Playing with blocks: Toward re-usable deep learning models for side-channel profiled attacks

03/16/2022
by   Servio Paguada, et al.
0

This paper introduces a deep learning modular network for side-channel analysis. Our deep learning approach features the capability to exchange part of it (modules) with others networks. We aim to introduce reusable trained modules into side-channel analysis instead of building architectures for each evaluation, reducing the body of work when conducting those. Our experiments demonstrate that our architecture feasibly assesses a side-channel evaluation suggesting that learning transferability is possible with the network we propose in this paper.

READ FULL TEXT

page 23

page 25

page 28

research
06/08/2021

Interpreting Deep Learning based Cerebral Palsy Prediction with Channel Attention

Early prediction of cerebral palsy is essential as it leads to early tre...
research
10/08/2018

Security Analysis of Deep Neural Networks Operating in the Presence of Cache Side-Channel Attacks

Recent work has introduced attacks that extract the architecture informa...
research
06/12/2023

Generic Attacks against Cryptographic Hardware through Long-Range Deep Learning

Hardware-based cryptographic implementations utilize countermeasures to ...
research
12/21/2022

ABODE-Net: An Attention-based Deep Learning Model for Non-intrusive Building Occupancy Detection Using Smart Meter Data

Occupancy information is useful for efficient energy management in the b...
research
08/02/2023

A Practical Deep Learning-Based Acoustic Side Channel Attack on Keyboards

With recent developments in deep learning, the ubiquity of micro-phones ...
research
05/12/2020

Modularizing Deep Learning via Pairwise Learning With Kernels

By redefining the conventional notions of layers, we present an alternat...
research
01/09/2021

Training Deep Architectures Without End-to-End Backpropagation: A Brief Survey

This tutorial paper surveys training alternatives to end-to-end backprop...

Please sign up or login with your details

Forgot password? Click here to reset