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首页> 外文期刊>Applied Intelligence: The International Journal of Artificial Intelligence, Neural Networks, and Complex Problem-Solving Technologies >Multi-instance iris remote authentication using private multi-class perceptron on malicious cloud server
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Multi-instance iris remote authentication using private multi-class perceptron on malicious cloud server

机译:在恶意云服务器上使用私有多类Perceptron的多实例虹膜远程身份验证

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In recent years, biometric authentication system (BAS) has become the most promising and popular authentication system in identity management. Due to its capability to solve the limitations of unimodal systems, multi-biometric systems (MBS) have been extensively accepted in various fields. The main step in MBS is information fusion. On the other hand, directly storing the fused templates into a centralized server leads to privacy concerns. Recently, many BAS based on homomorphic encryption has been introduced to provide confidentiality for the fused templates. However, most of the existing solutions rely on an implication of the assumption that the server is "Honest-but-Curious". As a result, the compromise of such server results into entire system vulnerability. To address this, we propose a novel P rivacy P reserving (PP) multi-instance iris remote authentication system to accord with attacks at the malicious server and over the transmission channel. Our scheme uses F ully H omomorphic E ncryption (FHE) to achieve the confidentiality of the fused iris templates and polynomial factorization algorithm to achieve the integrity of the matching result. We propose a PP iris authentication system using P rivate M ulti-C lass P erceptron (PMCP) by using the properties of FHE. Moreover, we propose C ontradistinguish S imilarity A nalysis (CSA), a feature level fusion technique that minimizes the between-class correlations and maximizes the pair-wise correlations. Our method has experimented on IITD and CASIA-V3-Interval iris databases to check the effectiveness and robustness. Experimental results show that our method provides improved accuracy, and eliminates the need to trust the cloud server when compared to the state-of-the-art approaches.
机译:近年来,生物识别认证系统(BAS)已成为身份管理中最有希望和最受欢迎的认证系统。由于其解决单向系统的局限性的能力,在各个领域中广泛地接受了多生物识别系统(MBS)。 MBS的主要步骤是信息融合。另一方面,直接将融合模板直接存储到集中式服务器上导致隐私问题。最近,已经引入了许多基于同性恋加密的BAS为融合模板提供机密性。但是,大多数现有解决方案都依赖于假设服务器是“诚实但奇怪”的假设的含义。因此,这种服务器的折衷结果导致整个系统漏洞。为了解决这个问题,我们提出了一种新颖的P rivacy P保留(PP)多实例IRIS远程认证系统,以符合恶意服务器和传输信道的攻击。我们的方案使用F Ully H常态E NCryption(FHE)来实现融合的IRIS模板和多项式分解算法的机密性,以实现匹配结果的完整性。我们通过使用FHE的属性,提出了一种使用P rivate M Ulti-C Lass PERCEPtron(PMCP)的PP IRIS认证系统。此外,我们提出了ContradistingyInis的S Imilarity一种不可思议(CSA),一种特征级融合技术,其最小化了类之间的相关性并最大化了一对相关的相关性。我们的方法在IITD和CASIA-V3-Interval数据库上进行了实验,以检查有效性和稳健性。实验结果表明,我们的方法提供了提高的准确性,并消除了与最先进的方法相比相互信任云服务器的需求。

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