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Simultaneous Multi-Robot Motion Planning with Projected Diffusion Models

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Recent advances in diffusion models hold significant potential in robotics, enabling the generation of diverse and smooth trajectories directly from raw representations of the environment. Despite this promise, applying diffusion models to motion planning remains challenging due to their difficulty in enforcing critical constraints, such as collision avoidance and kinematic feasibility. These limitations become even more pronounced in Multi-Robot Motion Planning (MRMP), where multiple robots must coordinate in shared spaces. To address these challenges, this work proposes Simultaneous MRMP Diffusion (SMD), a novel approach integrating constrained optimization into the diffusion sampling process to produce collision-free, kinematically feasible trajectories. Additionally, the paper introduces a comprehensive MRMP benchmark to evaluate trajectory planning algorithms across scenarios with varying robot densities, obstacle complexities, and motion constraints. Experimental results show SMD consistently outperforms classical and other learning-based motion planners, achieving higher success rates and efficiency in complex multi-robot environments.

Jinhao Liang, Jacob K Christopher, Sven Koenig, Ferdinando Fioretto• 2025

Related benchmarks

TaskDatasetResultRank
Multi-Robot Motion PlanningDrop-Region Maps
Success Rate100
17
Multi-Robot Motion PlanningRoom Maps
Success Rate35
17
Multi-Robot Motion PlanningConveyor Maps
Success Rate17.5
16
Multi-Robot Motion PlanningShelf Maps
Success Rate11.6
16
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