Quantitative Variable Autonomy Levels for Traded Control in a Pick-and-Place Task

Christopher Robinson, Indika B. Wijayasinghe, D. Popa
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Abstract

As robotic agents become increasingly present in human environments, task completion rates during human-robot interaction is an important topic of research. Safe collaborative robots executing tasks under human supervision often augment their perception and planning capabilities through traded or shared control schemes. In this paper, we present a quantitatively defined model for sliding-scale autonomy, in which levels of autonomy are determined by the relative efficacy of autonomous subroutines. We experimentally test the resulting Variable Autonomy Planning (VAP) algorithm against a traditional traded control scheme in a pick-and-place task. Results show that prioritizing autonomy levels with higher success rates as encoded into VAP, allows users to effectively and intuitively select optimal autonomy levels for efficient task completion.
取放任务中交易控制的定量变量自治水平
随着机器人代理越来越多地出现在人类环境中,人机交互过程中的任务完成率是一个重要的研究课题。在人类监督下执行任务的安全协作机器人通常通过交易或共享控制方案来增强其感知和规划能力。在本文中,我们提出了一个定量定义的滑动尺度自治模型,其中自治水平由自治子程序的相对有效性决定。我们在一个取放任务中实验测试了所得到的可变自治规划(VAP)算法与传统的交易控制方案。结果表明,编码到VAP中的具有较高成功率的优先级自治级别允许用户有效和直观地选择最优自治级别以高效完成任务。
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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