Efficient high-quality motion planning by fast all-pairs r-nearest-neighbors

2015 IEEE International Conference on Robotics and Automation (ICRA)(2014)

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摘要
Sampling-based motion-planning algorithms typically rely on nearest-neighbor (NN) queries when constructing a roadmap. Recent results suggest that in various settings NN queries may be the computational bottleneck of such algorithms. Moreover, in several asymptotically-optimal algorithms these NN queries are of a specific form: Given a set of points and a radius r report all pairs of points whose distance is at most r. This calls for an application-specific NN data structure tailored to efficiently answering this type of queries. Randomly transformed grids (RTG) were recently proposed by Aiger et al. as a tool to answer such queries and have been shown to outperform common implementations of NN data structures in this context. In this work we employ RTG for sampling-based motion-planning algorithms and describe an efficient implementation of the approach. We show that for motion-planning, RTG allow for faster convergence to high-quality solutions when compared with existing NN data structures. Additionally, RTG enable significantly shorter construction times for batched-PRM variants; specifically, we demonstrate a speedup by a factor of two to three for some scenarios.
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关键词
sampling-based motion-planning algorithms,fast all-pairs r-nearest-neighbors,NN queries,asymptotically-optimal algorithms,application-specific data structure,randomly transformed grids,RTG,Euclidean spaces,convergence,batched-PRM variants
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