4.7 Article

Sampling-based roadmap of trees for parallel motion planning

Journal

IEEE TRANSACTIONS ON ROBOTICS
Volume 21, Issue 4, Pages 597-608

Publisher

IEEE-INST ELECTRICAL ELECTRONICS ENGINEERS INC
DOI: 10.1109/TRO.2005.847599

Keywords

expansive space trees (EST); motion planning; parallel algorithms; probabilistic roadmap method (PRM); rapidly exploring random trees (RRT); roadmap; sampling-based planning; sampling-based roadmap of trees (SRT); tree

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This paper shows how to effectively combine a sampling-based method primarily designed for multiple-query motion planning [probabilistic roadmap method (PRM)] with sampting-based tree methods primarily designed for single-query motion planning (expansive space trees, rapidly exploring random trees, and others) in a novel planning framework that can be efficiently parallelized. Our planner not only achieves a smooth spectrum between multiple-query and single-query planning, but it combines advantages of both. We present experiments which show that our planner is capable of solving problems that cannot be addressed efficiently with PRM or single-query planners. A key advantage of our planner is that it is significantly more decoupled than PRIM and sampling-based tree planners. Exploiting this property, we designed and implemented a parallel version of our planner. Our experiments show that our planner distributes well and can easily solve high-dimensional problems that exhaust resources available to single machines and cannot be addressed with existing planners.

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