基于差分度量的深度学习非剖面侧信道分析方法

Gonella Vijayakanthi, J. P. Mohanty, Ayass Kant Swain, K. Mahapatra
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引用次数: 1

摘要

功率侧信道分析恢复敏感信息不仅从物理上接近设备,而且从样本泄漏数据收集的基本知识。使用最小均方误差度量,使用深度学习测试用例的功率分析提高了正确识别泄漏数据的置信度。与这项工作中最先进的技术进行比较,可以发现在非概要SCA检测类别中性能有所提高。深度学习技术有助于计算平均损失梯度值和损失值,这两个值都是通过将mathworks实现中的迹线作为训练数据,中间值的MSB值作为训练标签来计算的,以揭示期望的秘密密钥。此外,使用不同FPGA板实现加密设计的一些机器学习技术的迭代训练可以更好地提高早期泄漏检测的准确性。
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Differential Metric based Deep Learning Methodology for Non-Profiled Side Channel Analysis
Power Side-Channel analysis recovers sensitive information not only from physical proximity to a device but also from basic knowledge of sample leaked data collection. With minimum mean squared error metric, power analysis using a deep learning test case increase confidence level of proper identification of leaked data. Comparison with state-of-the art technology in this work shows improved performance in the non-profiled SCA category of detection. The deep learning technique aids in calculating the average loss gradient values and the loss values, both being calculated by taking the traces in mathworks implementation as the training data and the MSB values of the intermediate values as the training labels to reveal the expected secret key. Moreover iterative training of some machine learning techniques with different FPGA boards implementing cryptographic designs increased the accuracy of leakage detection at an earlier stage to a better extent.
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