In this work, we present a novel sampling-based path planning method, called SPRINT. The method finds solutions for high dimensional path planning problems quickly and robustly. Its efficiency comes from minimizing the number of collision check samples. This reduction in sampling relies on heuristics that predict the likelihood that samples will be useful in the search process. Specifically, heuristics (1) prioritize more promising search regions; (2) cull samples from local minima regions; and (3) steer the search away from previously observed collision states. Empirical evaluations show that our method finds shorter or comparable-length solution paths in significantly less time than commonly used methods. We demonstrate that these performance gains can be largely attributed to our approach to achieve sample efficiency.
翻译:在这项工作中,我们提出了一个新型的基于抽样的路径规划方法,称为SPRINT。该方法迅速和有力地找到解决高维路径规划问题的办法。其效率来自尽量减少碰撞检查样品的数量。抽样的减少取决于预测样品在搜索过程中是否有用处的疲劳学。具体地说,黑奴主义(1) 优先考虑更有希望的搜索区域;(2) 从当地微型地区抽取样本;(3) 引导搜索远离以前观察到的碰撞状态。经验性评估表明,我们的方法在比通常使用的方法要短得多的时间里找到了较短或相似的解决方案路径。我们证明,这些绩效的提高在很大程度上可以归功于我们实现取样效率的方法。