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Face Authentication Using One-Class Support Vector Machines

机译:使用一类支持向量机的人脸认证

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摘要

This paper proposes a new method for personal identity verification based the analysis of face images applying One Class Support Vector Machines. This is a recently introduced kernel method to build a unary classifier to be trained by using only positive examples, avoiding the sensible choice of the impostor set typical of standard binary Support Vector Machines. The features of this classifier and the application to face-based identity verification are described and an implementation presented. Several experiments have been performed on both standard and proprietary databases. The tests performed, also in comparison with a standard classifier built on Support Vector Machines, clearly show the potential of the proposed approach.
机译:本文提出了一种基于一类支持向量机的人脸图像分析方法,用于验证个人身份。这是最近引入的一种内核方法,用于构建仅通过使用正例进行训练的一元分类器,从而避免了明智选择标准二进制支持向量机典型的冒名顶替者集。描述了该分类器的特征以及在基于面部的身份验证中的应用并介绍了一种实现。在标准数据库和专有数据库上都进行了几次实验。与基于支持向量机的标准分类器相比,所进行的测试清楚地表明了所提出方法的潜力。

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