Soft Biometrics Authentication: A Cluster-Based Skin Color Classification System
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Abstract
This manuscript presents the design of a new approach of human skin color authentication. Skin color
is one of the most popular soft biometric modalities. Since a soft biometric modality alone cannot
reliably authenticate an individual, this new system is designed to combine skin color results with
other pure biometric modalities to increase recognition performance. In the classification process,
the authors first perform facial skin detection by segmentation using the thresholding method in
the HSV color space. Then, the K-means algorithm of the clustering method is used to determine
the dominant colors on the skin pixels in the RGB model. Variations according to the R, G, and B
components are recorded in a reference model to enable an individual’s identity to be predicted on
the basis of 30 clusters. Experimental results are promising and give a false acceptance rate (FAR)
of 29.47% and a false rejection rate (FRR) of 70.53%.
