Classification of EMG signals through wavelet analysis and neural networks for controlling an active hand prosthesis

M. Arvetti, G. Gini, M. Folgheraiter
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引用次数: 43

Abstract

In order to increase the effectiveness of active hand prostheses we intend to exploit electromyographic (EMG) signals more than in the usual application for controlling one degree of freedom (gripper open or closed). Among all the numerous muscles that move the fingers, we chose only the ones in the forearm, to have a simple way to position only two electrodes. We analyze the EMG signals coming from two different subjects using a novel integration of ANN and wavelet. We show how to discriminate between more movements, five in this study, using our new classifier. Results show how the methodology we adopted allows us to obtain good accuracy in classifying the hand postures, and opens the way to more functional hand prostheses.
基于小波分析和神经网络的肌电信号分类在主动假肢控制中的应用
为了提高主动手假肢的有效性,我们打算利用肌电图(EMG)信号,而不是在通常的应用中控制一个自由度(抓手打开或关闭)。在所有移动手指的众多肌肉中,我们只选择了前臂的肌肉,以便有一个简单的方法来定位两个电极。我们使用一种新颖的神经网络和小波的集成来分析来自两个不同主体的肌电信号。我们展示了如何区分更多的动作,在这项研究中有五个,使用我们的新分类器。结果表明,我们所采用的方法使我们在手部姿势分类中获得了良好的准确性,并为更多功能的手部假体开辟了道路。
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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