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Side-Channel Information Characterisation Based on Cascade-Forward Back-Propagation Neural Network

机译:基于级联正向反向传播神经网络的边信道信息表征

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Traditional cryptanalysis assumes that an adversary only has access to input and output pairs, but has no knowledge about internal states of the device. However, the advent of side-channel analysis showed that a cryptographic device can leak critical information. In this circumstance, Machine learning is known as a powerful and promising method of analysing of side-channel information. In this paper, an experimental investigation on a FPGA implementation of elliptic curve cryptography (ECC) was conducted to explore the efficiency of side-channel information characterisation based on machine learning techniques. In this work, machine learning is used in terms of principal component analysis (PCA) for the preprocessing stage and a Cascade-Forward Back-Propagation Neural Network (CFBP) as a multi-class classifier. The experimental results show that CFBP can be a promising approach in characterisation of side-channel information.
机译:传统的密码分析假设对手只能访问输入和输出对,但不了解设备的内部状态。但是,边信道分析的出现表明,加密设备可以泄漏关键信息。在这种情况下,机器学习被认为是分析边信道信息的一种强大而有前途的方法。在本文中,对椭圆曲线密码术(ECC)的FPGA实现进行了实验研究,以探索基于机器学习技术的边信道信息表征的效率。在这项工作中,机器学习被用于预处理阶段的主成分分析(PCA)和多级分类器级联正向反向传播神经网络(CFBP)。实验结果表明,CFBP可以用于表征侧信道信息。

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