Differential power analysis of HMAC SHA-2 in the Hamming weight model

Sonia Belaïd, L. Bettale, Emmanuelle Dottax, Laurie Genelle, Franck Rondepierre
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引用次数: 22

Abstract

As any algorithm manipulating secret data, HMAC is potentially vulnerable to side channel attacks. In 2007, McEvoy et al. proposed a differential power analysis attack against HMAC instantiated with hash functions from the SHA-2 family. Their attack works in the Hamming distance leakage model and makes strong assumptions on the target implementation. In this paper, we present an attack on HMAC SHA-2 in the Hamming weight leakage model, which advantageously can be used when no information is available on the targeted implementation. Furthermore, our attack can be adapted to the Hamming distance model with weaker assumptions on the implementation. We show the feasibility of our attack on simulations, and we study its overall cost and success rate. We also provide an evaluation of the performance overhead induced by the countermeasures necessary to avoid the attack.
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HMAC SHA-2在Hamming权重模型中的差分功率分析
作为任何操作秘密数据的算法,HMAC都有可能受到侧信道攻击。2007年,McEvoy等人提出了一种针对HMAC的差分功率分析攻击,该攻击使用SHA-2家族的哈希函数实例化。他们的攻击工作在汉明距离泄漏模型中,并且对目标实现有很强的假设。在本文中,我们提出了一种基于Hamming权重泄漏模型的HMAC SHA-2攻击,该模型可以在没有目标实现信息的情况下使用。此外,我们的攻击可以适应汉明距离模型,对实现的假设较弱。通过仿真验证了该方法的可行性,并对其总体成本和成功率进行了研究。我们还提供了由避免攻击所需的对策引起的性能开销的评估。
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