Investigating a Spectral Deception Loss Metric for Training Machine Learning-based Evasion Attacks

05/27/2020
by   Matthew DelVecchio, et al.
0

Adversarial evasion attacks have been very successful in causing poor performance in a wide variety of machine learning applications. One such application is radio frequency spectrum sensing. While evasion attacks have proven particularly successful in this area, they have done so at the detriment of the signal's intended purpose. More specifically, for real-world applications of interest, the resulting perturbed signal that is transmitted to evade an eavesdropper must not deviate far from the original signal, less the intended information is destroyed. Recent work by the authors and others has demonstrated an attack framework that allows for intelligent balancing between these conflicting goals of evasion and communication. However, while these methodologies consider creating adversarial signals that minimize communications degradation, they have been shown to do so at the expense of the spectral shape of the signal. This opens the adversarial signal up to defenses at the eavesdropper such as filtering, which could render the attack ineffective. To remedy this, this work introduces a new spectral deception loss metric that can be implemented during the training process to force the spectral shape to be more in-line with the original signal. As an initial proof of concept, a variety of methods are presented that provide a starting point for this proposed loss. Through performance analysis, it is shown that these techniques are effective in controlling the shape of the adversarial signal.

READ FULL TEXT

page 1

page 3

research
05/27/2020

Effects of Forward Error Correction on Communications Aware Evasion Attacks

Recent work has shown the impact of adversarial machine learning on deep...
research
03/01/2019

Evaluating Adversarial Evasion Attacks in the Context of Wireless Communications

Recent advancements in radio frequency machine learning (RFML) have demo...
research
01/07/2021

Adversarial Machine Learning for 5G Communications Security

Machine learning provides automated means to capture complex dynamics of...
research
11/02/2022

a-RNA: Adversarial Radio Noise Attack to Fool Radar-based Environment Perception Systems

Due to their robustness to degraded capturing conditions, radars are wid...
research
07/26/2022

Perception-Aware Attack: Creating Adversarial Music via Reverse-Engineering Human Perception

Recently, adversarial machine learning attacks have posed serious securi...
research
12/21/2021

Covert Communications via Adversarial Machine Learning and Reconfigurable Intelligent Surfaces

By moving from massive antennas to antenna surfaces for software-defined...

Please sign up or login with your details

Forgot password? Click here to reset