Navigating the Clutter: Waypoint-Based Bi-Level Planning for Multi-Robot Systems
arXiv cs.RO / 4/24/2026
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Key Points
- The paper tackles multi-robot planning in cluttered environments by accounting for physical constraints such as robot-robot collisions, robot-obstacle collisions, and unreachable motions.
- It proposes a hybrid bi-level framework that jointly optimizes high-level task planning and low-level motion planning rather than treating them independently.
- To make low-level motion planning tractable, the authors introduce a waypoint-based trajectory representation that is both simple and expressive.
- To solve the credit assignment problem between the two planning levels, they use a curriculum-based training strategy with a modified RLVR method that passes motion feasibility feedback from the motion planner to the task planner.
- Experiments on the BoxNet3D-OBS benchmark (dense obstacles, up to nine robots) show consistent improvements in task success compared with motion-agnostic and VLA-based baselines, and the authors release code on GitHub.
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