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Space-Time Graphs of Convex Sets for Multi-Robot Motion Planning

1 March 2025
Jingtao Tang
Zining Mao
Lufan Yang
Hang Ma
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Abstract

We address the Multi-Robot Motion Planning (MRMP) problem of computing collision-free trajectories for multiple robots in shared continuous environments. While existing frameworks effectively decompose MRMP into single-robot subproblems, spatiotemporal motion planning with dynamic obstacles remains challenging, particularly in cluttered or narrow-corridor settings. We propose Space-Time Graphs of Convex Sets (ST-GCS), a novel planner that systematically covers the collision-free space-time domain with convex sets instead of relying on random sampling. By extending Graphs of Convex Sets (GCS) into the time dimension, ST-GCS formulates time-optimal trajectories in a unified convex optimization that naturally accommodates velocity bounds and flexible arrival times. We also propose Exact Convex Decomposition (ECD) to "reserve" trajectories as spatiotemporal obstacles, maintaining a collision-free space-time graph of convex sets for subsequent planning. Integrated into two prioritized-planning frameworks, ST-GCS consistently achieves higher success rates and better solution quality than state-of-the-art sampling-based planners -- often at orders-of-magnitude faster runtimes -- underscoring its benefits for MRMP in challenging settings.

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@article{tang2025_2503.00583,
  title={ Space-Time Graphs of Convex Sets for Multi-Robot Motion Planning },
  author={ Jingtao Tang and Zining Mao and Lufan Yang and Hang Ma },
  journal={arXiv preprint arXiv:2503.00583},
  year={ 2025 }
}
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