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The Analysis of Surface EMG Signals with the Wavelet-Based Correlation Dimension Method

机译:基于小波相关维数的表面肌电信号分析

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摘要

Many attempts have been made to effectively improve a prosthetic system controlled by the classification of surface electromyographic (SEMG) signals. Recently, the development of methodologies to extract the effective features still remains a primary challenge. Previous studies have demonstrated that the SEMG signals have nonlinear characteristics. In this study, by combining the nonlinear time series analysis and the time-frequency domain methods, we proposed the wavelet-based correlation dimension method to extract the effective features of SEMG signals. The SEMG signals were firstly analyzed by the wavelet transform and the correlation dimension was calculated to obtain the features of the SEMG signals. Then, these features were used as the input vectors of a Gustafson-Kessel clustering classifier to discriminate four types of forearm movements. Our results showed that there are four separate clusters corresponding to different forearm movements at the third resolution level and the resulting classification accuracy was 100%, when two channels of SEMG signals were used. This indicates that the proposed approach can provide important insight into the nonlinear characteristics and the time-frequency domain features of SEMG signals and is suitable for classifying different types of forearm movements. By comparing with other existing methods, the proposed method exhibited more robustness and higher classification accuracy.
机译:已经进行了许多尝试来有效地改善由表面肌电图(SEMG)信号分类控制的假体系统。最近,开发提取有效特征的方法仍然是主要挑战。先前的研究表明SEMG信号具有非线性特征。在这项研究中,通过结合非线性时间序列分析和时频域方法,我们提出了基于小波的相关维数方法来提取SEMG信号的有效特征。首先通过小波变换分析了SEMG信号,并计算了相关维数以获得SEMG信号的特征。然后,将这些特征用作Gustafson-Kessel聚类分类器的输入向量,以区分前臂运动的四种类型。我们的结果表明,当使用两个SEMG信号通道时,在第三分辨率级别上有四个分别对应于不同前臂运动的聚类,并且最终分类精度为100%。这表明所提出的方法可以提供对SEMG信号的非线性特征和时频域特征的重要见解,并且适合于对不同类型的前臂运动进行分类。通过与其他现有方法的比较,该方法具有更好的鲁棒性和更高的分类精度。

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