Evaluation of feature extraction techniques in emotional state recognition

T. Filho, André Ferreira, A. C. Atencio, S. Arjunan, D. Kumar
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引用次数: 77

Abstract

We present in this paper a study of three EEG signals feature extraction techniques. These techniques have been widely employed in researches of emotional states recognition: statistical characteristics, features based on PSD (Power Spectral Density) and features based on HOC (High Order Crossings). The validation was performed via classification of emotional states of calm and stress using the K-NN based classifier in off-line mode using EEG signals from available DEAP database. The best results achieved were 70.1%, using the PSD based technique, and 69.59% using the HOC based technique.
情绪状态识别中的特征提取技术评价
本文对三种脑电信号特征提取技术进行了研究。这些技术在情绪状态识别的研究中得到了广泛的应用:统计特征、基于功率谱密度(PSD)的特征和基于高阶交叉(HOC)的特征。使用基于K-NN的分类器在离线模式下使用来自可用DEAP数据库的EEG信号对平静和紧张的情绪状态进行分类,从而进行验证。基于PSD技术的最佳结果为70.1%,基于HOC技术的最佳结果为69.59%。
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