An Analysis of Signal Energy Impacts and Threats to Deep Learning Based SEI

Joshua H. Tyler, M. Fadul, D. Reising, Farah I. Kandah
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引用次数: 9

Abstract

Specific Emitter Identification (SEI) was conceived to detect, characterize, and identify radars using their transmitted signals. SEI’s success is linked to the imperfections of an emitter’s Radio Frequency (RF) front-end, which imparts unique "coloration" to the signal during its formation and transmission without impeding normal transceiver operations. Recent works propose Deep Learning (DL) based SEI due to its demonstrated successes in image and facial recognition, as well as its ability to learn radio-specific features directly from the sampled signals. This removes the needless, handcrafted feature engineering of traditional SEI. However, signal energy, its impacts, and its susceptibility to adversary mimicry has received little attention by DL-based SEI works. This work is the first to investigate the impacts and threats posed to DL-based SEI by the presence, lack, or manipulation of signal energy. Our work shows that Long Short-Term Memory (LSTM)-based SEI provides the highest average percent correct classification performance of 89.9% and the lowest rate, 0.68%, at which an adversary can circumvent the SEI process by manipulating the energy of its signals.
基于深度学习的SEI信号能量影响与威胁分析
特定发射器识别(SEI)的设想是利用雷达发射的信号来探测、表征和识别雷达。SEI的成功与发射器射频(RF)前端的缺陷有关,射频前端在信号形成和传输过程中赋予信号独特的“颜色”,而不会妨碍正常的收发器操作。最近的研究提出了基于深度学习(DL)的SEI,因为它在图像和面部识别方面取得了成功,并且能够直接从采样信号中学习无线电特定特征。这消除了传统SEI中不必要的、手工制作的特征工程。然而,信号能量、它的影响以及它对对手模仿的易感性却很少受到基于dl的SEI研究的关注。这项工作首次调查了信号能量的存在、缺乏或操纵对基于dl的SEI的影响和威胁。我们的研究表明,基于长短期记忆(LSTM)的SEI提供了89.9%的最高平均正确率分类性能和0.68%的最低平均正确率,攻击者可以通过操纵其信号的能量来规避SEI过程。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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