基于高斯混合模型的多rrts高维路径规划方法

Xin Zhao, Huan Zhao, Shaohua Wan, H. Ding
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引用次数: 2

摘要

快速探索随机树(RRT)等基于采样的运动规划方法是解决高维机器人运动规划问题的有效方法。在这些方法中,如何绘制样本和选择扩展或连接的树对效率有很大的影响。本文提出了一种基于高斯混合模型(GMM)的机器人路径规划多rrts方法(GMMM-RRTs),利用经验加快了规划过程。首先,利用经验路径自适应学习GMM;其次,在GMM分量的中心构造多棵树。然后,基于启发式搜索算法选择最优树进行扩展,并对选择的GMM分量进行偏采样。GMMM-RRTs在保持全局路径规划效率的同时,能够有效地利用局部空间。仿真和实验结果表明了GMMM-RRTs算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Gaussian Mixture Models based Multi-RRTs method for high-dimensional path planning
Sampling based motion planning methods such as Rapidly-exploring Random Trees (RRT) are effective for high-dimensional robot motion planning problem. In these methods, how to draw samples and select trees to extend or connect has greatly influence in efficiency. In this paper, a Gaussian Mixture Models (GMM) based Multi-RRTs method (GMMM-RRTs) is proposed for robot path planning, which accelerate the planning procedure with experiences. Firstly, the GMM is adaptively learned with the experiential paths. Secondly, multiple trees are constructed at the centres of GMM components. Then, the optimal trees are selected to extend based on heuristic search algorithm, and bias sampling with the selected GMM components. GMMM-RRTs can efficiently exploit local space while maintaining the efficiency of global path planning. Simulation and experimental results show the effectiveness of the proposed GMMM-RRTs algorithm.
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