动态运动原语和势场的运动复制与避障

Dae-Hyung Park, Heiko Hoffmann, P. Pastor, S. Schaal
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引用次数: 248

摘要

人类环境中的机器人需要顺从。这种遵从性要求预先计划的运动可以适应可能移动或意外出现的障碍。在这里,我们提出了运动产生和飞行中对障碍物的适应的一般框架。为了鲁棒运动生成,Ijspeert等人开发了动态运动原语框架,该框架用一组微分方程表示演示的运动。这些方程允许在不牺牲期望运动的稳定性的情况下添加一个扰动力。我们扩展了这个框架,使得末端执行器空间中的任意运动可以被表示出来——这在以前是不可能的。此外,我们通过在运动方程中加入驱避力(以障碍物为中心的势场梯度)来包含避障。此外,本文还比较了不同的势场,并展示了如何在该框架内避免障碍物链接碰撞。我们在模拟和拟人化机械臂中展示了我们的方法的能力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Movement reproduction and obstacle avoidance with dynamic movement primitives and potential fields
Robots in a human environment need to be compliant. This compliance requires that a preplanned movement can be adapted to an obstacle that may be moving or appearing unexpectedly. Here, we present a general framework for movement generation and mid-flight adaptation to obstacles. For robust motion generation, Ijspeert et al developed the framework of dynamic movement primitives which represent a demonstrated movement with a set of differential equations. These equations allow adding a perturbing force without sacrificing stability of the desired movement. We extend this framework such that arbitrary movements in end-effector space can be represented - which was not possible before. Furthermore, we include obstacle avoidance by adding to the equations of motion a repellent force - a gradient of a potential field centered around the obstacle. In addition, this article compares different potential fields and shows how to avoid obstacle-link collisions within this framework. We demonstrate the abilities of our approach in simulations and with an anthropomorphic robot arm.
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