基于人与机器人视角的常见力机器人技能识别

Thomas Eiband, Dongheui Lee
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引用次数: 4

摘要

从演示中学习(LfD)可以显著加快从人到机器人的知识转移,这已被证明适用于相对无约束的动作,如拾取和放置。然而,将接触或基于力的技能(接触技能)传递给机器人显然更加困难,因为需要同时考虑力和位置约束。我们提出了一套接触技巧,不同的力和运动学约束。在第一个用户研究中,几个受试者被要求描述各种基于力的交互,从这些交互中衍生出技能名称。在第二个和第三个用户研究中,识别的技能名称用于让测试组的受试者对显示的交互进行分类。为了从机器人的角度评估技能识别,我们提出了一个基于特征的分类方案来识别机器人系统在LfD环境下的技能。我们的研究结果证明,人类能够理解不同技能的含义,并且使用分类管道,机器人能够从人类演示中识别不同的技能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Identification of Common Force-based Robot Skills from the Human and Robot Perspective
Learning from Demonstration (LfD) can significantly speed up the knowledge transfer from human to robot, which has been proven for relatively unconstrained actions such as pick and place. However, transferring contact or force-based skills (contact skills) to a robot is noticeably harder since force and position constraints need to be considered simultaneously. We propose a set of contact skills, which differ in the force and kinematic constraints. In a first user study, several subjects were asked to term a variety of force-based interactions, from which skill names were derived. In a second and third user study, the identified skill names are used to let a test group of subjects classify the shown interactions. To evaluate the skill recognition from the robot perspective, we propose a feature-based classification scheme to recognize such skills with a robotic system in a LfD setting. Our findings prove that humans are able to understand the meaning of the different skills and, using the classification pipeline, the robot is able to recognize the different skills from human demonstrations.
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