Litcius/Paper detail

Remove Some Noise: On Pre-processing of Side-channel Measurements with Autoencoders

Lichao Wu, Stjepan Picek

2020IACR Transactions on Cryptographic Hardware and Embedded Systems70 citationsDOIOpen Access PDF

Abstract

In the profiled side-channel analysis, deep learning-based techniques proved to be very successful even when attacking targets protected with countermeasures. Still, there is no guarantee that deep learning attacks will always succeed. Various countermeasures make attacks significantly more complex, and such countermeasures can be further combined to make the attacks even more challenging. An intuitive solution to improve the performance of attacks would be to reduce the effect of countermeasures.This paper investigates whether we can consider certain types of hiding countermeasures as noise and then use a deep learning technique called the denoising autoencoder to remove that noise. We conduct a detailed analysis of six different types of noise and countermeasures separately or combined and show that denoising autoencoder improves the attack performance significantly.

Topics & Concepts

AutoencoderComputer scienceDeep learningNoise (video)Noise reductionArtificial intelligenceSide channel attackCountermeasureChannel (broadcasting)Machine learningPattern recognition (psychology)Computer securityEngineeringTelecommunicationsCryptographyImage (mathematics)Aerospace engineeringCryptographic Implementations and SecurityDigital Media Forensic DetectionElectrostatic Discharge in Electronics