VLM-RRT: Vision Language Model Guided RRT Search for Autonomous UAV Navigation
Ye, Jianlin, Papaioannou, Savvas, Kolios, Panayiotis
–arXiv.org Artificial Intelligence
-- Path planning is a fundamental capability of autonomous Unmanned Aerial V ehicles (UA Vs), enabling them to efficiently navigate toward a target region or explore complex environments while avoiding obstacles. Traditional path-planning methods, such as Rapidly-exploring Random Trees (RRT), have proven effective but often encounter significant challenges. These include high search space complexity, sub-optimal path quality, and slow convergence, issues that are particularly problematic in high-stakes applications like disaster response, where rapid and efficient planning is critical. T o address these limitations and enhance path-planning efficiency, we propose Vision Language Model RRT (VLM-RRT), a hybrid approach that integrates the pattern recognition capabilities of Vision Language Models (VLMs) with the path-planning strengths of RRT . By leveraging VLMs to provide initial directional guidance based on environmental snapshots, our method biases sampling toward regions more likely to contain feasible paths, significantly improving sampling efficiency and path quality. Extensive quantitative and qualitative experiments with various state-of-the-art VLMs demonstrate the effectiveness of this proposed approach. As Unmanned Aerial V ehicles (UA Vs) operate in increasingly dynamic and complex environments, the demand for reliable navigation [1], including efficient and adaptive path-planning strategies [2], has grown significantly.
arXiv.org Artificial Intelligence
May-30-2025
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