作者
Samuel Bair, Matthew DelVecchio, Bryse Flowers, Alan J Michaels, William C Headley
发表日期
2019/5/15
图书
Proceedings of the ACM Workshop on Wireless Security and Machine Learning
页码范围
25-30
简介
Wireless communications has greatly benefited in recent years from advances in machine learning. A new subfield, commonly termed Radio Frequency Machine Learning (RFML), has emerged that has demonstrated the application of Deep Neural Networks to multiple spectrum sensing tasks such as modulation recognition and specific emitter identification. Yet, recent research in the RF domain has shown that these models are vulnerable to over-the-air adversarial evasion attacks, which seek to cause minimum harm to the underlying transmission to a cooperative receiver, while greatly lowering the performance of spectrum sensing tasks by an eavesdropper. While prior work has focused on untargeted evasion, which simply degrades classification accuracy, this paper focuses on targeted evasion attacks, which aim to masquerade as a specific signal of interest. The current work examines how a Convolutional …
引用总数
2019202020212022202320244101811102
学术搜索中的文章
S Bair, M DelVecchio, B Flowers, AJ Michaels… - Proceedings of the ACM Workshop on Wireless …, 2019