A study of back-propagation and radial basis neural network on EMG signal classification

Y. L. Chong, K. Sundaraj
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引用次数: 15

Abstract

Neural networks are ubiquitous tool for classification. This paper presents a study of classifying EMG signal patterns using back-propagation and radial basis neural networks. Since the pattern of the EMG signal elicited may differ depending on the activity of the muscle movement. Therefore, the purpose of this study was to demonstrate the effectiveness of the neural networks on discriminating the patterns of certain activities to their respective category. Experiments were carried out on a selected muscle. Five subjects were asked to perform several series of voluntary movement with the respect to the muscle concerned. From the EMG data obtained, four statistical features are computed and are applied to the networks. Comparison is made based on the elements of the networks and the classification rate achieved. Generally, both networks are well performed in discriminating different EMG signal patterns with the successful rate of 88% and 89.33% respectively.
反向传播与径向基神经网络在肌电信号分类中的研究
神经网络是一种无处不在的分类工具。本文研究了基于反向传播和径向基神经网络的肌电信号模式分类方法。由于肌电图信号的模式可能会因肌肉运动的活动而有所不同。因此,本研究的目的是证明神经网络在区分特定活动模式到各自类别方面的有效性。实验是在选定的肌肉上进行的。五名受试者被要求进行一系列有关肌肉的自主运动。从获得的肌电图数据中,计算出四个统计特征并应用于网络。根据网络的要素和分类率进行比较。总的来说,这两种网络在识别不同肌电信号模式方面表现良好,成功率分别为88%和89.33%。
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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