Compact models of human reaching motions for robotic control in everyday manipulation tasks

F. Stulp, Ingo Kresse, A. Maldonado, Federico Ruiz, Andreas Fedrizzi, M. Beetz
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引用次数: 13

Abstract

Autonomous personal robots are currently being equipped with hands and arms that have kinematic redundancy similar to those of humans. Humans exploit the redundancy in their motor system by optimizing secondary criteria. Tasks which are executed repeatedly lead to movements that are highly optimized over time, which leads to stereotypical [25] and pre-planned [15] motion patterns. This stereotypical motion can be modeled well with compact models, as has been shown for locomotion [1]. In this paper, we determine compact models for human reaching and obstacle avoidance in everyday manipulation tasks, and port these models to an articulated robot. We acquire compact models by analyzing human reaching data acquired with a magnetic motion tracker with dimensionality reduction and clustering methods. The stereotypical reaching trajectories so acquired are used to train a Dynamic Movement Primitive [12], which is executed on the robot. This enables the robot not only to follow these trajectories accurately, but also uses the compact model to predict and execute further human trajectories.
在日常操作任务中的机器人控制的人类到达运动的紧凑模型
目前,自主的个人机器人配备了与人类类似的运动冗余的手和手臂。人类通过优化次级标准来利用其运动系统中的冗余。重复执行的任务会导致运动随着时间的推移而高度优化,从而导致刻板印象[25]和预先计划[15]的运动模式。这种刻板的运动可以用紧凑模型很好地建模,正如运动[1]所显示的那样。在本文中,我们确定了在日常操作任务中人类到达和避障的紧凑模型,并将这些模型移植到一个铰接机器人上。通过对磁性运动跟踪器采集的人体运动数据进行降维和聚类分析,得到紧凑模型。这样获得的典型到达轨迹被用来训练一个动态运动原语[12],并在机器人上执行。这使得机器人不仅可以准确地跟随这些轨迹,而且还可以使用紧凑的模型来预测和执行进一步的人类轨迹。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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