模板保护中检测率优化位分配的缺陷及补救措施

E. Kelkboom, K.T.J. de Groot, C. Chen, J. Breebaart, R. Veldhuis
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引用次数: 12

摘要

生物特征模板保护系统的要求之一是理想的保护模板不应泄露任何关于生物特征样本或其衍生物的信息。在文献中,提出了几种基于二值向量的模板保护技术。因此,他们需要从实值生物特征样本中提取二值表示。在这项工作中,我们重点研究了检测率优化比特分配(DROBA)量化方案,该方案在最大化整体检测率的同时提取每个特征分量的多个比特。分配策略必须作为辅助数据存储,以便在验证阶段重用,并且被认为是公共的。这意味着辅助数据不应该泄露有关提取的二进制表示的任何信息。我们工作中的实验表明,文献中已知的原始DROBA算法创建了泄露大量信息的辅助数据。我们展示了攻击者如何能够利用这些信息并显著提高其获得错误接受的成功率。幸运的是,可以通过限制DROBA算法的分配自由来减轻信息泄漏。本文提出了一种基于人口统计的方法,并对其有效性进行了实证验证。所有的实验都是基于MCYT指纹数据库,使用两种不同的基于纹理的特征提取算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pitfall of the Detection Rate Optimized Bit Allocation within template protection and a remedy
One of the requirements of a biometric template protection system is that the protected template ideally should not leak any information about the biometric sample or its derivatives. In the literature, several proposed template protection techniques are based on binary vectors. Hence, they require the extraction of a binary representation from the real- valued biometric sample. In this work we focus on the Detection Rate Optimized Bit Allocation (DROBA) quantization scheme that extracts multiple bits per feature component while maximizing the overall detection rate. The allocation strategy has to be stored as auxiliary data for reuse in the verification phase and is considered as public. This implies that the auxiliary data should not leak any information about the extracted binary representation. Experiments in our work show that the original DROBA algorithm, as known in the literature, creates auxiliary data that leaks a significant amount of information. We show how an adversary is able to exploit this information and significantly increase its success rate on obtaining a false accept. Fortunately, the information leakage can be mitigated by restricting the allocation freedom of the DROBA algorithm. We propose a method based on population statistics and empirically illustrate its effectiveness. All the experiments are based on the MCYT fingerprint database using two different texture based feature extraction algorithms.
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