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Deep Secure Quantization: On secure biometric hashing against similarity-based attacks

机译:深度安全量化:针对基于相似性的攻击的安全生物特征哈希

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The widespread application of biometric recognition has emerged solid protection on the privacy of biometric templates. Non-invertible transformations such as random projections are popular solutions for this purpose, yet their security has been recently challenged due to the advent of similarity-based attacks (SA). To address this issue, we developed Deep Secure Quantization (DSQ), a new biometric hashing scheme for privacy-preserving biometric recognition. DSQ essentially takes into account the information leakage between the original distance and the hashed distance, which is the security blind spot of existing hashing models. This leakage is further incorporated into an optimal hashing objective which well balances between security and utility. Hashing is then modeled as a highly nonlinear problem solved by a novel deep neural network. Experiments on CASIA-v4-interval demonstrate that DSQ not only offers strong resistance to SA but also yields comparable or even superior recognition performance over existing biometric hashing methods, including deep framework-based ones. (C) 2018 Elsevier B.V. All rights reserved.
机译:生物特征识别的广泛应用已经为生物特征模板的隐私提供了坚实的保护。诸如随机投影之类的不可逆变换是用于此目的的流行解决方案,但是由于基于相似性的攻击(SA)的出现,它们的安全性最近受到了挑战。为了解决此问题,我们开发了深度安全量化(DSQ),这是一种用于保护隐私生物特征识别的新生物特征哈希方案。 DSQ本质上考虑了原始距离和哈希距离之间的信息泄漏,而哈希距离是现有哈希模型的安全盲点。该泄漏进一步被合并到最佳散列目标中,该目标在安全性和实用性之间取得了很好的平衡。然后,将散列模型化为由新型深度神经网络解决的高度非线性问题。在CASIA-v4-interval上进行的实验表明,DSQ不仅对SA具有很强的抵抗力,而且与包括基于深层框架的生物哈希方法相比,其识别性能相当甚至更好。 (C)2018 Elsevier B.V.保留所有权利。

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