基于有效回归的线性判别分析对32位实现分析攻击的侧信道安全评估

Gaëtan Cassiers, Henri Devillez, François-Xavier Standaert, Balazs Udvarhelyi
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引用次数: 3

摘要

32位软件实现在嵌入式安全应用中越来越受欢迎。因此,越来越需要分析32位目标中间值来评估其侧信道安全性。这意味着需要能够处理长跟踪和大量类的统计工具。虽然有很好的选择来单独解决这些问题(例如,线性回归和线性判别分析),但目前的技术水平缺乏有效的工具来共同解决它们。据我们所知,最著名的选择是将分析分割成较小的部分,从信息论的角度来看,这是次优的。因此,在本文中,我们重新审视了基于回归的线性判别分析,它结合了线性回归和线性判别分析,并提高了它的效率,以便它可以用于分析对应于32位实现的长跟踪。除了介绍为此目的所需的优化之外,我们还展示了如何使用基于回归的线性判别分析来获得感知信息的有效边界,这是一种信息理论度量,表征了实现对分析攻击的安全性。我们还将此工具与适用于位片实现的软分析侧信道攻击的优化相结合。我们使用这些结果来攻击使用Ascon排列实例化的32位SAP实现,并表明对于确定的攻击者来说,在一次跟踪中破坏其重新密钥的初始化是可行的。
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Efficient Regression-Based Linear Discriminant Analysis for Side-Channel Security Evaluations Towards Analytical Attacks against 32-bit Implementations
32-bit software implementations become increasingly popular for embedded security applications. As a result, profiling 32-bit target intermediate values becomes increasingly needed to evaluate their side-channel security. This implies the need of statistical tools that can deal with long traces and large number of classes. While there are good options to solve these issues separately (e.g., linear regression and linear discriminant analysis), the current state of the art lacks efficient tools to solve them jointly. To the best of our knowledge, the best-known option is to fragment the profiling in smaller parts, which is suboptimal from the information theoretic viewpoint. In this paper, we therefore revisit regression-based linear discriminant analysis, which combines linear regression and linear discriminant analysis, and improve its efficiency so that it can be used for profiling long traces corresponding to 32-bit implementations. Besides introducing the optimizations needed for this purpose, we show how to use regression-based linear discriminant analysis in order to obtain efficient bounds for the perceived information, an information theoretic metric characterizing the security of an implementation against profiled attacks. We also combine this tool with optimizations of soft analytical side-channel attack that apply to bitslice implementations. We use these results to attack a 32-bit implementation of SAP instantiated with Ascon’s permutation, and show that breaking the initialization of its re-keying in one trace is feasible for determined adversaries.
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