Recognition of emotional states induced by music videos based on nonlinear feature extraction and SOM classification

S. Hatamikia, A. Nasrabadi
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引用次数: 27

Abstract

This research aims at investigating the relationship between Electroencephalogram (EEG) signals and human emotional states. A subject-independent emotion recognition system is proposed using EEG signals collected during emotional audio-visual inductions to classify different classes of continuous valence-arousal model. First, four feature extraction methods based on Approximate Entropy, Spectral entropy, Katz's fractal dimension and Petrosian's fractal dimension were used; then, a two-stage feature selection method based on Dunn index and Sequential forward feature selection algorithm (SFS) algorithm was used to select the most informative feature subsets. Self-Organization Map (SOM) classifier was used to classify different emotional classes with the use of 5-fold cross-validation. The best results were achieved using combination of all features by average accuracies of %68.92 and %71.25 for two classes of valence and arousal, respectively. Furthermore, a hierarchical model which was constructed of two classifiers was used for classifying 4 emotional classes of valence and arousal levels and the average accuracy of %55.15 was achieved.
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基于非线性特征提取和SOM分类的音乐视频情绪状态识别
本研究旨在探讨脑电图(EEG)信号与人类情绪状态之间的关系。提出了一种独立于主体的情绪识别系统,利用情绪视听诱导过程中采集的脑电图信号对不同类型的连续价-觉醒模型进行分类。首先,采用基于近似熵、谱熵、Katz分形维数和Petrosian分形维数的四种特征提取方法;然后,采用基于Dunn索引和顺序前向特征选择算法(SFS)的两阶段特征选择方法,选择信息量最大的特征子集;采用自组织映射(SOM)分类器对不同的情绪类别进行分类,并采用5倍交叉验证。对效价和唤醒两类特征的平均准确率分别为%68.92和%71.25。采用两个分类器构建的层次模型对4类情绪的效价和唤醒水平进行分类,平均准确率为%55.15。
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