人机协作中人类感知适应的疲劳检测

Rakesh Suresh Kumar, S. Jujjavarapu, Lung Hao Lee, E. Esfahani
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引用次数: 0

摘要

了解人的认知和身体状态是实现人机物理协作的关键因素。这些信息有利于机器人规划自适应控制策略以防止或减轻人体疲劳。在本文中,我们提出了一种使用低成本的肌电传感器检测pHRC过程中上肢肌肉疲劳的方法。我们使用黎曼几何从时间序列数据中提取鲁棒特征,并设计了一个分类器来检测人体疲劳的二值状态,即疲劳和不疲劳。我们使用精细运动协调任务来评估人类沿着虚拟路径引导工业机器人一段时间,然后进行肌肉弯曲练习,直到引起肌肉疲劳,然后重复机器人实验。我们招募了9名参与者进行研究,并使用肌电传感器记录了他们主要上肢的肌肉活动,并使用这些数据开发了分类器。我们将分类器的准确性和鲁棒性与传统时域和基于小波的特征进行了比较,结果表明,与传统特征相比,基于Riemann几何的特征具有更高的分类精度(约91%),并且需要更少的计算量。这种分类器可以实时用于开发人类意识适应策略,以防止疲劳。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Fatigue Detection for Human Aware Adaptation in Human-Robot Collaboration
Knowledge about human cognitive and physical state is a key factor in physical Human-robot collaboration (pHRC). Such information benefits the robot in planning an adaptive control strategy to prevent or mitigate human fatigue. In this paper, we present a method to detect upper limb muscle fatigue during pHRC using a low-cost myoelectric sensor. We used Riemann geometry to extract robust features from the time-series data and designed a classifier to detect the binary state of human fatigue i.e. fatigued vs not fatigued. We evaluated the method using a fine-motor coordination task for the human to guide an industrial robot along a virtual path for sometime followed by a muscle curl exercise until it induces fatigue in the muscles, and then repeat the robot experiment. We recruited nine participants for the study and recorded muscle activity from their dominant upper limb using the myoelectric sensor and used the data to develop a classifier. We compared the accuracy and robustness of the classifier against conventional time-domain and wavelet-based features and showed that Riemann geometry-based features yield higher classification accuracy (∼ 91%) compared to conventional features and require less computational effort. Such classifier can be used in real-time to develop a human-aware adaptation strategy to prevent fatigue.
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