利用慢扩散增强聚类图推理差分功率分析的pinching SKINNY

N. Costes, Martijn Stam
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引用次数: 1

摘要

轻量级密码学是一个新兴领域,设计人员正在测试对称密码学的极限。研究了一类新的轻量级分组密码的抗侧信道攻击能力,该密码采用经典的多轮慢扩散替换置换网络。在这些密码中,我们关注的是SKINNY,这是一种一直使用到nist最近轻量级标准化工作的最后一轮的原语。我们表明,密钥调度程序中缺乏扩散允许攻击者将第一轮和最后一轮的泄漏结合起来,有效地锁定其目标。此外,其部分键吸收层和线性层所使用的缓慢扩散使两侧的s - box能够从几轮深处瞄准。由于这些s盒中的一些在密钥的同一部分泄漏,因此利用所有泄漏的完整密钥恢复需要巧妙的组合策略。我们介绍了聚类图推理(一种来自概率图模型理论的成熟工具)的使用,以增强未配置或配置的差分功率分析,使我们能够处理s盒的增加及其相互交织的泄漏。我们在Hamming权重模型和在ChipWhisperer目标板上托管的STM32F303 ARM Cortex-M4上运行的两个实现中评估了我们的攻击强度,表明我们的攻击将攻击SKINNY所需的痕迹数量减少了约2.75倍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Pincering SKINNY by Exploiting Slow Diffusion Enhancing Differential Power Analysis with Cluster Graph Inference
Lightweight cryptography is an emerging field where designers are testing the limits of symmetric cryptography. We investigate the resistance against sidechannel attacks of a new class of lighter blockciphers, which use a classic substitution–permutation network with slow diffusion and many rounds.Among these ciphers, we focus on SKINNY, a primitive used up to the final round ofNIST’s recent lightweight standardisation effort. We show that the lack of diffusion in the key scheduler allows an attacker to combine leakage from the first and the last rounds, effectively pincering its target. Furthermore, the slow diffusion used by its partial key-absorption and linear layers enable, on both sides, to target S-Boxes from several rounds deep.As some of these S-boxes leak on the same part of the key, full key recovery exploiting all leakage requires a clever combining strategy. We introduce the use of cluster graph inference (an established tool from probabilistic graphical model theory) to enhance both unprofiled or profiled differential power analysis, enabling us to handlethe increase of S-Boxes with their intertwined leakage.We evaluate the strength of our attack both in the Hamming weight model and against two implementations running on an STM32F303 ARM Cortex-M4 hosted on a ChipWhisperer target board, showing that our attack reduces the number of traces required to attack SKINNY by a factor of around 2.75.
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