Clancy E A, Morin E L, Merletti R
Department of Electrical and Computer Engineering, Worcester Polytechnic Institute, 100 Institute Road, Worcester, MA 01609,
J Electromyogr Kinesiol. 2002 Feb;12(1):1-16. doi: 10.1016/s1050-6411(01)00033-5.
This paper reviews data acquisition and signal processing issues relative to producing an amplitude estimate of surface EMG. The paper covers two principle areas. First, methods for reducing noise, artefact and interference in recorded EMG are described. Wherever possible noise should be reduced at the source via appropriate skin preparation, and the use of well designed active electrodes and signal recording instrumentation. Despite these efforts, some noise will always accompany the desired signal, thus signal processing techniques for noise reduction (e.g. band-pass filtering, adaptive noise cancellation filters and filters based on the wavelet transform) are discussed. Second, methods for estimating the amplitude of the EMG are reviewed. Most advanced, high-fidelity methods consist of six sequential stages: noise rejection/filtering, whitening, multiple-channel combination, amplitude demodulation, smoothing and relinearization. Theoretical and experimental research related to each of the above topics is reviewed and the current recommended practices are described.
本文综述了与表面肌电图幅度估计相关的数据采集和信号处理问题。本文涵盖两个主要领域。首先,描述了降低记录的肌电图中的噪声、伪迹和干扰的方法。只要有可能,应通过适当的皮肤准备以及使用精心设计的有源电极和信号记录仪器在源头上降低噪声。尽管做出了这些努力,一些噪声总会伴随所需信号,因此讨论了用于降噪的信号处理技术(例如带通滤波、自适应噪声消除滤波器和基于小波变换的滤波器)。其次,综述了估计肌电图幅度的方法。大多数先进的高保真方法包括六个连续阶段:噪声抑制/滤波、白化、多通道组合、幅度解调、平滑和重新线性化。对上述每个主题的理论和实验研究进行了综述,并描述了当前推荐的做法。