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Enhancing security through a hybrid multibiometric system

机译:通过混合多重生物系统提高安全性

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Biometric user authentication techniques for security and access control have evoked an enormous interest by science, industry and society in the last two decades. Scientist and researchers have constantly pursued the technology for automated confirmation of the identity of subjects based on measurements of physiological or behavioral traits of humans. But even the best single biometric system suffers from spoof attacks, intra-class variability, noise, susceptibility etc. To address this issue, we develop a hybrid multibiometric system which integrates multi-algorithm and multi-modal approaches of multibiometric system and use bilevel fusion to combine biometric information. We use face, ear and signature biometric traits which are first classified by three classification techniques-multilayer perceptron, Fisher-image and Bayesian network. The outcomes of these classifiers for face are fused by rank fusion method. Outcomes for ear and signature are also fused similarly. The second level fusion occurs when we combine the results of these three rank fusion methods' outcomes for face, ear and signature with decision fusion method. We use Borda count and Borda fuse approaches for rank fusion and majority voting, weighted majority voting and behavioral knowledge space approaches for decision fusion. The final results indicate that this hybrid multi biometric system outperforms the single biometric systems build on the same data using the same classification algorithms. This system can be effectively used in law enforcement or homeland security department or for commercial purposes.
机译:在过去的二十年中,用于安全和访问控制的生物识别用户身份验证技术引起了科学,工业和社会的极大兴趣。科学家和研究人员一直在追求基于人类生理或行为特征的测量来自动确认受试者身份的技术。但是,即使是最好的单一生物特征识别系统,也会遭受欺骗攻击,类内变异性,噪声,敏感性等问题。为了解决此问题,我们开发了一种混合多生物特征系统,该系统将多算法和多模式方法结合在一起,并使用了双水平融合结合生物特征信息。我们使用面部,耳朵和特征生物特征,这些特征首先通过三种分类技术进行分类:多层感知器,Fisher-image和贝叶斯网络。这些分类器的面部结果通过等级融合方法融合在一起。耳朵和签名的结果也类似地融合在一起。当我们将这三种等级融合方法在面部,耳朵和签名方面的结果与决策融合方法相结合时,便发生了第二级融合。我们将Borda计数和Borda融合方法用于等级融合和多数投票,加权多数投票和行为知识空间方法用于决策融合。最终结果表明,这种混合式多生物特征识别系统优于使用相同分类算法在相同数据上构建的单个生物特征识别系统。该系统可以有效地用于执法部门或国土安全部门或用于商业目的。

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