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Wavelet analysis-based evaluation of electromyogram signal using human machine cooperation

机译:基于小波分析的人机协作对肌电信号的评估

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摘要

The human body is a combination of interacting systems that can be analysed using engineering principles. It is well known that surface electromyogram signals easily acquired from surface of skin of the body using non-invasive electrodes are composed with variety of noises. Hence methods to remove noise become most significant for surface electromyogram (sEMG) signal before performing processing and analysis. In this study, wavelet analysis has been used to analyse quality of effectiveness of surface electromyogram signal. The surface electromyogram signals were estimated with the following steps: first, the obtained signal was decomposed using wavelet transform; then, decomposed coefficients were analysed by threshold methods. Daubechies wavelets (db2-db14) family for efficiently removing noise from the recorded surface electromyogram signals has been used. However, the most essential wavelet for surface electromyogram denoising is chosen by calculating the root mean square value and signal power values from different voluntary contraction motions. The combined results of root mean square value and signal power shows that wavelet db4 performs denoising best among the wavelets. Furthermore, the statistical technique of analysis of variance (ANOVA) for experimental and best wavelet coefficient was analysed to investigate the effect of muscle-force relationship for ensuring class separability.
机译:人体是相互作用系统的组合,可以使用工程原理进行分析。众所周知,使用非侵入性电极容易从人体皮肤表面获取的表面肌电信号由各种噪声组成。因此,在执行处理和分析之前,消除噪声的方法对于表面肌电图(sEMG)信号最为重要。在这项研究中,小波分析已用于分析表面肌电图信号有效性的质量。通过以下步骤估算表面肌电图信号:首先,使用小波变换对获得的信号进行分解;然后,通过阈值方法分析分解系数。已使用Daubechies小波(db2-db14)系列从记录的表面肌电图信号中有效去除噪声。但是,通过计算不同自愿收缩运动的均方根值和信号功率值,选择了用于表面肌电图降噪的最基本小波。均方根值和信号功率的组合结果表明,小波db4在小波中表现最佳。此外,还对实验和最佳小波系数的方差分析统计技术(ANOVA)进行了分析,以研究肌肉力关系对确保类可分离性的影响。

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