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首页> 外文期刊>Journal of electromyography and kinesiology: Official journal of the International Society of Electrophysiological Kinesiology >An automatic, adaptive, information-based algorithm for the extraction of the sEMG envelope
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An automatic, adaptive, information-based algorithm for the extraction of the sEMG envelope

机译:基于自动,自适应,基于信息的信息 - SEMG信封的提取算法

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摘要

Surface ElectroMyography (sEMG) is widely used as a non-invasive tool for the assessment of motor control strategies. However, the standardization of the methods used for the estimation of sEMG amplitude is a problem yet to be solved; in most cases, sEMG amplitude is estimated through the extraction of the envelope of the signal via different low-pass filtering procedures with fixed cut-off frequencies chosen by the experimenter. In this work, we have shown how it is not possible to find the optimal choice of the cut-off frequency without anya prioriknowledge on the signal; considering this, we have proposed an updated version of an iterative adaptive algorithm already present in literature, aiming to completely automatize the sEMG amplitude estimation. We have compared our algorithm to most of the typical solutions (fixed window filters and the previous version of the adaptive algorithm) for the extraction of the sEMG envelope, showing how the proposed adaptive procedure significantly improves the quality of the estimation, with a lower fraction of variance unexplained by the extracted envelope for different simulated modulating waveforms (p?
机译:表面肌电图(SEMG)广泛用作非侵入性工具,用于评估电机控制策略。然而,用于估计SEMG幅度的方法的标准化是尚未解决的问题;在大多数情况下,通过通过不同的低通滤波过程提取信号的包络通过用实验器选择的固定截止频率提取SEMG幅度来估计SEMG幅度。在这项工作中,我们已经表明了如何在没有Anya的情况下找到截止频率的最佳选择;考虑到这一点,我们提出了已经存在于文献中的迭代自适应算法的更新版本,旨在完全自动化SEMG幅度估计。我们将算法与大多数典型解决方案(固定窗口过滤器和先前版本的自适应算法的算法)进行了比较,用于提取SEMG信封,显示所提出的自适应过程如何显着提高估计质量,较低的分数通过提取的包络因不同模拟调制波形而解释的方差(P?<〜0.005)。基于熵的收敛标准的定义允许完全自动化该过程。我们推出由于其与实验选择的独立性,因此该算法可以确保SEM幅度的估计的可重复性,因此允许在临床环境中进行定量解释。

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