Tandem Deep Learning Side-Channel Attack Against FPGA Implementation of AES

Huanyu Wang, E. Dubrova
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引用次数: 21

Abstract

The majority of recently demonstrated deep-learning side-channel attacks use a single neural network classifier to recover the key. The potential benefits of combining multiple classifiers with ensemble learning method have not been fully explored in the side-channel attack’s context. In this paper, we show that, by combining several CNN classifiers which use different attack points, it is possible to considerably reduce (more than 40% on average) the number of traces required to recover the key from an FPGA implementation of AES by power analysis. We also show that not all combinations of classifiers improve the attack efficiency.
针对FPGA实现AES的串联深度学习侧信道攻击
最近展示的大多数深度学习侧信道攻击使用单个神经网络分类器来恢复密钥。多分类器与集成学习方法相结合的潜在好处在侧信道攻击的背景下还没有得到充分的探讨。在本文中,我们表明,通过组合使用不同攻击点的几个CNN分类器,可以通过功率分析大大减少(平均超过40%)从AES的FPGA实现中恢复密钥所需的跟踪数。我们还表明,并非所有分类器的组合都能提高攻击效率。
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