An approach to integrate human motion prediction into local obstacle avoidance in close human-robot collaboration

K. Dinh, Ozgur S. Oguz, Gerold Huber, Volker Gabler, D. Wollherr
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引用次数: 17

Abstract

Within Human-Robot Collaboration (HRC) safety is one key-issue that has to be guaranteed at any time during joint collaboration. Collisions in a shared workspace of a Human-Robot-Team (HRT) must be prevented. In addition, the comfort of the collaboration behavior should be provided. Facing these challenges, a robot has to be able to detect critical states at an early stage on the one hand and should react to them within a very short time span on the other hand. In this paper a collision avoidance algorithm using compliance control that guarantees a fast reaction to dynamic obstacles, e.g. humans, without the need of high computational effort is outlined. To further improve the avoidance behavior of the robot, a human motion prediction algorithm based on the minimum-jerk model is integrated. In an experimental analysis of a case-study about collecting LEGO-bricks on a table with various subjects, the impact of the integration of human motion prediction on both the robot's reaction time and human's perception of the robot co-worker is studied. Finally, the comfort and acceptance of the robot colleague by the human collaborator is drawn out through an analysis of the subjective human feedback questionnaires.
人机密切协作中人体运动预测与局部避障的融合方法
在人机协作(HRC)中,安全是在任何时候都必须保证的关键问题。必须防止在人-机器人团队(HRT)的共享工作空间中发生碰撞。此外,还应提供协作行为的舒适性。面对这些挑战,机器人一方面必须能够在早期阶段检测到关键状态,另一方面必须在极短的时间跨度内做出反应。本文提出了一种采用顺应性控制的避碰算法,该算法保证了对动态障碍物(如人类)的快速反应,而不需要大量的计算量。为了进一步提高机器人的回避行为,集成了一种基于最小抖动模型的人体运动预测算法。以在不同主体的桌子上收集乐高积木为例,研究了人类运动预测的集成对机器人反应时间和人类对机器人同事感知的影响。最后,通过对人类主观反馈问卷的分析,得出人类合作者对机器人同事的舒适度和接受度。
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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