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Detection of fake samples in multimodal biometrie systems

机译:在多峰生物特征系统中检测假样品

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摘要

The increased threat to traditional security systems using PIN, passwords and smart cards has resulted in biometrie security systems replacing the conventional methods. Susceptibility of biometric systems to spoofing attacks necessitates advanced anti-spoofing techniques. In this paper, we propose a simple method for fake detection that can be applied to different biometric samples like face, iris and fingerprint. The method proposed is software-based and non-intrusive. The proposed algorithm identifies the subspace which can be used to distinguish the real from the fake biometric samples. The projections of the training samples onto this subspace is used to train a simple Support Vector Machine (SVM) classifier. The algorithm is not specific to any biometric sample or any particular spoofing method. Another added advantage of the proposed method is its low complexity as it does not require extensive feature extraction techniques. The proposed algorithm has been validated on publicly available databases of face, iris and fingerprint.
机译:使用PIN,密码和智能卡的传统安全系统面临的威胁越来越大,导致生物特征安全系统取代了传统方法。生物特征识别系统对欺骗攻击的敏感性需要先进的反欺骗技术。在本文中,我们提出了一种简单的伪造检测方法,该方法可应用于不同的生物特征样本,例如面部,虹膜和指纹。所提出的方法是基于软件的并且是非侵入性的。所提出的算法识别可用于区分真实样本和伪造生物特征样本的子空间。训练样本在此子空间上的投影用于训练简单的支持向量机(SVM)分类器。该算法并不特定于任何生物特征样本或任何特定的欺骗方法。所提出的方法的另一个附加优点是它的复杂度低,因为它不需要广泛的特征提取技术。该算法已在公开的面部,虹膜和指纹数据库中得到验证。

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