Publication | Open Access
Bispectral Analysis of EEG for Emotion Recognition
131
Citations
9
References
2016
Year
Cognitive SciencePattern RecognitionEeg Signal ProcessingAffective NeuroscienceAffective ComputingPsychologyBackward Sequential SearchNeuroimagingSocial SciencesNeuroscienceEmotionEmotion RecognitionBispectral AnalysisEmotional Response
Emotion recognition from electroencephalogram (EEG) signals is one of the most challenging tasks. Bispectral analysis offers a way of gaining phase information by detecting phase relationships between frequency components and characterizing the non- Gaussian information contained in the EEG signals. In this paper, we explore derived features of bispectrum for quantification of emotions using a Valence-Arousal emotion model; and arrive at a feature vector through backward sequential search. Cross- validated accuracies of 64.84% for Low/High Arousal classification and 61.17% for Low/High Valence were obtained on the DEAP data set based on the proposed features; comparable to classification accuracies reported in the literature.
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