The design of Fuzzy C-Means Clustering based neural networks for emotion classification

In this study, we investigate the use of a Fuzzy C-Means Clustering based Neural Network (FNN) classifier in problems of emotion classification. The proposed classifier model consists of three layers, namely, input, hidden and output layers. Here, fuzzy c-means clustering method, two types of polynomial and linear combination function are used as a kernel function in the input layer, the hidden layer and the output layer of networks, respectively. From the conceptual standpoint, the classifier of this form is constructed by employing two development mechanisms. Fuzzy clustering (Fuzzy C-Means, FCM) is aimed at the development of input layer of the networks while the corresponding neurons of the networks are formed by some local polynomials. The purpose of this study is to classify the emotions using physiological signals induced by three different emotions (boredom, pain and surprise). Three different emotional states are evoked by emotional stimuli, physiological signals (EDA, ECG, PPG and SKT) for the induced emotions are measured as the reactions of stimuli, and 27 features are extracted from their physiological signals for emotion classification using the proposed FNN classifier. To evaluate the performance of emotion classification of the proposed model, we use the 10-fold cross validation and a comparative analysis shows that the proposed model exhibit higher accuracy when compared with some other models that exist in the literature.

[1]  R. Lippmann,et al.  An introduction to computing with neural nets , 1987, IEEE ASSP Magazine.

[2]  Jason Williams,et al.  Emotion Recognition Using Bio-sensors: First Steps towards an Automatic System , 2004, ADS.

[3]  Sung-Kwun Oh,et al.  Pattern Classification Using Polynomial Neural Networks for Two Classes' Problem , 2007 .

[4]  Fatma Nasoz,et al.  Emotion Recognition from Physiological Signals for Presence Technologies , 2004 .

[5]  David G. Stork,et al.  Pattern classification, 2nd Edition , 2000 .

[6]  W. Peizhuang Pattern Recognition with Fuzzy Objective Function Algorithms (James C. Bezdek) , 1983 .

[7]  Teuvo Kohonen,et al.  The self-organizing map , 1990 .

[8]  J. Gross,et al.  Emotion elicitation using films , 1995 .

[9]  Jennifer Healey,et al.  Toward Machine Emotional Intelligence: Analysis of Affective Physiological State , 2001, IEEE Trans. Pattern Anal. Mach. Intell..

[10]  Yaacob Sazali,et al.  Classification of human emotion from EEG using discrete wavelet transform , 2010 .

[11]  Robert M. Gray,et al.  Lloyd clustering of Gauss mixture models for image compression and classification , 2005, Signal Process. Image Commun..

[12]  A. Angrilli,et al.  Cardiac responses associated with affective processing of unpleasant film stimuli. , 2000, International journal of psychophysiology : official journal of the International Organization of Psychophysiology.

[13]  Richard P. Lippmann,et al.  An introduction to computing with neural nets , 1987 .

[14]  Teuvo Kohonen,et al.  Self-Organizing Maps , 2010 .

[15]  Joon-Hyuk Chang,et al.  Adaptive Kernel Function of SVM for Improving Speech/Music Classification of 3GPP2 SMV , 2011 .

[16]  Johannes Wagner,et al.  From Physiological Signals to Emotions: Implementing and Comparing Selected Methods for Feature Extraction and Classification , 2005, 2005 IEEE International Conference on Multimedia and Expo.

[17]  Marco Pintore,et al.  Automatic design of growing radial basis function neural networks based on neighboorhood concepts , 2007 .

[18]  W. Marsden I and J , 2012 .

[19]  Nicu Sebe,et al.  MULTIMODAL EMOTION RECOGNITION , 2005 .

[20]  P. Drummond,et al.  The effect of expressing anger on cardiovascular reactivity and facial blood flow in Chinese and Caucasians. , 2001, Psychophysiology.