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Path planning for grasping operations using an adaptive PCA-based sampling method

机译:使用基于PCA的自适应采样方法来掌握操作的路径规划

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摘要

The planning of collision-free paths for a hand-arm robotic system is a difficult issue due to the large number of degrees of freedom involved and the cluttered environment usually encountered near grasping configurations. To cope with this problem, this paper presents a novel importance sampling method based on the use of principal component analysis (PCA) to enlarge the probability of finding collision-free samples in these difficult regions of the configuration space with low clearance. By using collision-free samples near the goal, PCA is periodically applied in order to obtain a sampling volume near the goal that better covers the free space, improving the efficiency of sampling-based path planning methods. The approach has been tested with success on a hand-arm robotic system composed of a four-finger anthropomorphic mechanical hand (17 joints with 13 independent degrees of freedom) and an industrial robot (6 independent degrees of freedom).
机译:由于涉及大量的自由度,并且在抓握配置附近通常会遇到混乱的环境,因此规划机器人手臂系统的无碰撞路径是一个难题。为了解决这个问题,本文提出了一种新的重要性采样方法,该方法基于主成分分析(PCA)的使用,以扩大在低间隙配置空间的这些困难区域中找到无碰撞样品的可能性。通过在目标附近使用无碰撞样本,可以定期应用PCA,以便在目标附近获得更好地覆盖自由空间的采样量,从而提高基于采样的路径规划方法的效率。该方法已在由四指拟人化机械手(17个关节具有13个独立自由度)和工业机器人(6个独立自由度)组成的手臂机器人系统上成功进行了测试。

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