TripletPower:深度学习侧信道攻击

Chenggang Wang, Jimmy Dani, S. Reilly, Austen Brownfield, Boyang Wang, J. Emmert
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引用次数: 1

摘要

深度学习是一种很有前途的侧信道攻击技术。然而,为了成功地恢复密钥,深度学习侧信道攻击通常需要数千个训练痕迹,这对于攻击者在现实世界中获得可能是具有挑战性的。本文提出了一种新的深度学习侧信道攻击方法,该方法只需要数百个训练痕迹。我们提出的方法,被称为TripletPower,训练一个三重网络,该网络学习对侧信道攻击的鲁棒嵌入,并且几乎没有痕迹。我们展示了我们的方法在使用ChipWhisperer从AVR XMEGA和ARM STM32微控制器收集的电源跟踪分析攻击中的优势。具体来说,实验结果表明,我们的方法只需要低至250个训练轨迹就可以训练分类器成功地在XMEGA(或STM32)上恢复未屏蔽AES的密钥,而卷积神经网络在分析攻击时至少需要4,000个训练轨迹。此外,我们还将我们的方法扩展到带有动态标记的非分析攻击。实验结果表明,该方法可以在非分析攻击中仅使用525个未标记的功率迹线即可有效地恢复XMEGA上未屏蔽的AES密钥。我们的方法对从屏蔽AES收集的功率走线和随机延迟产生的走线也有效。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
TripletPower: Deep-Learning Side-Channel Attacks over Few Traces
Deep learning has been utilized as a promising technique in side-channel attacks. However, to recover keys successfully, deep-learning side-channel attacks often require thousands of training traces, which could be challenging for an attacker to obtain in the real world. This paper proposes a new deep-learning side-channel attack which only requires hundreds of training traces. Our proposed method, referred to as TripletPower, trains a triplet network, which learns a robust embedding for side-channel attacks with few traces. We demonstrate the advantage of our method in profiling attacks over power traces collected from AVR XMEGA and ARM STM32 microcontrollers using ChipWhisperer. Specffically, experimental results show that our method only needs as low as 250 training traces to train a classffier successfully recovering keys of unmasked AES on XMEGA (or STM32) while a Convolutional Neural Network needs at least 4,000 training traces in profiling attacks. In addition, we extend our method to non-profiling attacks with on-the-fly labeling. Experimental results suggest that our method can effectively recover keys of unmasked AES on XMEGA with only 525 unlabeled power traces in non-profiling attacks. Our method is also effective over power traces collected from masked AES and traces generated with random delay.
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