Multiple-output support vector machine regression with feature selection for arousal/valence space emotion assessment
Autor: | Álvaro Orozco-Gutiérrez, Cristian A. Torres-Valencia, Mauricio A. Álvarez |
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Rok vydání: | 2015 |
Předmět: |
Support Vector Machine
medicine.diagnostic_test business.industry Speech recognition Emotions Feature selection Pattern recognition Regression analysis Electroencephalography Emotion assessment Arousal Support vector machine Svm regression medicine Humans Regression Analysis Artificial intelligence Valence (psychology) Psychology business |
Zdroj: | EMBC |
ISSN: | 2694-0604 |
Popis: | Human emotion recognition (HER) allows the assessment of an affective state of a subject. Until recently, such emotional states were described in terms of discrete emotions, like happiness or contempt. In order to cover a high range of emotions, researchers in the field have introduced different dimensional spaces for emotion description that allow the characterization of affective states in terms of several variables or dimensions that measure distinct aspects of the emotion. One of the most common of such dimensional spaces is the bidimensional Arousal/Valence space. To the best of our knowledge, all HER systems so far have modelled independently, the dimensions in these dimensional spaces. In this paper, we study the effect of modelling the output dimensions simultaneously and show experimentally the advantages in modeling them in this way. We consider a multimodal approach by including features from the Electroencephalogram and a few physiological signals. For modelling the multiple outputs, we employ a multiple output regressor based on support vector machines. We also include an stage of feature selection that is developed within an embedded approach known as Recursive Feature Elimination (RFE), proposed initially for SVM. The results show that several features can be eliminated using the multiple output support vector regressor with RFE without affecting the performance of the regressor. From the analysis of the features selected in smaller subsets via RFE, it can be observed that the signals that are more informative into the arousal and valence space discrimination are the EEG, Electrooculogram/Electromiogram (EOG/EMG) and the Galvanic Skin Response (GSR). |
Databáze: | OpenAIRE |
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