Electromyography (EMG) signal recognition using combined discrete wavelet transform based on Artificial Neural Network (ANN)

M. Arozi, Farika T. Putri, M. Ariyanto, W. Caesarendra, A. Widyotriatmo, Munadi, J. Setiawan
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引用次数: 10

Abstract

Rapid disability patients increasing over time and need a solution in the future. Hand amputation is one form of disability that common in Indonesian society. A possible solution would be necessary at the moment is the development of prosthetic hand that has the ability as a human hand. The development of neuroscience has now reached the stage of the body's ability to use the signal as an input signal to operate a system. One of the applications of the science development is the use of electromyography (EMG) signals as an input to the control system to operate the prosthetic hand. This study is divided into two stages: a preliminary study and further research. Initial research focus in the process of EMG signal pattern recognition and advanced research focus in the development of a prototype prosthetic hand that is integrated with the controller system. Preliminary research indicates that the results of pattern recognition EMG signal using wavelet transform and Artificial Neural Network (ANN) classification has an accuracy rate of about 77.5 %. Based on these results, it can be concluded that the study results could be used as a signal input to program control of the prosthetic hand that will be developed in phase two.
基于人工神经网络的联合离散小波变换肌电信号识别
随着时间的推移,残疾患者迅速增加,未来需要解决方案。手部截肢是印尼社会常见的一种残疾形式。目前一个可能的解决方案是开发具有人手能力的假手。神经科学的发展现在已经达到了身体能够使用信号作为输入信号来操作系统的阶段。科学发展的应用之一是使用肌电(EMG)信号作为控制系统的输入来操作假手。本研究分为前期研究和进一步研究两个阶段。前期研究重点是肌电信号模式识别过程,后期研究重点是与控制器系统集成的假手原型的开发。初步研究表明,采用小波变换和人工神经网络(ANN)分类对肌电信号进行模式识别的结果准确率约为77.5%。基于这些结果,可以得出结论,研究结果可以作为第二阶段开发的假手程序控制的信号输入。
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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