A Path Planning Algorithm based on Leading Rapidly-exploring Random Trees

Yuan-Ting Fu, Chih-Ming Hsu, Ming-Che Lee, Sheng-Wei Lee
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Abstract

Nowadays, unmanned vehicles for navigation applications, such as factory unmanned vehicles and delivery dining systems, are becoming more and more extensive and gradually playing an indispensable role in our lives. Basically, navigation can be divided into three fields, the mapping, the localization and the path planning, in which the path planning is to use a pre-built map to plan a feasible path given the starting and the ending points. Hence, the path planning is the core part of the navigation operation, which is very important at the robot application level, such as the automatic driving and the driverless driving. For aircraft and space exploration, the path planning algorithms can be roughly divided into two types, the graph-based searching and the sampling-based searching. Among the two, the path planning based on random sampling provides with fast operation speed, high success rate on high-dimensional and complex problems, and disuse of extra considerations. The constraint of non-holonomic constraints, and the fast search for random trees are an algorithm based on random sampling. This paper mainly focuses on improving the path divergence in fixed iteration and on leading the direction from root to goal in fixed iteration condition. From the comparison of the experimental results, our approach is approximately 1.5 times better than the RRT on average path length.
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一种基于超前快速探索随机树的路径规划算法
如今,用于导航应用的无人驾驶汽车,如工厂无人驾驶汽车、外卖餐饮系统等,越来越广泛,并逐渐在我们的生活中发挥着不可或缺的作用。导航基本上可以分为制图、定位和路径规划三个领域,其中路径规划是使用预先构建好的地图,在给定起点和终点的情况下,规划出一条可行的路径。因此,路径规划是导航操作的核心部分,在自动驾驶、无人驾驶等机器人应用层面具有重要意义。对于飞行器和空间探索,路径规划算法大致可分为基于图的搜索和基于采样的搜索两类。其中,基于随机抽样的路径规划具有运算速度快、高维复杂问题成功率高、不需要额外考虑等优点。非完整约束的约束和随机树的快速搜索是一种基于随机抽样的算法。本文主要研究了在固定迭代条件下改进路径发散性和在固定迭代条件下从根到目标的引导方向。从实验结果的比较来看,我们的方法在平均路径长度上大约是RRT的1.5倍。
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