Publication | Open Access
Electroencephalography based emotion detection using ensemble classification and asymmetric brain activity
22
Citations
14
References
2022
Year
Affective NeuroscienceElectroencephalographyPsychologySocial SciencesEmotion DetectionEmotional ResponseElectrophysiological EvaluationRhythmic Brain ActivityAffective ComputingEnsemble ClassificationCognitive NeuroscienceCognitive SciencePsychiatryNeuroimagingAsymmetric Brain ActivityNeurophysiologyRelevant ElectrodesEeg Signal ProcessingNeuroscienceElectrophysiologyBraincomputer InterfaceMedicineEmotionEmotion Recognition
Over the past decade, emotion detection using rhythmic brain activity has become a critical area of research. The asymmetrical brain activity has garnered the most significant level of research attention due to its implications for the study of emotions, including hemispheric asymmetry or, more generally, asymmetrical brain activity. This study aimed at enhancing the accuracy of emotion detection using Electroencephalography (EEG) brain signals. This happens by identifying electrodes where relevant brain activity changes occur during the emotions and by defining pairs of relevant electrodes having asymmetric brain activities during emotions. Experimental results showed that the proposed method is highly competitive compared with existing studies of multi-class emotion recognition. These results were improved by processing not the whole EEG signals but by focusing on fragments of the signals, called epochs, which represent the instants where the excitation is maximum during emotions. The epochs were extracted using the zero-time windowing method and the numerator group-delay function.
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