Deep Learning Side-Channel Attack Against Hardware Implementations of AES

Takaya Kubota, Kota Yoshida, M. Shiozaki, T. Fujino
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引用次数: 30

Abstract

In the field of image recognition, machine learning technologies, especially deep learning, have been rapidly advancing alongside with the advances of hardware such as GPUs. In image recognition, in general, large numbers of labeled sets containing image and correct value pairs to be identified are input to a neural network, and repeatedly learning the set enables the neural network to identify objects with high accuracy. A new side-channel attack method, deep learning side-channel attack (DLSCA), utilizes the high identifying ability of the neural network to try and unveil a secret key of the cryptographic module by being trained with power waveforms and learning the leak model. However, at this stage, attacks on software implementations have been mainly investigated. In contrast, there are few studies about hardware implementations especially such as ASIC circuits. In this paper, we investigate the use of DL-SCA against hardware implementations of AES and demonstrate that it is able to unveil the secret key by applying a new technique named "mixed model dataset based on round-round XORed value." We also compare the attack performance and characteristics of DL-SCA with conventional analysis methods such as correlation power analysis and conventional template attack.
针对AES硬件实现的深度学习侧信道攻击
在图像识别领域,机器学习技术,特别是深度学习,随着gpu等硬件的进步而迅速发展。在图像识别中,通常将大量包含待识别图像和正确值对的标记集输入到神经网络中,反复学习该集合使神经网络能够高精度地识别物体。一种新的侧信道攻击方法——深度学习侧信道攻击(deep learning side-channel attack, DLSCA),利用神经网络的高识别能力,通过功率波形训练和学习泄漏模型,试图揭开加密模块的密钥。然而,在这个阶段,主要研究的是对软件实现的攻击。相比之下,对硬件实现特别是ASIC电路的研究却很少。在本文中,我们研究了DL-SCA对AES硬件实现的使用,并证明它能够通过应用一种名为“基于圆形xor值的混合模型数据集”的新技术来揭示密钥。并将DL-SCA的攻击性能和特点与相关功率分析、模板攻击等常规分析方法进行了比较。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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