邪恶的机器:编码,可视化和解释泄漏

IF 0.4 Q4 COMPUTER SCIENCE, INFORMATION SYSTEMS Applied Computing Review Pub Date : 2023-03-27 DOI:10.1145/3555776.3577688
Valence Cristiani, Maxime Lecomte, P. Maurine
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引用次数: 2

摘要

无监督的侧信道攻击允许通过泄漏加密原语的物理实现来提取由其操纵的秘密密钥。与监督式攻击相反,它们不需要对目标进行初步分析,从而构成更广泛的威胁,因为它们对对手模型的假设较弱。它们的缺点是它们需要一些关于设备泄漏模型的先验知识。一方面,随机攻击,如线性回归分析(LRA)允许灵活的先验,但大多限于对轨迹的单变量处理。另一方面,基于模型的攻击需要明确的泄漏模型公式,但最近已经扩展到多维版本,允许从深度学习(DL)技术的潜力中受益。本文介绍的EVIL Machine Attack (EMA)旨在两全其美。受生成对抗网络的启发,其架构能够恢复泄漏模型的表示,然后将其转换为允许灵活先验的关键区分符。此外,最先进的深度学习技术需要256个网络训练才能进行攻击。EMA只需要一个,这大大降低了此类攻击的时间复杂度。仿真和实际实验表明,EMA适用于对手对泄漏模型的了解非常少的情况,同时与经典的LRA相比,显着减少了所需的走线数量。最后,介绍了一种能够处理掩码实现的泛化算法。
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The EVIL Machine: Encode, Visualize and Interpret the Leakage
Unsupervised side-channel attacks allow extracting secret keys manipulated by cryptographic primitives through leakages of their physical implementations. As opposed to supervised attacks, they do not require a preliminary profiling of the target, constituting a broader threat since they imply weaker assumptions on the adversary model. Their downside is their requirement for some a priori knowledge on the leakage model of the device. On one hand, stochastic attacks such as the Linear Regression Analysis (LRA) allow for a flexible a priori, but are mostly limited to a univariate treatment of the traces. On the other hand, model-based attacks require an explicit formulation of the leakage model but have recently been extended to multidimensional versions allowing to benefit from the potential of Deep Learning (DL) techniques. The EVIL Machine Attack (EMA), introduced in this paper, aims at taking the best of both worlds. Inspired by generative adversarial networks, its architecture is able to recover a representation of the leakage model, which is then turned into a key distinguisher allowing flexible a priori. In addition, state-of-the-art DL techniques require 256 network trainings to conduct the attack. EMA requires only one, scaling down the time complexity of such attacks by a considerable factor. Simulations and real experiments show that EMA is applicable in cases where the adversary has very low knowledge on the leakage model, while significantly reducing the required number of traces compared to a classical LRA. Eventually, a generalization of EMA, able to deal with masked implementation is introduced.
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来源期刊
Applied Computing Review
Applied Computing Review COMPUTER SCIENCE, INFORMATION SYSTEMS-
自引率
40.00%
发文量
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