Evaluation of Hiding-based Countermeasures against Deep Learning Side Channel Attacks with Pre-trained Networks

Konstantinos Nomikos, Athanasios Papadimitriou, M. Psarakis, A. Pikrakis, V. Beroulle
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Abstract

In recent years, the emerging technology of machine learning has been taken into advantage to implement powerful Side Channel Analysis (SCA) attacks. By means of Deep Learning (DL) SCA attacks, countermeasures previously considered strong, such as masking, have failed to provide adequate security levels. This fact creates the need of taking attacks based on artificial neural networks into account during the design of cryptographic implementations. To make things worse, such neural networks may be pre-trained so as to succeed in attacking multiple implementations of a given cipher which were even not used during the training phase. To this end, this work evaluates two low-overhead SCA countermeasure techniques, which add noise in the calculation of the cryptographic algorithm to protect it against DL-SCA attacks with pre-trained networks. We propose the use of two existing, low-overhead countermeasure techniques and evaluate their resilience against multiple pre-trained DL-based SCA networks published in the literature. We show that the pre-trained networks which have been trained with power traces from an unprotected cipher implementation can be used to compromise the protection of a single hiding countermeasure but not the combination of the two hiding countermeasures. This is also true when the model has been pre-trained using a cipher implementation with a single hiding countermeasure. Thus, the combination of these two offers increased protection against pre-trained networks with low associated overheads
基于预训练网络的深度学习侧信道攻击隐藏对策评估
近年来,新兴的机器学习技术被用来实施强大的侧信道分析(SCA)攻击。通过深度学习(DL) SCA攻击,以前认为强大的对策(如屏蔽)未能提供足够的安全级别。这一事实使得在设计加密实现时需要考虑基于人工神经网络的攻击。更糟糕的是,这样的神经网络可能是预先训练的,以便成功地攻击一个给定密码的多个实现,甚至在训练阶段没有使用。为此,本工作评估了两种低开销的SCA对抗技术,它们在加密算法的计算中添加噪声,以保护它免受预训练网络的DL-SCA攻击。我们建议使用两种现有的低开销对策技术,并评估它们针对文献中发表的多个预训练的基于dl的SCA网络的弹性。我们表明,使用未受保护的密码实现的功率迹线进行训练的预训练网络可用于破坏单个隐藏对策的保护,但不能破坏两个隐藏对策的组合。当使用具有单个隐藏对策的密码实现对模型进行预训练时也是如此。因此,这两者的结合提供了对预训练网络的增强保护,并且相关开销较低
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