Electroencephalography based human emotion state classification using principal component analysis and artificial neural network

IF 0.6 Q4 COMPUTER SCIENCE, THEORY & METHODS
V. S. N. Kanuboyina, T. Shankar, Rama Raju Venkata Penmetsa
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引用次数: 0

Abstract

In recent decades, the automatic emotion state classification is an important technology for human-machine interactions. In Electroencephalography (EEG) based emotion classification, most of the existing methodologies cannot capture the context information of the EEG signal and ignore the correlation information between dissimilar EEG channels. Therefore, in this study, a deep learning based automatic method is proposed for effective emotion state classification. Firstly, the EEG signals were acquired from the real time and databases for emotion analysis using physiological signals (DEAP), and further, the band-pass filter from 0.3 Hz to 45 Hz is utilized to eliminate both high and low-frequency noise. Next, two feature extraction techniques power spectral density and differential entropy were employed for extracting active feature values, which effectively learn the contextual and spatial information of EEG signals. Finally, principal component analysis and artificial neural network were developed for feature dimensionality reduction and emotion state classification. The experimental evaluation showed that the proposed method achieved 96.38% and 97.36% of accuracy on DEAP, and 92.33% and 89.37% of accuracy on a real-time database for arousal and valence emotion states. The achieved recognition accuracy is higher compared to the support vector machine on both databases.
基于脑电图的主成分分析和人工神经网络的人类情绪状态分类
情绪状态自动分类是近几十年来人机交互领域的一项重要技术。在基于脑电图的情绪分类中,现有的方法大多不能捕捉到脑电信号的上下文信息,忽略了不同脑电信号通道之间的相关信息。因此,本研究提出了一种基于深度学习的情绪状态自动分类方法。首先,利用生理信号(DEAP)从实时和数据库中获取脑电信号进行情绪分析,然后利用0.3 Hz ~ 45 Hz的带通滤波器去除高低频噪声。其次,采用功率谱密度和差分熵两种特征提取技术提取活动特征值,有效学习脑电信号的上下文信息和空间信息;最后,利用主成分分析和人工神经网络进行特征降维和情绪状态分类。实验结果表明,该方法在DEAP上的准确率分别为96.38%和97.36%,在唤醒和效价情绪实时数据库上的准确率分别为92.33%和89.37%。与支持向量机相比,在这两个数据库上实现的识别精度更高。
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来源期刊
Multiagent and Grid Systems
Multiagent and Grid Systems COMPUTER SCIENCE, THEORY & METHODS-
CiteScore
1.50
自引率
0.00%
发文量
13
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