Ren Xiaomei, Yan Zhiguo, Wang Zhizhong, Hu Xiao
Department of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai 200030, PR China.
J Neurosci Methods. 2006 Dec 15;158(2):313-22. doi: 10.1016/j.jneumeth.2006.06.005. Epub 2006 Jul 10.
We have studied methods for noise reduction of myoelectric signals and for extraction of motor unit action potentials from these signals. Effective MUAP peak detection is the first important step in EMG decomposition. We first combined independent component analysis and wavelet filtering to remove power line interference, and then applied a wavelet filtering method and threshold estimation calculated using wavelet transform to suppress background noise and Gaussian white noise. The technique was applied to single-channel, short-period real myoelectric signals from normal subjects and to artificially generated EMG recordings. In contrast to existing methods based on amplitude single-threshold filtering of the original myoelectric signal or a conventional digitally filtered signal, our technique is fast and robust. Moreover, the proposed algorithm is substantially automatic. The performance has been evaluated with a set of synthetic and experimentally recorded myoelectric signals. The basic tool for testing was power spectrum density (PSD) estimation by the Welch method, which allowed us to analyze the PSD of nonstationary signals.
我们研究了肌电信号降噪以及从这些信号中提取运动单位动作电位的方法。有效的运动单位动作电位峰值检测是肌电图分解的首要重要步骤。我们首先将独立成分分析和小波滤波相结合以去除电力线干扰,然后应用一种小波滤波方法以及使用小波变换计算的阈值估计来抑制背景噪声和高斯白噪声。该技术应用于来自正常受试者的单通道、短周期真实肌电信号以及人工生成的肌电图记录。与基于原始肌电信号或传统数字滤波信号的幅度单阈值滤波的现有方法相比,我们的技术快速且稳健。此外,所提出的算法基本上是自动的。已使用一组合成的和实验记录的肌电信号对性能进行了评估。测试的基本工具是通过韦尔奇方法进行功率谱密度(PSD)估计,这使我们能够分析非平稳信号的功率谱密度。