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Cross-Subject Emotion Recognition Using Flexible Analytic Wavelet Transform From EEG Signals

机译:使用柔性分析小波变换从EEG信号进行交叉主题情感识别

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Human emotion is a physical or psychological process which is triggered either consciously or unconsciously due to perception of any object or situation. The electroencephalogram (EEG) signals can be used to record ongoing neuronal activities in the brain to get the information about the human emotional state. These complicated neuronal activities in the brain cause non-stationary behavior of the EEG signals. Thus, emotion recognition using EEG signals is a challenging study and it requires advanced signal processing techniques to extract the hidden information of emotions from EEC signals. Due to poor generalizability of features from EEG signals across subjects, recognizing cross-subject emotion has been difficult. Thus, our aim is to comprehensively investigate the channel specific nature of EEG signals and to provide an effective method based on flexible analytic wavelet transform (FAWT) for recognition of emotion. FAWT decomposes the EEG signal into different sub-band signals. Furthermore, we applied information potential to extract the features from the decomposed sub-band signals of EEG signal. The extracted feature values were smoothed and fed to the random forest and support vector machine classifiers that classified the emotions. The proposed method is applied to two different publicly available databases which are SJTU emotion EEG dataset and database for emotion analysis using physiological signal. The proposed method has shown better performance for human emotion classification as compared to the existing method. Moreover, it yields channel specific subject classification of emotion EEG signals when exposed to the same stimuli.
机译:由于对任何对象或情况的看法,人类的情感是一种物理或心理过程,它是有意识地或无意识地引发的。脑电图(EEG)信号可用于记录大脑中的持续神经元活动,以获取有关人类情绪状态的信息。这些复杂的大脑中的神经元活性导致脑电图信号的非静止行为。因此,使用EEG信号的情感识别是一个具有挑战性的研究,它需要高级信号处理技术来从EEC信号中提取情绪的隐藏信息。由于跨对象的脑电图信号的特征不易得到,识别交叉主体情绪困难。因此,我们的目标是全面调查EEG信号的信道特定性质,并提供基于柔性分析小波变换(FAWT)的有效方法,以识别情绪。 FAWT将EEG信号分解为不同的子带信号。此外,我们应用了从EEG信号的分解子带信号中提取特征的信息电位。将提取的特征值平滑并馈送到随机森林,并支持向向矢量机器分类器分类为情绪。该方法应用于两个不同的公共数据库,这些数据库是使用生理信号的SJTU情感EEG数据集和数据库,用于情感分析。与现有方法相比,该方法对人类情感分类的表现更好。此外,当暴露于相同的刺激时,它产生了情绪EEG信号的信道特定主题分类。

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