Multi-Robot Learning-Informed Task Planning Under Uncertainty
arXiv cs.RO / 2026/3/24
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要点
- The paper studies how multi-robot teams can plan and coordinate to complete complex tasks quickly when task-relevant object locations are initially unknown.
- It highlights the core challenge of long-horizon reasoning under uncertainty, where uncertainty creates many possible outcomes and makes assignment of actions to specific robots difficult.
- The authors propose a planning abstraction that combines learning-based estimation of uncertain environment aspects with model-based planning for coordinated task execution over long horizons.
- Experiments show efficient multi-stage task planning for teams of 1–3 robots in large ProcTHOR household environments, outperforming competitive baselines.
- The approach is also validated in real-world household tests using two LoCoBot mobile robots, demonstrating transfer beyond simulation.
