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Toward Optimal Configuration Space Sampling

机译:走向最佳配置空间采样

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Sampling-based motion planning discovers the implicit connectivity of a configuration space by selecting and connecting sets of configurations. The structure of every configuration space dictates a number of optimal sets of samples whose selection by a sampling-based planner results in a complete roadmap of the space. Though it is generally computationally impractical to develop complete knowledge of configuration space, each individual sample provides information about the configuration space. We propose a new utility-guided sampling strategy that accumulates this information into an approximate model of the configuration space. The model is an approximation of both the state (obstructed or free) of individual configurations and the connectivity of the configuration space. Our proposed sampler uses the approximate configuration space model to select samples that are maximally relevant to the planning task. The relevance of a sample is measured by its expected utility to the further coverage of the configuration space roadmap. The utility metric blends information from both configuration space state and connectivity. The planner incorporates the information obtained from each sample into its approximation and uses these improved models for subsequent sampling. Experimental results with an implementation of this approach to motion planning indicate that it is capable of significantly reducing the runtime required to construct a complete roadmap for configuration spaces with arbitrary degrees of freedom.
机译:基于采样的运动计划通过选择和连接配置集来发现配置空间的隐式连通性。每个配置空间的结构决定了一些最佳样本集,这些样本集由基于采样的计划人员进行选择,从而形成了该空间的完整路线图。尽管开发配置空间的完整知识通常在计算上是不切实际的,但是每个单独的样本都提供有关配置空间的信息。我们提出了一种新的以实用程序为指导的采样策略,该策略将这些信息累积到配置空间的近似模型中。该模型是单个配置的状态(受阻或空闲)和配置空间的连通性的近似值。我们建议的采样器使用近似配置空间模型来选择与计划任务最大相关的样本。样本的相关性通过其预期的实用性来衡量,以进一步涵盖配置空间路线图。效用度量标准融合了来自配置空间状态和连接性的信息。计划者将从每个样本获得的信息纳入其近似值,并将这些改进的模型用于后续采样。使用此方法进行运动规划的实验结果表明,它能够显着减少为具有任意自由度的配置空间构建完整路线图所需的运行时间。

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