基于小波变换的CPA性能比较

Aesun Park, Dong‐Guk Han, J. Ryoo
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引用次数: 5

摘要

相关功率分析(CPA)是利用密码系统功耗信号的统计特征查找密钥的一种非常有效的攻击方法。但是,加密设备的功耗信号受到外围设备噪声的很大影响或失真。在进行侧信道攻击时,这种受噪声和时间不一致影响的失真信号是降低攻击性能的主要因素。为了提高攻击性能,提出了一种基于小波变换的信号处理方法。选择分解层次和小波基是非常重要的,因为基于小波变换的CPA性能取决于这两个因素。本文从攻击时间和找到密钥所需的最小信号数的角度,对CPA的降噪性能和变换域性能进行了比较和分析。此外,提出了利用功耗特征选择分解层次和小波基的方法,并通过实验进行了验证。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CPA performance comparison based on Wavelet Transform
Correlation Power Analysis (CPA) is a very effective attack method for finding secret keys using the statistical features of power consumption signals from cryptosystems. However, the power consumption signal of the encryption device is greatly affected or distorted by noise arising from peripheral devices. When a side channel attack is carried out, this distorted signal, which is affected by noise and time inconsistency, is the major factor that reduces the attack performance. A signal processing method based on the Wavelet Transform (WT) has been proposed to enhance the attack performance. Selecting the decomposition level and the wavelet basis is very important because the CPA performance based on the WT depends on these two factors. In this paper, the CPA performance, in terms of noise reduction and the transform domain, is compared and analyzed from the viewpoint of attack time and the minimum number of signals required to find the secret key. In addition, methods for selecting the decomposition level and the wavelet basis using the features of power consumption are proposed, and validated through experiments.
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