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Emotional Recognition of EEG Signals based on Fractal Dimension

机译:基于分形维数的EEG信号的情感识别

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摘要

A method based on fractal dimension is proposed to identify EEG emotional signals, and fractal dimension is introduced as an eigenvalue into emotion recognition research. The design experiment obtains the EEG raw data of the experimenter and uses the experimental video to locate and capture the effective signal from the original data. After the pre-electron interference and low-pass filtering are applied, the effective signal is subjected to principal component analysis. The dimension reduction dimension is obtained by reducing the dimension. The support vector machine (SVM) and K nearest neighbor (KNN) classification algorithm are used to classify the eigenvalues to obtain their respective accuracy. The results show that the EEG emotion recognition method based on fractal dimension can distinguish different emotions, and the highest accuracy rate is 83.33%. Therefore, fractal dimension is feasible as the characteristic value of emotion recognition.
机译:提出了一种基于分形尺寸的方法来识别EEG情绪信号,并将分形维数作为特征值引入情绪识别研究。 设计实验获得实验者的EEG原始数据,并使用实验视频定位并捕获来自原始数据的有效信号。 在施加预电子干扰和低通滤波之后,对有效信号进行主成分分析。 通过减小尺寸来获得尺寸减小尺寸。 支持向量机(SVM)和K最近邻(KNN)分类算法用于对特征值进行分类以获得各自的精度。 结果表明,基于分形维数的EEG情绪识别方法可以区分不同的情绪,最高的精度率为83.33%。 因此,分形尺寸是情感识别的特征价值是可行的。

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