Resolving the Doubts: On the Construction and Use of ResNets for Side-channel Analysis

Sengim Karayalçın, S. Picek
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引用次数: 3

Abstract

The deep learning-based side-channel analysis gave some of the most prominent side-channel attacks against protected targets in the past few years. To this end, the research community’s focus has been on creating the following: (1) powerful multilayer perceptron or convolutional neural network architectures and (2) (if possible) minimal multilayer perceptron or convolutional neural network architectures. Currently, we see that, computationally intensive hyperparameter tuning methods (e.g., Bayesian optimization or reinforcement learning) provide the best results. However, as targets with more complex countermeasures become available, these minimal architectures may be insufficient, and we will require novel deep learning approaches.This work explores how residual neural networks (ResNets) perform in side-channel analysis and how to construct deeper ResNets capable of working with larger input sizes and requiring minimal tuning. The resulting architectures, obtained by following our guidelines, are significantly deeper than commonly seen in side-channel analysis, require minimal hyperparameter tuning for specific datasets, and offer competitive performance with state-of-the-art methods across several datasets. Additionally, the results indicate that ResNets work especially well when the number of profiling traces and features in a trace is large.
解疑:边信道分析ResNets的构建与使用
基于深度学习的侧信道分析给出了过去几年针对受保护目标的一些最突出的侧信道攻击。为此,研究界的重点是创建以下内容:(1)强大的多层感知器或卷积神经网络架构;(2)(如果可能的话)最小的多层感知器或卷积神经网络架构。目前,我们看到,计算密集型超参数调优方法(例如,贝叶斯优化或强化学习)提供了最好的结果。然而,随着具有更复杂对策的目标变得可用,这些最小的架构可能是不够的,我们将需要新的深度学习方法。这项工作探讨了残差神经网络(ResNets)如何在侧信道分析中执行,以及如何构建能够处理更大输入尺寸且需要最小调优的更深的ResNets。通过遵循我们的指导方针获得的结果架构,比通常在侧信道分析中看到的要深入得多,需要对特定数据集进行最小的超参数调优,并在多个数据集上使用最先进的方法提供具有竞争力的性能。此外,结果表明,当跟踪中的分析跟踪和特征数量很大时,ResNets工作得特别好。
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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