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conference paper

On the benefits of robust models in modulation recognition

Maroto Morales, Javier Alejandro  
•
Bovet, Gérôme
•
Frossard, Pascal  
March 27, 2021
Artificial Intelligence And Machine Learning For Multi-Domain Operations Applications Iii
Conference on Artificial Intelligence and Machine Learning for Multi-Domain Operations Applications III

Given the rapid changes in telecommunication systems and their higher dependence on artificial intelligence, it is increasingly important to have models that can perform well under different, possibly adverse, conditions. Deep Neural Networks (DNNs) using convolutional layers are state-of-the-art in many tasks in communications. However, in other domains, like image classification, DNNs have been shown to be vulnerable to adversarial perturbations, which consist of imperceptible crafted noise that when added to the data fools the model into misclassification. This puts into question the security of DNNs in communication tasks, and in particular in modulation recognition. We propose a novel framework to test the robustness of current state-of-the-art models where the adversarial perturbation strength is dependent on the signal strength and measured with the \signal to perturbation ratio" (SPR). We show that current state-of-the-art models are susceptible to these perturbations. In contrast to current research on the topic of image classification, modulation recognition allows us to have easily accessible insights on the usefulness of the features learned by DNNs by looking at the constellation space. When analyzing these vulnerable models we found that adversarial perturbations do not shift the symbols towards the nearest classes in constellation space. This shows that DNNs do not base their decisions on signal statistics that are important for the Bayes-optimal modulation recognition model, but spurious correlations in the training data. Our feature analysis and proposed framework can help in the task of finding better models for communication systems.

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Type
conference paper
DOI
10.1117/12.2587156
ArXiv ID

arxiv:2103.14977

Author(s)
Maroto Morales, Javier Alejandro  
Bovet, Gérôme
Frossard, Pascal  
Date Issued

2021-03-27

Publisher

SPIE-INT SOC OPTICAL ENGINEERING

Publisher place

Bellingham

Published in
Artificial Intelligence And Machine Learning For Multi-Domain Operations Applications Iii
ISBN of the book

978-1-510643-30-7

Series title/Series vol.

Proceedings of SPIE; 11746

Start page

1174611

Subjects

modulation recognition

•

robustness

•

deep learning

•

security

•

classification

URL

Online abstracts

https://spie.org/SI/conferencedetails/artificial-intelligence-and-machine-learning-for-multi-domain-battle-applications
Editorial or Peer reviewed

NON-REVIEWED

Written at

EPFL

EPFL units
LTS4  
Event nameEvent placeEvent date
Conference on Artificial Intelligence and Machine Learning for Multi-Domain Operations Applications III

Orlando, Florida, USA

April 12-16, 2021

Available on Infoscience
March 30, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/176949
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