脑电信号分析中小波变换符号(2-10)与多波变换符号(2-10)的比较

Efrén L. Lema-Condo, F. Bueno-Palomeque, Susana E. Castro-Villalobos, E. F. Ordóñez-Morales, L. Serpa-Andrade
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引用次数: 21

摘要

数字滤波器作为小波变换在信号处理中得到广泛认可;然而,对于脑电图(EEG)信号的分析,要使用的最优滤波器尚未明确确定。本研究比较了69名无症状志愿者在8分钟的外语课上使用小波符号(sym2 - sym10)和多贝希(db2 - db10)对记录的脑电图信号进行滤波的结果。将脑电信号分成4个子波段,进行能量、频率和时间分析。得到的结果表明,滤波器以不同但不显著的方式响应。为了确定每个分析范围的适当母小波,将其相似性与Symlets (sym2 - sym10)的平均值进行考虑,并将此过程复制到db小波中。考虑到脑电信号的能量,db4滤波器在Alpha和Delta频段的5个电极中存在较高。在频域,db5家族在Beta, Alpha和Delta频段的12个电极中存在。就时间而言,sym9滤波器在Beta, Theta和Delta频段的4个电极中具有较高的存在。本研究旨在为无症状志愿者脑电图信号分析中母小波的正确选择提供更多信息。
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Comparison of wavelet transform symlets (2-10) and daubechies (2-10) for an electroencephalographic signal analysis
The use of digital filters as the Wavelet Transform is widely recognized in signal processing; however, for the analysis of an electroencephalographic (EEG) signal, the most optimal filter to be used has not been definitively determined. This work presents a comparison between the results obtained by filtering an EEG signal recorded during an 8 minute foreign language class on 69 asymptomatic volunteers using Wavelet Symlets (sym2 - sym10) and Daubechies (db2 - db10). The EEG signals were divided into four sub-bands and an energy, frequency and time analysis was performed. The results obtained show that the filters respond in a different but not significant way. For the identification of the appropriate mother Wavelet for each scope of analysis, its similarity was considered with the average value of Symlets (sym2 - sym10) and this process was replicated for db Wavelets. Considering the energy of the EEG signals, the db4 filter had a higher presence in 5 electrodes in the Alpha and Delta frequency bands. In the frequency domain, the db5 family has a presence in 12 electrodes in the Beta, Alpha and Delta frequency bands. Regarding time, the sym9 filter has a higher presence in 4 electrodes in the Beta, Theta and Delta frequency bands. The purpose of this work is to provide more information for the proper choice of a mother Wavelet in the EEG signal analysis in asymptomatic volunteers.
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