Publication | Closed Access
Classification of the emotional states based on the EEG signal processing
17
Citations
8
References
2009
Year
Unknown Venue
NeuropsychologyAffective NeuroscienceEeg ActivityElectroencephalographyPsychologySocial SciencesEmotional ResponseEmotional StatesAffective ComputingCognitive ElectrophysiologyAutomatic RecognitionCognitive NeuroscienceSelf-organizing MapCognitive ScienceBayes ClassifierEeg Signal ProcessingNeuroscienceBraincomputer InterfaceEmotionEmotion Recognition
The paper proposes a method for the classification of EEG signal based on machine learning methods. We analyzed the data from an EEG experiment consisting of affective picture stimuli presentation, and tested automatic recognition of the individual emotional states from the EEG signal using Bayes classifier. The mean accuracy was about 75 percent, but we were not able to select universal features for classification of all subjects, because of inter-individual differences in the signal. We also identified correlation between the classification error and the extroversion-introversion personality trait measured by EPQ-R test. Introverts have lower excitation threshold so we are able to detect the differences in their EEG activity with better accuracy. Furthermore, the use of Kohonen's self-organizing map for visualization is suggested and demonstrated on one subject.
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