The International Arab Journal of Information Technology (IAJIT)

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Person-Independent Facial Expression Recognition Based on Compound Local Binary Pattern (CLBP)

 Automatic recognition of facial expression is an ac tive research topic in computer vision due to its importance in both human$computer and social interaction. One of the critical issues for a successful facial expression recognition system is to design a robust facial feature descriptor. Among the different existing methods, the Local Binary Pattern (LBP) has been proved to be a simple and effective one for facial expression representation. However, the LBP method thresholds P neighbors exactly at the value of the center pixel in a local neighborhood and encodes only the signs of the dif ferences between the gray values. Thus, it loses some important texture infor mation. In this paper, we present a robust facial f eature descriptor constructed with the Compound Local Binary Pattern (CLBP) for person$independent facial expression recognition, which overcomes the limitations of LBP. The proposed CLBP operator combines extra P bits with the original LBP code in order to construct a robust feature descriptor that exploits both the sign and the magnitude information of the differences between the center and the neighbor gray values. The recognitio n performance of the proposed method is evaluated u sing the Cohn$ Kanade (CK) and the Japanese Female Facial Expressi on (JAFFE) database with a Support Vector Machine (SVM) classifier. Experimental results with prototypic expressions sh ow the superiority of the CLBP feature descriptor a gainst some well$ known appearance$based feature representation metho ds.   


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[29] Zhou H., Wang R., and Wang C., A Novel Extended Local Binary Pattern Operator for Texture Analysis, Information Sciences , vol. 178, no. 22, pp. 4314-4325, 2008. Person$Independent Facial Expression Recognition Based on Compound 203 Faisal Ahmed received his BSc degree in computer science and information technology from the Islamic University of Technology, Bangladesh in 2010. He is now working as a lecturer in the Department of CSE, Islamic University of Technology, Bangladesh. His research interests include texture analysis, computer vision , and pattern recognition. Hossain Bari received his BSc degree in computer science and information technology from the Islamic University of Technology, Bangladesh in 2010. He is now working in the Samsung Bangladesh R & D Center Ltd, Bangladesh. His research interests include image processing and computer vision. Emam Hossain received his BSc degree in computer science and information technology from the Islamic University of Technology, Bangladesh in 2010. He is now working as a lecturer in the Department of CSE, Ahsanullah University of Science and Technology, Bangladesh. H is research interests include image processing, comput er vision, artificial intelligence, and pattern recogn ition.