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Binary Biometrics: An Analytic Framework to Estimate the Bit Error Probability under Gaussian Assumption

机译:二元生物识别学:一个分析框架,用于估计高斯假设下的误码概率

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In recent years the protection of biometric data has gained increased interest from the scientific community. Methods such as the helper data system, fuzzy extractors, fuzzy vault and cancellable biometrics have been proposed for protecting biometric data. Most of these methods use cryptographic primitives and require a binary representation from the real-valued biometric data. Hence, the similarity of biometric samples is measured in terms of the Hamming distance between the binary vector obtained at the enrolment and verification phase. The number of errors depends on the expected error probability Pe of each bit between two biometric samples of the same subject. In this paper we introduce a framework for analytically estimating Pe under the assumption that the within-and between-class distribution can be modeled by a Gaussian distribution. We present the analytic expression of Pe as a function of the number of samples used at the enrolment (Ne) and verification (Nv) phases. The analytic expressions are validated using the FRGC v2 and FVC2000 biometric databases.
机译:近年来,保护生物识别数据的保护增加了科学界的兴趣。已经提出了辅助数据系统,模糊提取器,模糊拱顶和可抵消生物识别方法,以保护生物识别数据。这些方法中的大多数使用加密基元并需要从真实的生物识别数据中的二进制表示。因此,生物识别样本的相似性根据在注册和验证阶段获得的二元载体之间的汉明距离而衡量。错误的数量取决于同一主题的两个生物识别样本之间的每个比特的预期误差概率P E 。在本文中,我们介绍了一个框架,用于在假设可以通过高斯分布建模的类和级分布之间进行模拟和级之间的模拟和之间的分析P E 。我们介绍了P E 的分析表达,作为注册中使用的样本数量(N E )和验证(N V )阶段。使用FRGC V2和FVC2000生物识别数据库进行验证分析表达式。

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