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2013
Conference Paper
Title

EEG databases for emotion recognition

Abstract
Emotion recognition from Electroencephalogram (EEG) rapidly gains interest from research community. Two affective EEG databases are presented in this paper. Two experiments are conducted to set up the databases. Audio and visual stimuli are used to evoke emotions during the experiments. The stimuli are selected from IADS and IAPS databases. 14 subjects participated in each experiment. Emotiv EEG device is used for the data recording. The EEG data are rated by the participants with arousal, valence, and dominance levels. The correlation between powers of different EEG bands and the affective ratings is studied. The results agree with the literature findings and analyses of benchmark DEAP database that proves the reliability of the two databases. Similar brain patterns of emotions are obtained between the established databases and the benchmark database. A SVM-based emotion recognition algorithm is proposed and applied to both databases and the benchmark database. Use of a Fractal Dimension feature in combination with statistical and Higher Order Crossings (HOC) features gives us results with the best accuracy. Up to 8 emotions can be recognized. The accuracy is consistent between the established databases and the benchmark database.
Author(s)
Liu, Yisi
Fraunhofer Research Centre for Interactive Digital Media IDM@NTU  
Sourina, Olga
Fraunhofer Research Centre for Interactive Digital Media IDM@NTU  
Mainwork
International Conference on Cyberworlds, CW 2013. Proceedings  
Conference
International Conference on Cyberworlds (CW) 2013  
DOI
10.1109/CW.2013.52
Language
English
IDM@NTU  
Keyword(s)
  • emotion recognition

  • affective computing

  • classification methods

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