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表面肌电信号滤波:运动伪迹和基线噪声污染。

Filtering the surface EMG signal: Movement artifact and baseline noise contamination.

机构信息

Delsys Inc., Boston MA, USA.

出版信息

J Biomech. 2010 May 28;43(8):1573-9. doi: 10.1016/j.jbiomech.2010.01.027. Epub 2010 Mar 5.

DOI:10.1016/j.jbiomech.2010.01.027
PMID:20206934
Abstract

The surface electromyographic (sEMG) signal that originates in the muscle is inevitably contaminated by various noise signals or artifacts that originate at the skin-electrode interface, in the electronics that amplifies the signals, and in external sources. Modern technology is substantially immune to some of these noises, but not to the baseline noise and the movement artifact noise. These noise sources have frequency spectra that contaminate the low-frequency part of the sEMG frequency spectrum. There are many factors which must be taken into consideration when determining the appropriate filter specifications to remove these artifacts; they include the muscle tested and type of contraction, the sensor configuration, and specific noise source. The band-pass determination is always a compromise between (a) reducing noise and artifact contamination, and (b) preserving the desired information from the sEMG signal. This study was designed to investigate the effects of mechanical perturbations and noise that are typically encountered during sEMG recordings in clinical and related applications. The analysis established the relationship between the attenuation rates of the movement artifact and the sEMG signal as a function of the filter band pass. When this relationship is combined with other considerations related to the informational content of the signal, the signal distortion of filters, and the kinds of artifacts evaluated in this study, a Butterworth filter with a corner frequency of 20 Hz and a slope of 12 dB/oct is recommended for general use. The results of this study are relevant to biomechanical and clinical applications where the measurements of body dynamics and kinematics may include artifact sources.

摘要

表面肌电图(sEMG)信号源于肌肉,但不可避免地会受到各种噪声信号或伪迹的污染,这些噪声信号或伪迹源于皮肤-电极界面、放大信号的电子设备以及外部源。现代技术在一定程度上可以抵御其中一些噪声,但无法抵御基线噪声和运动伪迹噪声。这些噪声源的频谱会污染 sEMG 频谱的低频部分。在确定去除这些伪迹的适当滤波器规格时,必须考虑许多因素;它们包括被测肌肉和收缩类型、传感器配置以及特定的噪声源。带通的确定始终是在(a)减少噪声和伪迹污染,以及(b)保留 sEMG 信号中所需信息之间的折衷。本研究旨在调查在临床和相关应用中进行 sEMG 记录时通常遇到的机械干扰和噪声的影响。该分析确立了运动伪迹和 sEMG 信号的衰减率与滤波器带通之间的关系。当将这种关系与与信号信息含量、滤波器的信号失真以及本研究中评估的伪迹种类相关的其他考虑因素结合使用时,建议使用具有 20 Hz 拐角频率和 12 dB/oct 斜率的巴特沃斯滤波器进行一般用途。本研究的结果与生物力学和临床应用相关,其中身体动力学和运动学的测量可能包括伪迹源。

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