedded platforms, validating the method's robustness and engineering feasibility in complex degraded environments.

Key words: dynamic obstacle detection, uncertainty quantification, LiDAR-vision fusion, indoor autonomous mapping UAV

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