Multi-Agent Obstacle Avoidance using Velocity Obstacles and Control Barrier Functions
Roncero, Alejandro Sánchez, Muchacho, Rafael I. Cabral, Ögren, Petter
–arXiv.org Artificial Intelligence
Velocity Obstacles (VO) methods form a paradigm for collision avoidance strategies among moving obstacles and agents. While VO methods perform well in simple multi-agent environments, they don't guarantee safety and can show overly conservative behavior in common situations. In this paper, we propose to combine a VO-strategy for guidance with a CBF-approach for safety, which overcomes the overly conservative behavior of VOs and formally guarantees safety. We validate our method in a baseline comparison study, using 2nd order integrator and car-like dynamics. Results support that our method outperforms the baselines w.r.t. path smoothness, collision avoidance, and success rates.
arXiv.org Artificial Intelligence
Sep-16-2024
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