Individual Emotion Classification between Happiness and Sadness by Analyzing Photoplethysmography and Skin Temperature

Since emotion technology has been applied into numerous applications, the role of recognizing human emotion has become more important. In this paper, two autonomic nervous signals such as SKT and PPG were analyzed in order to extract 2D emotional feature vector (PPI and SKT amplitude) for classification between happy and sad emotions. A support vector machine was adopted for non-linear classification between happiness and sadness. We collected SKT and PPG signals from 5 undergraduates who respectively watched two different kinds of video inducing happiness and sadness. At result, the classification accuracy of 92.41% was obtained by combining two features through using support vector machine which was even more increased result compared with the results using single feature such as SKT (89.29%) and PPG (63.67%).

[1]  E. Jang,et al.  Identification of the optimal emotion recognition algorithm using physiological signals , 2012, 2011 2nd International Conference on Engineering and Industries (ICEI).

[2]  David Burshtein,et al.  Support Vector Machine Training for Improved Hidden Markov Modeling , 2008, IEEE Transactions on Signal Processing.

[3]  S. H. Kim,et al.  Emotion recognition by ANS responses evoked by negative emotion , 2012, 2011 2nd International Conference on Engineering and Industries (ICEI).

[4]  J. Russell A circumplex model of affect. , 1980 .

[5]  Whang Min Cheol,et al.  Research on emotion evaluation using autonomic response , 2004 .

[6]  황민철,et al.  자율신경계 반응에 의한 감성 평가 연구 , 2004 .

[7]  Alain Pruski,et al.  Emotion recognition for human-machine communication , 2008, 2008 IEEE/RSJ International Conference on Intelligent Robots and Systems.

[8]  Lan Li,et al.  Emotion Recognition Using Physiological Signals from Multiple Subjects , 2006, 2006 International Conference on Intelligent Information Hiding and Multimedia.

[9]  Bernhard E. Boser,et al.  A training algorithm for optimal margin classifiers , 1992, COLT '92.

[10]  Byoung-Jun Park,et al.  Emotion induction and emotion recognition using their physiological signals , 2012, 2012 7th International Conference on Computing and Convergence Technology (ICCCT).

[11]  Mincheol Whang,et al.  Identification of Arousal and Relaxation by using SVM-Based Fusion of PPG Features , 2011 .

[12]  Marsha L. Richins Measuring Emotions in the Consumption Experience , 1997 .

[13]  F. B. Reguig,et al.  Analysis physiological signals for emotion recognition , 2011, International Workshop on Systems, Signal Processing and their Applications, WOSSPA.