Graph Neural Networks for HD EMG-based Movement Intention Recognition: An Initial Investigation

S. M. Massa, Daniele Riboni, K. Nazarpour
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引用次数: 2

Abstract

Recently, high-density (HD) EMG electrodes have been proposed for improving amputees’ movement/grasping intention recognition, exploiting different machine learning techniques. HD EMG electrodes are composed of a large number of closely spaced channels that simultaneously acquire EMG signals from different parts of the muscle. Given the topological properties of these devices, it is important to fully exploit the spatiotemporal information provided by the electrodes to optimize recognition accuracy. In this work, we introduce the use of Graph Neural Networks (GNNs) to process HD EMG data for movement intention recognition of people with an amputation affecting the upper limbs and which use a robotic prosthesis. In this initial investigation of the approach, we conducted experiments using a real-world dataset consisting of EMG signals collected from 20 volunteers while performing 65 different gestures. We were able to detect 45 gestures with a classification error rate of less than 10%, and obtained an overall classification error rate of 8.75% with a standard deviation of 4.9. To the best of our knowledge, this is the first work in which GNNs are used for processing HD EMG data.
基于高清肌电图的运动意图识别的图神经网络初步研究
最近,高密度(HD)肌电图电极被提出用于提高截肢者的运动/抓取意图识别,利用不同的机器学习技术。高清肌电信号电极由大量紧密间隔的通道组成,这些通道同时获取来自肌肉不同部位的肌电信号。考虑到这些器件的拓扑特性,充分利用电极提供的时空信息来优化识别精度是很重要的。在这项工作中,我们介绍了使用图神经网络(gnn)来处理高清肌电图数据,以识别使用机器人假肢的截肢者的运动意图。在对该方法的初步研究中,我们使用了一个由20名志愿者在做65种不同手势时收集的肌电信号组成的真实数据集进行了实验。我们能够检测出45种手势,分类错误率小于10%,总体分类错误率为8.75%,标准差为4.9。据我们所知,这是第一次将gnn用于处理高清肌电图数据。
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