Dual-Leak: Deep Unsupervised Active Learning for Cross-Device Profiled Side-Channel Leakage Analysis

H. Yu, Shuo Wang, Haoqi Shan, Max Panoff, Michael Lee, Kaichen Yang, Yier Jin
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Abstract

Deep Learning (DL)-based side-channel analysis (SCA), as a new branch of SCA attacks, poses a significant privacy and security threat to implementations of cryptographic algorithms. Despite their impacts on hardware security, existing DL-based SCA attacks have not fully leveraged the potential of DL algorithms. Therefore, previously proposed DL-based SCA attacks may not show the real capability to extract sensitive information from target designs. In this paper, we propose a novel cross-device SCA method, named Dual-Leak, that applies Deep Unsupervised Active Learning to create a DL model for breaking cryptographic implementations, even with countermeasures deployed. The experimental results on both the local dataset and publicly available dataset show that our Dual-Leak attack significantly outperforms state-of-the-art works while no labeled traces are required from victim devices (i.e., unsupervised learning). Countermeasures are also discussed to assure hardware security against new attacks.
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双泄漏:跨设备侧泄漏分析的深度无监督主动学习
基于深度学习(DL)的侧信道分析(SCA)作为SCA攻击的一个新分支,对加密算法的实现构成了严重的隐私和安全威胁。尽管它们对硬件安全性有影响,但现有的基于DL的SCA攻击并没有充分利用DL算法的潜力。因此,以前提出的基于dl的SCA攻击可能无法显示从目标设计中提取敏感信息的真正能力。在本文中,我们提出了一种新的跨设备SCA方法,称为Dual-Leak,它应用深度无监督主动学习来创建一个用于破解加密实现的DL模型,即使部署了对策。在本地数据集和公开可用数据集上的实验结果表明,我们的双泄漏攻击明显优于最先进的工作,而不需要受害者设备的标记痕迹(即无监督学习)。讨论了硬件安全防范新攻击的对策。
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