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首页> 外文期刊>Journal of electromyography and kinesiology: Official journal of the International Society of Electrophysiological Kinesiology >Surface electromyography as a tool to assess the responses of car passengers to lateral accelerations: Part I. Extraction of relevant muscular activities from noisy recordings
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Surface electromyography as a tool to assess the responses of car passengers to lateral accelerations: Part I. Extraction of relevant muscular activities from noisy recordings

机译:表面电拍摄作为评估汽车乘客对侧向加速的工具的工具:第一部分。从嘈杂的记录中提取相关肌肉活动的提取

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摘要

The aim of this paper is to develop a method to extract relevant activities from surface electromyography (SEMG) recordings under difficult experimental conditions with a poor signal to noise ratio. High amplitude artifacts, the QRS complex, low frequency noise and white noise significantly alter EMG characteristics. The CEM algorithm proved to be useful for segmentation of SEMG signals into high amplitude artifacts (HAA), phasic activity (PA) and background postural activity (BA) classes. This segmentation was performed on signal energy, with classes belonging to a chi(2) distribution. Ninety-five percent of HAA events and 96.25% of BA events were detected, and the remaining noise was then identified using AR modeling, a classification based upon the position of the coordinates of the pole of highest module. This method eliminated 91.5% of noise and misclassified only 3.3% of EMG events when applied to SEMG recorded on passengers subjected to lateral accelerations. (C) 2006 Published by Elsevier Ltd.
机译:本文的目的是开发一种方法,以在困难的实验条件下从表面肌电图(SEMG)记录中提取相关活动,其发出差与噪声比差。高幅度伪影,QRS复合物,低频噪声和白噪声显着改变了EMG特性。 CEM算法证明是可用于SEMG信号分割成高幅度伪影(HAA),相位活动(PA)和背景姿势活动(BA)类。该分段对信号能量进行,具有属于CHI(2)分布的类。检测到95%的HAA事件和96.25%的BA事件,然后使用AR建模识别剩余噪声,基于最高模块杆的坐标位置的分类。此方法消除了91.5%的噪声,并在申请于经过横向加速度的乘客上录制的SEMG时分类仅3.3%的EMG事件。 (c)2006年由elestvier有限公司出版

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