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Investigation of Human Emotion Pattern Based on EEG Signal Using Wavelet Families and Correlation Feature Selection

机译:基于脑电图的基于脑电图的人类情感模式研究和相关特征选择

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Emotions is one of the advantages given by God to human beings compared to other living creatures. Emotions have an important role in human life. Many studies have been conducted to recognize human emotions using physiological measurements, one of which is Electroencephalograph (EEG). However, the previous researches have not discussed the types of wavelet families that have the best performance and canals that are optimal in the introduction of human emotions. In this paper, the power features of several types of wavelet families namely daubechies, symlets, and coiflets with the Correlation Feature Selection (CFS) method to select the best features of alpha, beta, gamma and theta frequencies. According to the results, coiflet is a method of the wavelet family that has the best accuracy value in emotional recognition. The use of the CFS feature selection can improve the accuracy of the results from 81% to 93%, and the five most dominant channels in the power features of alpha and gamma band on T8, T7, C5, CP5, and TP7. Hence, it can be concluded that the temporal of the left brain is more dominant in the recognition of human emotions.
机译:与其他生物相比,情绪是上帝对人类的优势之一。情绪在人类生活中具有重要作用。已经进行了许多研究以识别使用生理测量的人类情绪,其中一个是脑电图(EEG)。然而,以前的研究尚未讨论具有最佳性能和运河的小波家庭类型,这在引入人类情绪方面是最佳的。在本文中,多种类型的小波家族的功率特征即Dauubechies,Symlet和具有相关特征选择(CFS)方法的Coiflet来选择alpha,β,伽马和θ频率的最佳特征。根据结果​​,Coiflet是小波家族的方法,其具有情绪识别的最佳精度值。 CFS特征选择的使用可以提高81%至93%的结果,以及T8,T7,C5,CP5和TP7上的Alpha和伽马带的功率特征中的五个最主导通道。因此,可以得出结论,在识别人类情绪时,左脑的时间更加占主导地位。

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