基于肌电信号和深度神经网络的手指运动回归

K. Anam, Dwiretno Istiyadi Swasono, A. Z. Muttaqin, F. S. Hanggara
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引用次数: 3

摘要

为了帮助残疾人控制假手,开展了大量的肌电图(EMG)信号研究。神经网络在肌电图手指运动分类研究中得到了广泛的应用。对分类系统的研究通常只适用于有限数量的动作,尽管人体,尤其是手指,有几乎无限的动作组合来帮助完成日常活动。为了克服这个问题,需要一个比例控制系统。肌电控制的研究目前还处于实验室阶段。因此,在临床环境中获得的结果往往是不同的。然而,随着技术的发展,价格合理且可穿戴的商业肌电图设备(如Myo Armband)的出现,鼓励了这项研究开发使用回归的假肢手指控制系统。许多可用的选择之一是神经网络,它已广泛应用于各个领域。利用不同的神经网络对每个关节进行估计,结果表明预测的角度与实际角度拟合,R2高达99%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finger Movement Regression with Myoelectric Signal and Deep Neural Network
Research on electromyographic (EMG) signals is intensively carried out to help disabled people to control prosthetic hands. Neural Networks have been widely used in research on the classification of finger movements using EMG. The study of a classification system generally still works on a limited number of movements, even though the human body, especially fingers, has a nearly unlimited combination of movements to help do daily activities. To overcome this, a proportional control system is needed. In its recent development, research on myoelectric control using EMG devices is still in a laboratory environment. Hence, the results obtained in a clinical setting are often different. However, along with technological developments, the emergence of affordable and wearable commercial EMG devices such as Myo Armband, has encouraged this study to develop control systems of prosthetic fingers using regression. One of many options available is neural networks that have been widely used in various fields. By estimating each joint with a different neural network, the result shows the predicted is fitted to the actual angle with R2 as high as 99%.
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