Self-collision avoidance in bimanual teleoperation using CollisionIK: algorithm revision and usability experiment

Luciano Angelini, Manuela Uliano, Angela Mazzeo, Mattia Penzotti, M. Controzzi
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引用次数: 1

Abstract

One of the challenges in teleoperation is avoiding self-collisions, which is particularly critical in bi-manual systems. Available solutions are usually developed for redundant robots or introduce significant delays during teleoperation. We propose a revised version of the CollisionIK algorithm, dubbed revised_CollisionIK, to solve this issue. The algorithm has been tested in a bi-manual system teleoperated by naïve users and compared with the original version CollisionIK monitored by a standard emergency brake strategy. Based on objective and subjective metrics, results show that the revised_CollisionIK can be successfully used for teleoperating bimanual pick-handover-place tasks. Participants find the manipulation of small object easier with this strategy and don't perceive any difference in terms of accuracy and delay, despite these being significantly worse than CollisionIK combined with a standard emergency brake strategy.
基于CollisionIK的手动遥操作自避碰撞:算法修正与可用性实验
远程操作的挑战之一是避免自我碰撞,这在双手动系统中尤为关键。可用的解决方案通常是针对冗余机器人或在远程操作过程中引入重大延迟而开发的。为了解决这个问题,我们提出了一个修订版本的CollisionIK算法,称为revised_CollisionIK。该算法已在一个由naïve用户远程操作的双手动系统中进行了测试,并与采用标准紧急制动策略监控的原始版本CollisionIK进行了比较。基于客观和主观指标,结果表明修正后的collisionik可以成功地用于远程操作手动拾取-移交任务。参与者发现使用这种策略更容易操纵小物体,并且在准确性和延迟方面没有感觉到任何差异,尽管这些明显比使用标准紧急制动策略的碰撞学更差。
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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