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Muscle fatigue detection in EMG using time-frequency methods, ICA and neural networks.

机译:使用时频方法,ICA和神经网络在EMG中进行肌肉疲劳检测。

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The electromyography (EMG) signals give information about different features of muscle function. Real-time measurements of EMG have been used to observe the dissociation between the electrical and mechanical measures that occurs with fatigue. The purpose of this study was to detect fatigue of biceps brachia muscle using time-frequency methods and independent component analysis (ICA). In order to realize this aim, EMG activity obtained from activated muscle during a phasic voluntary movement was recorded for 14 healthy young persons and EMG signals were observed in time-frequency domain for determination of fatigue. Time-frequency methods are used for the processing of signals that are non-stationary and time varying. The EMG contains transient signals related to muscle activity. The proposed method for the detection of muscle fatigue is automated by using artificial neural networks (ANN). The results show that ANN with ICA separates EMG signals from fresh and fatigued muscles, hence providing a visualization of the onset of fatigue over time. The system is adaptable to different subjects and conditions since the techniques used are not subject or workload regime specific.
机译:肌电图(EMG)信号提供有关肌肉功能不同特征的信息。 EMG的实时测量已用于观察疲劳引起的电气和机械测量之间的分离。这项研究的目的是使用时频方法和独立分量分析(ICA)来检测肱二头肌臂肌的疲劳。为了实现该目的,记录了14名健康年轻人在阶段性自愿运动期间从激活的肌肉获得的EMG活性,并在时频域观察EMG信号以确定疲劳。时频方法用于处理非平稳且随时间变化的信号。 EMG包含与肌肉活动有关的瞬时信号。所提出的用于检测肌肉疲劳的方法是通过使用人工神经网络(ANN)实现的。结果表明,带有ICA的ANN可以将新鲜和疲劳肌肉的EMG信号分离出来,因此可以直观地了解随着时间的推移疲劳的发作。该系统适用于不同的主题和条件,因为所使用的技术不是特定于主题或工作负载方案的。

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