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Person authentication using face, teeth and voice modalities for mobile device security

机译:使用面部,牙齿和语音模态进行人员身份验证以确保移动设备安全

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摘要

In this paper, we propose an enhanced multimodal personal authentication system for mobile device security. The proposed approach fuses information obtained from face, teeth and voice modalities to improve performance. To integrate three modalities, we employ various fusion techniques such as the weighted-summation rule, K-NN, Fisher and Gaussian classifiers, and we then evaluate the authentication performance of the proposed system. The performance is evaluated on a database consisting of 1000 biometric traits that correspond to the face, teeth and voice modalities of 50 persons, i.e., 20 biometric traits per individual, in which these biometric traits are simultaneously collected by a smart-phone device. The experiment results integrating the three modalities showed the error rates of 1.64%, 4.70%, 3.06% and 1.98% for the weighted-summation rule, K-NN, Fisher and Gaussian classifier, respectively, and that the weight-summation rule outperformed the other classification approaches. In contrast, the error rates regarding a single modality were 5.09%, 7.75% and 8.98% for face, teeth, and voice modalities, respectively. From these results, we confirmed that the proposed method achieved a significant performance improvement over the methods using a single modality, and the results showed that the proposed method was very effective through various fusion experiments.1
机译:在本文中,我们提出了一种用于移动设备安全性的增强型多模式个人身份验证系统。所提出的方法融合了从面部,牙齿和声音模态获得的信息,以提高性能。为了集成三种模式,我们采用了各种融合技术,例如加权求和规则,K-NN,Fisher和Gaussian分类器,然后评估了所提出系统的认证性能。在数据库中评估性能,该数据库由对应于50个人的面部,牙齿和声音模态的1000个生物特征构成,即每人20个生物特征,其中这些生物特征由智能手机设备同时收集。结合这三种模态的实验结果表明,加权求和规则,K-NN,Fisher和Gaussian分类器的错误率分别为1.64%,4.70%,3.06%和1.98%,并且加权求和规则的性能优于其他分类方法。相比之下,面部,牙齿和声音模态的单一模态的错误率分别为5.09%,7.75%和8.98%。从这些结果中,我们证实了该方法相对于使用单一模态的方法具有显着的性能改进,结果表明该方法通过各种融合实验非常有效。1

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