肌电信号特征提取与分类软件模块的开发

Chanchal Garg, Y. Narayan, L. Mathew
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引用次数: 12

摘要

当上肢截肢或丧失时,假肢装置在康复中起着重要的作用。假肢以肌电装置的形式存在。这些装置的工作原理是通过电极感应肌电图(EMG)信号,当上臂的肌肉运动时,就会使一只假手随之运动。肌电图信号不能以原始形式直接用于控制任何假肢,在控制任何设备之前需要对其进行处理。处理肌电图信号的技术多种多样。本文采用小波变换方法获取肌电信号的特征,然后对这些特征进行模糊控制,使肌电信号能够用于假肢装置的功能。NI Lab View是一种高效的专业数学工具,用于处理肌电图信号。肌电图信号是通过放置在皮肤上的传感器和数据采集系统获得的。实验结果表明,所开发的软件模块是一种有效的肌电信号处理方法,可用于假肢装置。
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Development of a software module for feature extraction and classification of EMG signals
When the upper limb is amputated or lost, a prosthetic device play an important role in rehabilitation. Prosthetics are available in the form of myoelectric devices. These devices work by sensing the Electromyogram (EMG) signals, through electrodes, when the muscles in the upper arm move, this makes an artificial hand to move accordingly. EMG signals cannot be used directly in raw form to control any prosthetic, it needs to be processed before controlling any device. Different techniques are available for processing the EMG signals. Present paper has used the wavelet transform method to obtain the characteristics or features of EMG signals and then fuzzy controller has been applied on those features so that EMG signals can be used to make prosthetic device functional. NI Lab View, an efficient professional mathematical tool, has been used to process the EMG signals. EMG signals are acquired with the help of sensors placed on the skin and Data Acquisition System. Results of the experiment shows that the developed software module is an effective method to process the EMG signals and can be used for prosthetic devices.
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