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Electromyography Signal Analysis Using Wavelet Transform And Higher Order Statistics To Determine Muscle Contraction

机译:使用小波变换和高阶统计量的肌电信号分析以确定肌肉收缩

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Electromyography gives an electrical representation of neuromuscular activation associated with a contracting muscle. The electromyography signal acquires noise while travelling though different media. The wavelet transform is employed for removing noise from surface electromyography (SEMG) and higher order statistics are applied for analysing the signal. With the appropriate choice of wavelet, it is possible to remove interference noise (denoise) effectively in order to analyse the SEMG. Daubechies wavelets (db2, db4, db5, db6, db8), symmlet (sym4, sym5) and the orthogonal Meyer (dmey) wavelet can efficiently remove noise from the recorded SEMG signals. However, the most effective wavelet for SEMG denoising is chosen by calculating the root mean square difference and signal-to-noise ratio values. Results for both root mean square difference and signal-to-noise ratio show that wavelet db2 performs denoising best out of the wavelets. Furthermore, the higher order statistics method is applied for SEMG signal analysis because of its unique properties when applied to random time series, such as parameter estimation, testing of Gaussianity and linearity, deterministic and non-deterministic signal detection etc. Gaussianity and linearity tests as part of higher order statistics are conducted to understand changes in muscle contraction and to quantify the effectiveness of the noise removal process. According to the results, the SEMG signal becomes less Gaussian and more linear with increased force.
机译:肌电图可显示与收缩肌肉相关的神经肌肉激活的电信号。肌电信号在通过不同介质传播时会获取噪声。小波变换用于去除表面肌电图(SEMG)中的噪声,而高阶统计量则用于分析信号。通过适当选择小波,可以有效地去除干扰噪声(降噪),以便分析SEMG。 Daubechies小波(db2,db4,db5,db6,db8),symmlet(sym4,sym5)和正交Meyer(dmey)小波可以有效地从记录的SEMG信号中去除噪声。但是,通过计算均方根差和信噪比值来选择最有效的SEMG去噪小波。均方根差和信噪比的结果都表明,小波db2在小波中表现最佳。此外,由于高阶统计方法在应用于随机时间序列时具有独特的性能,因此可以用于SEMG信号分析,例如参数估计,高斯和线性测试,确定性和非确定性信号检测等。进行高阶统计的一部分,以了解肌肉收缩的变化并量化噪声消除过程的有效性。根据结果​​,随着力的增加,SEMG信号变得较少高斯,而变得更加线性。

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