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Recovering Attacks Against Linear Sketch in Fuzzy Signature Schemes of ACNS 2015 and 2016

机译:在ACNS 2015和2016的模糊签名方案中恢复针对线性草图的攻击

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In biometrics, template protection aims to protect the confidentiality of templates (i.e., enrolled biometric data) by certain conversion. At ACNS 2015, as a new approach of template protection, Takahashi et al. proposed a new concept of digital signature, called "fuzzy signature", that uses biometric data as a private key for securely generating a signature. After that, at ACNS 2016, Matsuda et al. modified the original scheme with several relaxing requirements. A main ingredient of fuzzy signature is "linear sketch", which incorporates a kind of linear encoding and error correction process to securely output only the difference of signing keys without revealing any biometric data. In this paper, we give recovering attacks against the linear sketch schemes proposed at ACNS 2015 and 2016. Specifically, given encoded data by linear sketch (called a "sketch"), our attacks can directly recover both the signing key and the biometric data embedded in the sketch. Our attacks make use of the special structure that a sketch has the form of a sum of an integral part and a decimal part, and biometric data is embedded in the decimal part. On the other hand, we give a simple countermeasure against our attacks and discuss the effect in both theory and practice.
机译:在生物识别技术中,模板保护旨在通过一定的转换来保护模板(即已注册的生物识别数据)的机密性。 Takahashi等人在ACNS 2015上提出了一种新的模板保护方法。提出了一种新的数字签名概念,称为“模糊签名”,该概念使用生物识别数据作为私钥来安全地生成签名。之后,在ACNS 2016,Matsuda等人。修改了原始方案,但有一些放松的要求。模糊签名的主要成分是“线性草图”,它结合了一种线性编码和纠错过程,可以安全地仅输出签名密钥的差异,而不会透露任何生物特征数据。在本文中,我们针对在ACNS 2015和2016年提出的线性草图方案提出了恢复攻击。具体而言,给定线性草图编码的数据(称为“草图”),我们的攻击可以直接恢复签名密钥和嵌入的生物识别数据在草图中。我们的攻击利用一种特殊的结构,即草图具有整数部分和小数部分之和的形式,而生物识别数据则嵌入在小数部分中。另一方面,我们给出了针对攻击的简单对策,并讨论了其在理论和实践上的作用。

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