User Authentication based on Face Recognition with Support Vector Machines

Paolo Abeni, M. Baltatu, Rosalia D'Alessandro
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引用次数: 7

Abstract

The present paper proposes an authentication scheme which relies on face biometrics and one-class Support Vector Machines. The proposed recognition procedures are based on both a global approach and on a combination of a global and a component-based approaches. Two different features extraction methods and three light compensation algorithms are tested. The combined system outperforms the global system and yields a significant performance enhancement with respect to the prior results obtained with the one-class Support Vector Machines approach for face recognition.
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基于支持向量机的人脸识别用户认证
提出了一种基于人脸生物识别和一类支持向量机的身份验证方案。提出的识别程序既基于全局方法,也基于全局方法和基于组件的方法的结合。测试了两种不同的特征提取方法和三种光补偿算法。该组合系统的性能优于全局系统,并且与先前使用单类支持向量机方法获得的人脸识别结果相比,产生了显着的性能增强。
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