Publication | Closed Access
Investigation of window size in classification of EEG-emotion signal with wavelet entropy and support vector machine
160
Citations
10
References
2015
Year
Unknown Venue
EngineeringWavelet EntropyBiometricsAffective NeuroscienceBraincomputer InterfaceMultimodal Sentiment AnalysisMedical PractitionersSocial SciencesSupport Vector MachineData ScienceData MiningPattern RecognitionAffective ComputingWindow SizeEeg-emotion SignalCognitive ElectrophysiologyComputer ScienceWavelet TheoryEeg Signal ProcessingNeuroscienceEmotional SymptomsEmotionEmotion Recognition
When dealing with patients with psychological or emotional symptoms, medical practitioners are often faced with the problem of objectively recognizing their patients' emotional state. In this paper, we approach this problem using a computer program that automatically extracts emotions from EEG signals. We extend the finding of Koelstra et. al [IEEE trans. affective comput., vol. 3, no. 1, pp. 18-31, 2012] using the same dataset (i.e. the DEAP: dataset for emotion analysis using electroencephalogram, physiological and video signals), where we observed that the accuracy can be further improved using wavelet features extracted from shorter time segments. More precisely, we achieved accuracy of 65% for both valence and arousal using the wavelet entropy of 3 to 12 seconds signal segments. This improvement in accuracy entails an important discovery that information on emotions contained in the EEG signal may be better described in term of wavelets and in shorter time segments.
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