Real-Time Classification of Hand Motions Using Electromyography Collected from Minimal Electrodes for Robotic Control

R. Byfield, Richard Weng, Morgan Miller, Yunchao Xie, Jheng-Wun Su, Jian Lin
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引用次数: 6

Abstract

In recent years, advances in human robot interaction (HRI) has shown massive potential for universal control of robots. Among them, electromyography (EMG) signals generated by motions of muscles have been identified as an important and useful source. Powered by recently emerged machine learning algorithms, real-time classification has been proved applicable to control robots. However, collecting EMG signals with minimum number of electrodes for real-time classification and robotic control is still a challenge. In this paper, we demonstrate that twenty five robotic commands in a robotic arm can be controlled in real time by using the EMG signals collected from only two pairs of active surface electrodes on each forearm of human subjects. To achieve this task, a variety of tested ML models for this classification were tested. Among them, the Gaussian Naïve Bayes (GNB) achieved an accuracy of >96%. This unprecedented level of classification accuracy of the EMG signals collected from the least number of active electrodes suggest that by combination of optimized electrode configuration and a suitable ML model, the capability of robotic control can be maximized.
基于最小电极肌电图的机器人控制手部运动实时分类
近年来,人机交互(HRI)技术的进步显示出机器人通用控制的巨大潜力。其中,肌肉运动产生的肌电图(electromyography, EMG)信号已被认为是一个重要而有用的信号来源。在最近出现的机器学习算法的支持下,实时分类已被证明适用于控制机器人。然而,用最少的电极收集肌电信号进行实时分类和机器人控制仍然是一个挑战。在本文中,我们证明了机器人手臂上的25个机器人指令可以通过使用从人类受试者的每个前臂上的两对活动表面电极收集的肌电信号来实时控制。为了完成这项任务,我们测试了用于该分类的各种经过测试的ML模型。其中,高斯Naïve贝叶斯(GNB)的准确率达到了bb0 96%。从最少数量的活动电极收集的肌电信号的分类精度达到前所未有的水平,这表明通过优化电极配置和合适的ML模型的结合,可以最大限度地提高机器人的控制能力。
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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