特征敏感运动规划中的c空间细分与集成

M. Morales, Lydia Tapia, R. Pearce, S. Rodríguez, N. Amato
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引用次数: 32

摘要

有许多随机运动规划技术,但通常很难确定哪种规划方法可以最好地解决问题。规划者有自己的长处和短处,每个人都最适合于特定类型的问题。在之前的工作中,我们提出了一个元规划器,通过分析问题特征,将实例细分为区域,并确定在每个区域应用哪个规划器。我们的原型系统获得的结果非常有希望,尽管它对所有组件使用了简单的策略。即便如此,我们确实确定了问题细分和局部区域解决方案组合的策略对性能有至关重要的影响。在本文中,我们为这些步骤提出了新的方法来提高元规划器的性能。对于问题细分,我们提出了两种新的方法:基于“间隙”的方法和基于信息论的方法。为了结合局部解,我们提出了两种新的方法,它们集中在区域解的邻近区域。我们给出的结果显示了利用这些新策略所获得的性能增益。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
C-space Subdivision and Integration in Feature-Sensitive Motion Planning
There are many randomized motion planning techniques, but it is often difficult to determine what planning method to apply to best solve a problem. Planners have their own strengths and weaknesses, and each one is best suited to a specific type of problem. In previous work, we proposed a meta-planner that, through analysis of the problem features, subdivides the instance into regions and determines which planner to apply in each region. The results obtained with our prototype system were very promising even though it utilized simplistic strategies for all components. Even so, we did determine that strategies for problem subdivision and for combination of partial regional solutions have a crucial impact on performance. In this paper, we propose new methods for these steps to improve the performance of the meta-planner. For problem subdivision, we propose two new methods: a method based on ‘ gaps’ and a method based on information theory. For combining partial solutions, we propose two new methods that concentrate on neighboring areas of the regional solutions. We present results that show the performance gain achieved by utilizing these new strategies.
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