Electromyogram (EMG) Signal Processing Analysis for Clinical Rehabilitation Application

I. Saad, Nur Husna Bais, C. Bun Seng, H. M. Zuhir, N. Bolong
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引用次数: 13

Abstract

Analysis of electromyogram (EMG) signal processing and its application to identify human muscle strength of rehabilitation purpose has been successfully carried out in this paper. Single channel EMG signal was obtained from human muscle using non-invasive electrodes and further process by signal acquisition circuit to get a suitable signal to be process. In the first part of signal acquisition, the amplification circuit for the small EMG signal has been design successfully. After amplification stage EMG signal was digitized through analogue and digital converter (ADC) then further process in microcontroller (ATmega328) for getting accurate EMG signal. Finally, the processed EMG signal was classified into 6 different levels in order to display the muscle strength level of the user. This EMG device can be used to help the weak person or an elderly to identity their strength level of muscle for clinical rehabilitation purpose.
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肌电信号处理分析在临床康复中的应用
本文成功地进行了肌电图(EMG)信号处理分析及其在识别人体肌肉力量康复目的中的应用。采用无创电极获取人体肌肉单通道肌电信号,再通过信号采集电路进行处理,得到合适的待处理信号。在信号采集的第一部分,成功地设计了小肌电信号的放大电路。放大级后的肌电信号通过模数转换器(ADC)进行数字化处理,然后在单片机(ATmega328)中进行处理,得到准确的肌电信号。最后,将处理后的肌电信号分为6个不同的级别,以显示使用者的肌肉力量水平。这种肌电图装置可以帮助身体虚弱的人或老年人识别他们的肌肉力量水平,用于临床康复。
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