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Gender Classification from Facial Images Using Texture Descriptors

Ihsan Ullah,
Hatim Aboalsamh,
Muhammad Hussain,
Ghulam Muhammad,
George Bebis,

Abstract


Face recognition performance can be improved when face images are first classified into categories and then analysed with category-specific descriptors. One such category is gender. The face image is a type of texture that can be represented using texture descriptors. We employ two state-of-the-art texture descriptors, the local binary pattern (LBP) and Weber's law descriptor (WLD), and investigate their spatially enhanced versions (SLBP and SWLD) for gender classification. A suitable choice of parameters used in these descriptors leads to significant improvement. The best combination of parameters is found through a large number of experiments performed on the FERET and Multi-PIE databases. Using these parameters, the SLBP and SWLD perform much better with less algorithmic complexity compared to commonly used gender recognition approaches.

Keywords


Gender recognition; Local binary pattern; Weber's law descriptor; Face recognition

Citation Format:
Ihsan Ullah, Hatim Aboalsamh, Muhammad Hussain, Ghulam Muhammad, George Bebis, "Gender Classification from Facial Images Using Texture Descriptors," Journal of Internet Technology, vol. 15, no. 5 , pp. 801-811, Sep. 2014.

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