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Automatic Event Detection in Surface EMG of Rhythmically Activated Muscles

机译:有节奏的肌肉表面肌电图的自动事件检测

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Precise detection of discrete events in the surface elec-tromyogram (EMG) like the phasic change in the activity pattern associated with the initiation of a rapid motor response is an important issue in the analysis of the human motor system. However, accurate detection is difficult when the muscle is already involved in a secondary motor task, and two superimposed activation patterns have to be separated. This paper describes a method which allows automatic detection of phasic events that arise during simultaneous execution of rhythmical and discrete motor tasks by the same muscle. Based on a nonlinear signal model, events are identified as characteristic changes in the variance of the original EMG signal by using a two-window scheme and the generalized likelihood ratio test. Both, the beginning as well as the end of epochs with prominent EMG activity related to the rhythmical movement and the onset of phasic activity indicating initiation of a discrete contraction can be detected. Problems arising from modelling the EMG by a sequence of independent Gaussian random variables modulated by a deterministic control pattern are discussed.
机译:精确检测表面肌电图(EMG)中离散事件(例如与快速运动响应的启动相关的活动模式的相变)是分析人体运动系统的重要问题。但是,当肌肉已经参与到第二运动任务中时,准确的检测将很困难,并且必须将两个叠加的激活模式分开。本文介绍了一种方法,该方法可以自动检测在同一肌肉同时执行有节奏和离散的运动任务时出现的相位事件。基于非线性信号模型,通过使用两个窗口方案和广义似然比检验,将事件识别为原始EMG信号方差的特征变化。可以检测到与节奏运动有关的具有明显EMG活动的时期的开始和结束以及指示离散收缩开始的阶段性活动的开始。讨论了通过由确定性控制模式调制的一系列独立高斯随机变量对EMG建模而产生的问题。

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