A Scalable Framework For Real-Time Multi-Robot, Multi-Human Collision Avoidance (1811.05929v1)
Abstract: Robust motion planning is a well-studied problem in the robotics literature, yet current algorithms struggle to operate scalably and safely in the presence of other moving agents, such as humans. This paper introduces a novel framework for robot navigation that accounts for high-order system dynamics and maintains safety in the presence of external disturbances, other robots, and non-deterministic intentional agents. Our approach precomputes a tracking error margin for each robot, generates confidence-aware human motion predictions, and coordinates multiple robots with a sequential priority ordering, effectively enabling scalable safe trajectory planning and execution. We demonstrate our approach in hardware with two robots and two humans. We also showcase our work's scalability in a larger simulation.
- Andrea Bajcsy (36 papers)
- Sylvia L. Herbert (11 papers)
- David Fridovich-Keil (73 papers)
- Jaime F. Fisac (35 papers)
- Sampada Deglurkar (6 papers)
- Anca D. Dragan (70 papers)
- Claire J. Tomlin (101 papers)