Emotion Recognition from EEG Signals by Using Empirical Mode Decomposition


Degirmenci M., Özdemir M. A., Sadighzadeh R., Akan A.

2018 Medical Technologies National Congress, TIPTEKNO 2018, Magusa, Cyprus (Gkry), 8 - 10 November 2018 identifier

  • Publication Type: Conference Paper / Full Text
  • Doi Number: 10.1109/tiptekno.2018.8597061
  • City: Magusa
  • Country: Cyprus (Gkry)
  • Keywords: Electroencephalogram, Emotion recognition, Empirical mode decomposition, Higher order statistics, Intrinsic mode functions, Linear discriminant analysis, Naive Bayes, Power spectral density, Support vector machine
  • Kütahya Health Sciences University Affiliated: No

Abstract

This study investigates improved properties of empirical mode decomposition (EMD) for emotion recognition by using electroencephalogram (EEG) signals. The emotion recognition from EEG signals is a difficult study by the reason of nonstationary behavior of the signals. These signals are affected from complicated neural activity of brain. To analyze EEG signals, advanced signal processing techniques are required. In our study, data are collected from one channeled BIOPAC lab system. EEG signals were obtained from visual evoked potentials of 13 female and 13 male volunteers for 12 pleasant and 12 unpleasant pictures. To analyze nonlinear and nonstationary characteristics of EEG signals, an EMD-based method is proposed for emotion recognition. Various time and frequency domain techniques such as power spectral density (PSD), and higher order statistics (HOS) are used to analyze the IMFs extracted by EMD. Support vector machine (SVM), Linear discriminant analysis (LDA), and Naive Bayes classifiers are utilized for the classification of features extracted from the IMFs, and their performances are compared.