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Probabilistic Roadmaps of Trees for Parallel Computation of Multiple Query Roadmaps

机译:树木的概率路线板,用于多个查询路线板的并行计算

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We propose the combination of techniques that solve multiple queries for motion planning problems with single query planners in a motion planning framework that can be efficiently parallelized. In multiple query motion planning, a data structure is built during a preprocessing phase in order to quickly respond to on-line queries. Alternatively, in single query planning, there is no preprocessing phase and all computations occur during query resolution. This paper shows how to effectively combine a powerful sample-based method primarily designed for multiple query planning (the Probabilistic Roadmap Method -PRM) with sample-based tree methods that were primarily designed for single query planning (such as Expansive Space Trees, Rapidly Exploring Random Trees, and others). Our planner, which we call the Probabilistic Roadmap of Trees (PRT), uses a tree algorithm as a subroutine for PRM. The nodes of the PRM roadmap are now trees. We take advantage of the very powerful sampling schemes of recent tree planners to populate our roadmaps. The combined sampling scheme is in the spirit of the non-uniform sampling and refinement techniques employed in earlier work on PRM. PRT 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 PRT is capable of solving problems that cannot be addressed efficiently with PRM or single-query planners. A key advantage of PRT is that it is significantly more decoupled than PRM and sample-based tree planners. Using this property, we designed and implemented a parallel version of PRT. Our experiments show that PRT distributes well and can easily solve high dimensional problems that exhaust resources available to single machines.
机译:我们提出了解决可以有效并行化的运动规划框架中的单个查询规划者解决多个查询的技术组合。在多个查询运动规划中,在预处理阶段构建数据结构,以便快速响应在线查询。或者,在单个查询规划中,没有预处理阶段,并且在查询分辨率期间发生所有计算。本文展示了如何有效地结合强大的示例性方法,主要用于多个查询规划(概率路线图方法-PRM),其具有基于样本的树方法,主要用于单一查询规划(例如膨胀空间树,快速探索随机树和其他人)。我们的计划者,我们称之为树木(PRT)的概率,使用树算法作为PRM的子程序。 PRM路线图的节点现在是树木。我们利用最近的树规划人员的强大采样计划来填充我们的路线图。合并的抽样方案是在PRM之前工作中使用的非均匀采样和精制技术的精神。 PRT不仅达到了多个查询和单个查询规划之间的光滑频谱,而且它结合了两者的优势。我们提出了实验,表明PRT能够解决不能与PRM或单一查询规划者有效解决的问题。 PRT的一个关键优势在于它比PRM和基于样本的树规划者显着耦合。使用此属性,我们设计并实现了PRT的并行版本。我们的实验表明,PRT分配良好,可以轻松解决可用于单机的资源的高维问题。

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