Revisiting a Methodology for Efficient CNN Architectures in Profiling Attacks

Author:

Wouters Lennert,Arribas Victor,Gierlichs Benedikt,Preneel Bart

Abstract

This work provides a critical review of the paper by Zaid et al. titled “Methodology for Efficient CNN Architectures in Profiling attacks”, which was published in TCHES Volume 2020, Issue 1. This work studies the design of CNN networks to perform side-channel analysis of multiple implementations of the AES for embedded devices. Based on the authors’ code and public data sets, we were able to cross-check their results and perform a thorough analysis. We correct multiple misconceptions by carefully inspecting different elements of the model architectures proposed by Zaid et al. First, by providing a better understanding on the internal workings of these models, we can trivially reduce their number of parameters on average by 52%, while maintaining a similar performance. Second, we demonstrate that the convolutional filter’s size is not strictly related to the amount of misalignment in the traces. Third, we show that increasing the filter size and the number of convolutions actually improves the performance of a network. Our work demonstrates once again that reproducibility and review are important pillars of academic research. Therefore, we provide the reader with an online Python notebook which allows to reproduce some of our experiments1 and additional example code is made available on Github.2

Publisher

Universitatsbibliothek der Ruhr-Universitat Bochum

Subject

General Earth and Planetary Sciences,General Environmental Science

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1. Side-channel attacks based on attention mechanism and multi-scale convolutional neural network;Computers and Electrical Engineering;2024-10

2. Dual-Path Hybrid Residual Network for Profiled Side-Channel Analysis;IEEE Transactions on Circuits and Systems II: Express Briefs;2024-08

3. CPSGD: A Novel Optimization Algorithm and Its Application in Side-Channel Analysis;Mathematics;2024-07-28

4. Domain‐Adaptive Power Profiling Analysis Strategy for the Metaverse;International Journal of Network Management;2024-07-10

5. TinyPower: Side-Channel Attacks with Tiny Neural Networks;2024 IEEE International Symposium on Hardware Oriented Security and Trust (HOST);2024-05-06

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