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首页> 外文期刊>EURASIP journal on advances in signal processing >An effective biometric discretization approach to extract highly discriminative, informative, and privacy-protective binary representation
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An effective biometric discretization approach to extract highly discriminative, informative, and privacy-protective binary representation

机译:一种有效的生物特征离散化方法,可提取具有高度歧视性,信息性和隐私保护性的二进制表示形式

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Biometric discretization derives a binary string for each user based on an ordered set of biometric features. This representative string ought to be discriminative, informative, and privacy protective when it is employed as a cryptographic key in various security applications upon error correction. However, it is commonly believed that satisfying the first and the second criteria simultaneously is not feasible, and a tradeoff between them is always definite. In this article, we propose an effective fixed bit allocation-based discretization approach which involves discriminative feature extraction, discriminative feature selection, unsupervised quantization (quantization that does not utilize class information), and linearly separable subcode (LSSC)-based encoding to fulfill all the ideal properties of a binary representation extracted for cryptographic applications. In addition, we examine a number of discriminative feature-selection measures for discretization and identify the proper way of setting an important feature-selection parameter. Encouraging experimental results vindicate the feasibility of our approach.
机译:生物特征离散化基于一组有序的生物特征来为每个用户导出一个二进制字符串。当此代表字符串在纠错后被用作各种安全应用程序中的加密密钥时,应具有区分性,信息性和隐私保护性。然而,通常认为同时满足第一和第二标准是不可行的,并且它们之间的权衡总是确定的。在本文中,我们提出了一种有效的基于固定位分配的离散化方法,该方法涉及歧视性特征提取,歧视性特征选择,无监督量化(不利用类别信息的量化)以及基于线性可分离子码(LSSC)的编码来满足所有要求为加密应用程序提取的二进制表示形式的理想属性。此外,我们检查了许多用于离散化的特征选择方法,并确定了设置重要特征选择参数的正确方法。令人鼓舞的实验结果证明了我们方法的可行性。

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