大规模复杂环境下的无人机快速目标搜索

Fast UAV Object-Searching in Large-Scale and Complex Environments

IEEE Transactions on Cybernetics · 2025
被引 5
ABS 3

中文导读

提出一种分层搜索策略,结合卡尔曼滤波YOLO算法和模式化视点生成,使无人机在复杂环境中快速、安全地搜索目标,实验证明比现有方法更省时高效。

Abstract

Autonomous object-searching is crucial for various applications of unmanned aerial vehicles (UAVs). Considering the fact that existing autonomous exploration methods either focus only on maximizing the exploration of unknown areas or suffer from insufficient searches due to repeated and unnecessary exploration, this article introduces an effective object-searching strategy for UAVs in large-scale and complex environments. A novel method is proposed to empower UAVs with the capability to conduct fast, secure, and efficient searches for interested objects in large-scale and complex environments. A Kalman filter-based YOLO algorithm is first proposed to achieve robust object position estimation in cluttered and occlusion-prone scenarios, and a mode-based method is then introduced to conduct a computationally efficient viewpoint generation. A hierarchical searching method is proposed, which not only can increase computational and search efficiency but also can leverage frontier data for search-planning, including coarse global searching paths and optimizing local refined searching trajectories. Experimental results in six different environments indicate that our proposed method outperforms existing techniques in terms of both reduced searching times and computing time. Moreover, the effectiveness of the proposed method is substantiated in various real-world scenarios.

无人机目标搜索自主探索计算机视觉路径规划