Soft Biometrics Authentication: A Cluster-Based Skin Color Classification System

Abdou-Aziz Sobabe, Tahirou Djara, Blaise Blochaou, A. Vianou
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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, we 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%.
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软生物特征认证:基于聚类的肤色分类系统
本文提出了一种新的人体肤色认证方法的设计。肤色是最流行的软生物识别模式之一。由于单靠软生物识别模式无法可靠地验证个人身份,因此该新系统将肤色结果与其他纯生物识别模式结合起来,以提高识别性能。在分类过程中,我们首先在HSV颜色空间中使用阈值分割方法进行面部皮肤检测。然后,使用聚类方法中的K-means算法确定RGB模型中皮肤像素上的主色。根据R, G和B组成部分的变化被记录在参考模型中,以便在30个集群的基础上预测个体的身份。实验结果表明,该方法的误接受率(FAR)为29.47%,误拒率(FRR)为70.53%。
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