以小波变换为预处理的神经网络功率分析攻击

P. Saravanan, P. Kalpana, V. Prcethisri, V. Sneha
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引用次数: 7

摘要

本文提出了一种新的方法,利用小波变换作为预处理器,再辅以机器学习技术,对安全系统进行功率分析攻击。提出的方法使用已知的明文攻击。通过改变大气温度,可以得到来自密码装置的电源电流走线。然后利用小波变换、数据归一化和主成分分析对电流迹线进行预处理。然后使用预处理器选择的特征数据样本来训练神经网络。通过监督学习算法和小波预处理,与现有的机器学习方法相比,我们能够在猜测密钥方面提高25%左右。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Power analysis attack using neural networks with wavelet transform as pre-processor
This work proposes a novel methodology to perform power analysis attack on secure system by using wavelet transform as a pre-processor followed by machine learning technique. The proposed methodology uses known plain text attack. The power supply current traces from the cryptographic device are obtained by varying the atmospheric temperature. Then the current traces are pre-processed by using wavelet transform, data normalization and principal component analysis (PCA). The featured data samples selected by the pre-processor are then used to train the neural network. Through supervised learning algorithm and wavelet pre-processing, we are able to achieve around 25% improvement in guessing the secret key when compared to existing method of machine learning alone.
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