Author/Authors :
Ansari-Asl Karim نويسنده Department of Electrical, Engineering Faculty , Amjadzadeh Marzieh نويسنده Shahid Chamran, Ahvaz
Abstract :
The main purpose of this paper is the assessment of emotions using
Electroencephalogram (EEG) and peripheral physiological signals and improvement of
recognition accuracy of emotional states using combination mechanism. In the rst step,
according to the type of signals, eective features were extracted in the time and frequency
domains; then, by using the Fisherʹs Linear Discriminant (FLD) method, the most
eective features were selected. Based on these features, six classiers were used: Support
Vector Machine (SVM), Nearest Mean (NM), K-Nearest Neighborhood (K-NN), 1-Nearest
Neighborhood (1-NN), FLD, and Linear Discriminant Analysis (LDA). They classied
emotions in two classes (low and high) through arousal, valence, and liking dimensions. The
Leave-One-Out Cross-Validation (LOOCV) method has been implemented to evaluate the
performance of classiers. To enhance the accuracy of classication, combination at feature
and classier levels was performed. Via the concatenation method, combination at feature
level was done. Then, by Majority voting, Fixed and Stacking algorithms, combination
at classier level was implemented. Results showed that these classiers were selected
properly and, thanks to them, good improvements were achieved compared with previous
studies. Finally, by using combination methods, obtained recognition accuracy was much
more reliable and combination at classier level resulted in signicant improvement.