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Wavelet Transform-Based Classification of Electromyogram Signals Using an Anova Technique

机译:基于小波变换的Anova技术对肌电信号的分类

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Wavelet analysis of surface electromyogram (sEMG) signals has been investigated. Methods to remove noise before processing and further analysis are rather significant for these signals. The sEMG signals were estimated with the following steps, first, the obtained signal was decomposed using wavelet transform; then, decomposed coefficients were analyzed by threshold methods, and, finally, reconstruction was performed. Comparison of the Daubechies wavelet family for effective removing noise from the recorded sEMGs was executed preciously. As was found, wavelet transform db4 performs denoising best among the aforesaid wavelet family. Results inferred that Daubechies wavelet families (db4) were more suitable for the analysis of sEMG signals related to different upper limb motions, and a classification accuracy of 88.90% was achieved. Then, a statistical technique (one-way repeated factorial analysis) for the experimental coefficient was done to investigate the class separ ability among different motions.
机译:已经研究了表面肌电图(sEMG)信号的小波分析。对于这些信号,在处理和进一步分析之前消除噪声的方法非常重要。 sEMG信号通过以下步骤进行估计: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,最后进行重构。对Daubechies小波家族进行比较以有效地消除所记录的sEMG中的噪声非常有价值。如发现的那样,小波变换db4在上述小波族中表现最佳。结果表明,Daubechies小波家族(db4)更适合于分析与不同上肢运动相关的sEMG信号,并且分类精度达到88.90%。然后,对实验系数进行了统计技术(单向重复析因分析),以研究不同运动之间的类分离能力。

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