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Efficient Multi-Robot Motion Planning for Manifold-Constrained Manipulators by Randomized Scheduling and Informed Path Generation

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Multi-robot motion planning for high degree-of-freedom manipulators in shared, constrained, and narrow spaces is a complex problem and essential for many scenarios such as construction, surgery, and more. Traditional coupled methods plan directly in the composite configuration space, which scales poorly; decoupled methods, on the other hand, plan separately for each robot but lack completeness. Hybrid methods that obtain paths from individual robots together require the enumeration of many paths before they can find valid composite solutions. This paper introduces Scheduling to Avoid Collisions (StAC), a hybrid approach that more effectively composes paths from individual robots by scheduling (adding stops and coordination motion along all paths) and generates paths that are likely to be feasible by using bidirectional feedback between the scheduler and motion planner for informed sampling. StAC uses 10 to 100 times fewer paths from the low-level planner than state-of-the-art hybrid baselines on challenging problems in manipulator cases.

Weihang Guo, Zachary Kingston, Kaiyu Hang, Lydia E. Kavraki• 2024

Related benchmarks

TaskDatasetResultRank
Multi-Robot Motion PlanningScenario 1 Two-arm setup
Planning Time (Q1)0.013
6
Multi-Robot Motion PlanningScenario 2 Two-arm setup with obstacle
Time Q10.057
6
Multi-Robot Motion PlanningScenario 3 Four-arm setup
Planning Time (Q1)0.075
6
Multi-Robot Motion Planning3-manipulator setup Case 1: cross maze
Success Rate89.7
6
Multi-Robot Motion Planning3-manipulator setup Case 2: circular arrangement
Success Rate64
6
Multi-Robot Motion PlanningScenario Multi-arm complex setup 4
Q Metric Q111
5
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