Emotion recognition from physiological signals

Emotion recognition is one of the great challenges in human-human and human-computer interaction. Accurate emotion recognition would allow computers to recognize human emotions and therefore react accordingly. In this paper, an approach for emotion recognition based on physiological signals is propo...

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Published inJournal of medical engineering & technology Vol. 35; no. 6-7; pp. 300 - 307
Main Authors GOUIZI, K., BEREKSI REGUIG, F., MAAOUI, C.
Format Journal Article
LanguageEnglish
Published England Informa Healthcare 01.10.2011
Taylor & Francis
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ISSN0309-1902
1464-522X
1464-522X
DOI10.3109/03091902.2011.601784

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Summary:Emotion recognition is one of the great challenges in human-human and human-computer interaction. Accurate emotion recognition would allow computers to recognize human emotions and therefore react accordingly. In this paper, an approach for emotion recognition based on physiological signals is proposed. Six basic emotions: joy, sadness, fear, disgust, neutrality and amusement are analysed using physiological signals. These emotions are induced through the presentation of International Affecting Picture System (IAPS) pictures to the subjects. The physiological signals of interest in this analysis are: electromyogram signal (EMG), respiratory volume (RV), skin temperature (SKT), skin conductance (SKC), blood volume pulse (BVP) and heart rate (HR). These are selected to extract characteristic parameters, which will be used for classifying the emotions. The SVM (support vector machine) technique is used for classifying these parameters. The experimental results show that the proposed methodology provides in general a recognition rate of 85% for different emotional states.
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ISSN:0309-1902
1464-522X
1464-522X
DOI:10.3109/03091902.2011.601784