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Passive EEG-based emotional state cognition using subject-independent feature extraction

Authors
Kim, S.-H.Nguyen, N.A.T.
Issue Date
2017
Publisher
International Association of Computer Science and Information Technology
Keywords
Emotion recognition; Feature extraction; Multiclass common spatial patterns; Passive electroencephalogram; Subject-independent
Citation
International Journal of Machine Learning and Computing, v.7, no.4, pp.85 - 88
Indexed
SCOPUS
Journal Title
International Journal of Machine Learning and Computing
Volume
7
Number
4
Start Page
85
End Page
88
URI
https://scholar.korea.ac.kr/handle/2021.sw.korea/86079
DOI
10.18178/ijmlc.2017.7.4.625
ISSN
2010-3700
Abstract
Research on emotion recognition technologies, whereby emotional state is read off via using voice, facial image, bio-signal and electroencephalogram (EEG), has received considerable attention due to its prevalence in various applications including entertainment, health care, on-line education, automobile, marketing research, to robot and etc. Among the emotional state cognitive technologies utilizing the biometric data, the study on EEG is one of the most widely used. However, EEG-based emotion recognition meets challenges because of multi-channels time series data structure in which contains abnormal characteristics changing the statistical component over time. Consequently, this leads to investigate towards appropriate feature extraction approach in order to be more versatile data analysis to capture underlying information for cognitive the emotional state from EEG signals. In this paper, a subject-independent multiclass-common spatial patterns (Si-MCSP) based on passive EEG therefore is proposed to cognitive the emotional states. Si-MCSP can extract the prominent features in the terms of the subject-independence with respect to the each emotional state. Furthermore, Si-MCSP can automatically determine the numbers of the optimal features which provide an improved classification system of emotional state dramatically. Multiclass Support Vector Machine (Multi-SVM) model then is set up to classify these features for emotion recognition. The experimental results show that the proposed feature extraction method, Si-MCSP, performs higher classification accuracy than the popular feature extraction methods.
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