Randomized sampling based algorithms are widely used in robot motion planning due to the problem's intractability, and are experimentally effective on a wide range of problem instances. Most variants do not sample uniformly at random, and instead bias their sampling using various heuristics for determining which samples will provide more information, or are more likely to participate in the final solution. In this work, we define the \emph{motion planning guiding space}, which encapsulates many seemingly distinct prior works under the same framework. In addition, we suggest an information theoretic method to evaluate guided planning which places the focus on the quality of the resulting biased sampling. Finally, we analyze several motion planning algorithms in order to demonstrate the applicability of our definition and its evaluation.
翻译:基于随机抽样的算法由于问题易感性而广泛用于机器人运动规划中,并且对广泛的问题实例具有实验效力。大多数变异体不统一随机抽样,而是使用各种累进法偏向抽样,以确定哪些样本能提供更多信息,或更可能参与最终解决方案。在这项工作中,我们定义了在同一个框架下将许多先前似乎不同的作品包罗在一起的 emph{ 动作规划指导空间。此外,我们建议采用一种信息理论方法来评价有指导的规划,将重点置于由此产生的偏差抽样的质量上。最后,我们分析了几种运动规划算法,以表明我们定义及其评估的可适用性。