Automatic Detection of Myocontrol Failures Based upon Situational Context Information

K. Heiwolt, Claudio Zito, Markus Nowak, Claudio Castellini, R. Stolkin
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引用次数: 8

Abstract

Myoelectric control systems for assistive devices are still unreliable. The user’s input signals can become unstable over time due to e.g. fatigue, electrode displacement, or sweat. Hence, such controllers need to be constantly updated and heavily rely on user feedback. In this paper, we present an automatic failure detection method which learns when plausible predictions become unreliable and model updates are necessary. Our key insight is to enhance the control system with a set of generative models that learn sensible behaviour for a desired task from human demonstration. We illustrate our approach on a grasping scenario in Virtual Reality, in which the user is asked to grasp a bottle on a table. From demonstration our model learns the reach-to-grasp motion from a resting position to two grasps (power grasp and tridigital grasp) and how to predict the most adequate grasp from local context, e.g. tridigital grasp on the bottle cap or around the bottleneck. By measuring the error between new grasp attempts and the model prediction, the system can effectively detect which input commands do not reflect the user’s intention. We evaluated our model in two cases: i) with both position and rotation information of the wrist pose, and ii) with only rotational information. Our results show that our approach detects statistically highly significant differences in error distributions with p<0.001 between successful and failed grasp attempts in both cases.
基于情境信息的肌肉控制故障自动检测
辅助装置的肌电控制系统仍然不可靠。由于疲劳、电极位移或出汗等原因,用户的输入信号可能会随着时间的推移而变得不稳定。因此,这些控制器需要不断更新,并严重依赖于用户反馈。在本文中,我们提出了一种自动故障检测方法,该方法可以在合理的预测变得不可靠并且需要更新模型时进行学习。我们的关键见解是通过一组生成模型来增强控制系统,这些模型可以从人类演示中学习期望任务的合理行为。我们在虚拟现实中的抓取场景中说明了我们的方法,在这个场景中,用户被要求抓取桌子上的瓶子。从演示中,我们的模型学习了从静止位置到两次抓取(动力抓取和三位数抓取)的伸手到抓取动作,以及如何从局部环境中预测最适当的抓取,例如在瓶盖或瓶颈周围的三位数抓取。通过测量新抓取尝试与模型预测之间的误差,系统可以有效地检测哪些输入命令没有反映用户的意图。我们在两种情况下评估了我们的模型:i)同时使用手腕姿势的位置和旋转信息,ii)仅使用旋转信息。我们的结果表明,我们的方法检测到在两种情况下成功和失败的抓取尝试之间的误差分布在统计学上具有高度显著的差异,p<0.001。
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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