IEEE Trans Neural Syst Rehabil Eng. 2020 Jun;28(6):1497-1506. doi: 10.1109/TNSRE.2020.2987878. Epub 2020 Apr 14.
Assistive shared-control robots have the potential to transform the lives of millions of people afflicted with severe motor impairments. The usefulness of shared-control robots typically relies on the underlying autonomy's ability to infer the user's needs and intentions, and the ability to do so unambiguously is often a limiting factor for providing appropriate assistance confidently and accurately. The contributions of this paper are four-fold. First, we introduce the idea of intent disambiguation via control mode selection, and present a mathematical formalism for the same. Second, we develop a control mode selection algorithm which selects the control mode in which the user-initiated motion helps the autonomy to maximally disambiguate user intent. Third, we present a pilot study with eight subjects to evaluate the efficacy of the disambiguation algorithm. Our results suggest that the disambiguation system (a) helps to significantly reduce task effort, as measured by number of button presses, and (b) is of greater utility for more limited control interfaces and more complex tasks. We also observe that (c) subjects demonstrated a wide range of disambiguation request behaviors, with the common thread of concentrating requests early in the execution. As our last contribution, we introduce a novel field-theoretic approach to intent inference inspired by dynamic field theory that works in tandem with the disambiguation scheme.
辅助共享控制机器人有可能改变数以百万计患有严重运动障碍的人的生活。共享控制机器人的有用性通常依赖于底层自主性推断用户需求和意图的能力,而能够明确无误地做到这一点通常是提供自信和准确的适当辅助的一个限制因素。本文的贡献有四点。首先,我们通过控制模式选择引入了意图消除歧义的思想,并提出了相同的数学形式化。其次,我们开发了一种控制模式选择算法,该算法选择用户发起的运动帮助自主性最大程度消除用户意图歧义的控制模式。第三,我们进行了一项有 8 名受试者的初步研究,以评估歧义消除算法的效果。我们的结果表明,(a)歧义消除系统有助于显著降低任务工作量,以按下按钮的数量来衡量;(b)对于更有限的控制界面和更复杂的任务,它的效用更大。我们还观察到,(c)受试者表现出广泛的歧义消除请求行为,其共同点是在执行早期集中请求。作为我们的最后贡献,我们引入了一种受动态场理论启发的、基于场论的意图推断新方法,该方法与歧义消除方案协同工作。