The Relationship between “C-Space”, “Heuristic Methods”, and “Sampling Based Planner”

Emanuele Sansebastiano, A. P. Pobil
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Abstract

Defining the collision-free C-space is crucial in robotics to find whether a robot can successfully perform a motion. However, the complexity of defining this space increases according to the robot’s degree of freedom and the number of obstacles. Heuristics techniques, such as Monte Carlo’s simulation, help developers address this problem and speed up the whole process. Many well-known motion planning algorithms, such as RRT, base their popularity on their ability to find sufficiently good representations of the collision-free C-space very quickly by exploiting heuristics methods, but this mathematical relationship is not highlighted in most textbooks and publications. Each book focuses the attention of the reader on C-space at the beginning, but this concept is left behind page after page. Moreover, even though heuristics methods are widely used to boost algorithms, they are never formalized as part of the Optimization techniques subject. The major goal of this chapter is to highlight the mathematical and intuitive relationship between C-space, heuristic methods, and sampling based planner.
“c -空间”、“启发式方法”与“抽样规划”的关系
在机器人技术中,确定无碰撞c空间对于确定机器人是否能够成功地完成运动至关重要。然而,定义这个空间的复杂性随着机器人的自由度和障碍物数量的增加而增加。启发式技术,如蒙特卡罗模拟,可以帮助开发人员解决这个问题并加快整个过程。许多著名的运动规划算法,如RRT,基于它们通过利用启发式方法快速找到足够好的无碰撞c空间表示的能力而受到欢迎,但这种数学关系在大多数教科书和出版物中没有得到强调。每本书一开始都把读者的注意力集中在C-space上,但这个概念一页又一页地被抛在后面。此外,尽管启发式方法被广泛用于增强算法,但它们从未形式化为优化技术主题的一部分。本章的主要目标是强调c空间、启发式方法和基于抽样的规划器之间的数学和直观关系。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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