Efficient Multi-Agent Trajectory Planning with Feasibility Guarantee Using Relative Bernstein Polynomial

Jungwon Park1, Junha Kim1, Inkyu Jang1, H. Jin Kim1

  • 1Seoul National University

Details

09:30 - 09:45 | Mon 1 Jun | Room T11 | MoA11.2

Session: Path Planning for Multiple Mobile Robots or Agents I

15:45 - 16:00 | Mon 1 Jun | Room T1 | MoC01.5

Session: Awards III – Human-Robot Interaction (HRI), Multi-Robot Systems

Abstract

This paper presents a new efficient algorithm which guarantees a solution for a class of multi-agent trajectory planning problems in obstacle-dense environments. Our algorithm combines the advantages of both grid-based and optimization-based approaches, and generates safe, dynamically feasible trajectories without suffering from an erroneous optimization setup such as imposing infeasible collision constraints. We adopt a sequential optimization method with dummy agents to improve the scalability of the algorithm, and utilize the convex hull property of Bernstein and relative Bernstein polynomial to replace non-convex collision avoidance constraints to convex ones. The proposed method can compute the trajectory for 64 agents on average 6.36 seconds with Intel Core i7-7700 @ 3.60GHz CPU and 16G RAM, and it reduces more than 50% of the objective cost compared to our previous work. We validate the proposed algorithm through simulation and flight tests.