Title :
Design of “Personalized” Classifier Using Soft Computing Techniques for “Personalized” Facial Expression Recognition
Author :
Kim, Dae-Jin ; Bien, Zeungnam
Author_Institution :
Nanosci. Technol. Center, Univ. of Central Florida, Orlando, FL
Abstract :
We propose a design method of personalized classifier with soft computing techniques for automatic facial expression recognition. Motivated by the fact that even though human facial expressions of emotion are often ambiguous and inconsistent, humans are, in general, very good at classifying such complex images. In consideration of individual characteristics, we adopt a similar strategy of building a personalized classifier to enhance the recognition performance. For realization, we use a soft computing technique of neurofuzzy approach. Specifically, two core steps-ldquomodel building/modificationrdquo and ldquofeature selectionrdquo-are applied to build a ldquopersonalizedrdquo classification structure. The proposed scheme of classifier construction achieves a higher classification rate, minimal network parameters, easy-to-extend structure, and faster computation time, among others. Four sets of facial expression data are chosen and image features are extracted from each of them to show effectiveness of the proposed method, which confirms considerable enhancement of the whole performance.
Keywords :
emotion recognition; face recognition; feature extraction; fuzzy logic; pattern classification; emotion recognitio; human facial expressions; image features extraction; neurofuzzy approach; personalized classifier; personalized facial expression recognition; soft computing; Facial Expression Recognition; Facial expression recognition; Feature Selection; Model Building/Modification; Personalization; Soft Computing Technique; feature selection (FS); model building/modification (MBM); personalization; soft computing technique;
Journal_Title :
Fuzzy Systems, IEEE Transactions on
DOI :
10.1109/TFUZZ.2008.924344