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A Machine Learning Approach for Feature-Sensitive Motion Planning

机译:特征敏感运动规划的机器学习方法

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Although there are many motion planning techniques, there is no method that outperforms all others for all problem instances. Rather, each technique has different strengths and weaknesses which makes it best-suited for certain types of problems. Moreover, since an environment can contain vastly different regions, there may not be a single planner that will perform well in all its regions. Ideally, one would use a suite of planners in concert and would solve the problem by applying the best-suited planner in each region. In this paper, we propose an automated framework for feature-sensitive motion planning. We use a machine learning approach to characterize and partition C-space into regions that are well suited to one of the methods in our library of roadmap-based motion planners. After the best-suited method is applied in each region, the resulting region roadmaps are combined to form a roadmap of the entire planning space. Over a range of problems, we demonstrate that our simple prototype system reliably outperforms any of the planners on their own.
机译:虽然有许多运动规划技术,但没有任何方法对于所有问题实例都不表达所有其他方法。相反,每个技术都具有不同的优点和缺点,这使得它最适合某些类型的问题。此外,由于环境可以包含众异的区域,因此可能没有单个规划器,它将在所有区域中表现良好。理想情况下,人们会在音乐管理局使用一套策划者,并通过在每个地区应用最适合的计划者来解决问题。在本文中,我们提出了一种用于特征敏感运动规划的自动框架。我们使用机器学习方法来表征和分区C - 空间进入适合于我们基于路线图的议员图书馆的方法之一的区域。在每个区域应用最佳方法之后,将得到的区域路线图组合以形成整个规划空间的路线图。在一系列问题上,我们展示了我们的简单原型系统可靠地优于自己的任何规划者。

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