作者
Bryse Flowers, R Michael Buehrer, William C Headley
发表日期
2019/11/12
研讨会论文
MILCOM 2019-2019 IEEE Military Communications Conference (MILCOM)
页码范围
133-140
出版商
IEEE
简介
Recent work in adversarial radio frequency machine learning has demonstrated the use of untargeted adversarial machine learning techniques for over the air evasion of raw inphase and quadrature based Automatic Modulation Classification Deep Neural Networks. However, most of the proposed methodologies only consider the effect of adversarial machine learning on the underlying transmission as an evaluation metric or don't consider it at all. Furthermore, all of the proposed techniques require gradient computation for each example in order to craft an adversarial perturbation, which makes deployment of these adversarial methodologies to communications hardware difficult. The current work addresses both of these shortcomings. First, methodology is developed that directly accounts for the bit error rate of the underlying transmission in the adversarial optimization problem. Additionally, the learned model for …
引用总数
2020202120222023202475373
学术搜索中的文章
B Flowers, RM Buehrer, WC Headley - MILCOM 2019-2019 IEEE Military Communications …, 2019