Global Tensor Motion Planning
Batch planning is increasingly crucial for the scalability of robotics tasks and dataset generation diversity. This paper presents Global Tensor Motion Planning (GTMP) -- a sampling-based motion planning algorithm comprising only tensor operations. We introduce a novel discretization structure repre...
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Zusammenfassung: | Batch planning is increasingly crucial for the scalability of robotics tasks
and dataset generation diversity. This paper presents Global Tensor Motion
Planning (GTMP) -- a sampling-based motion planning algorithm comprising only
tensor operations. We introduce a novel discretization structure represented as
a random multipartite graph, enabling efficient vectorized sampling, collision
checking, and search. We provide an early theoretical investigation showing
that GTMP exhibits probabilistic completeness while supporting modern GPU/TPU.
Additionally, by incorporating smooth structures into the multipartite graph,
GTMP directly plans smooth splines without requiring gradient-based
optimization. Experiments on lidar-scanned occupancy maps and the
MotionBenchMarker dataset demonstrate GTMP's computation efficiency in batch
planning compared to baselines, underscoring GTMP's potential as a robust,
scalable planner for diverse applications and large-scale robot learning tasks. |
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DOI: | 10.48550/arxiv.2411.19393 |