一种基于生成对抗网络的特定发射器表征和识别框架

Jialiang Gong, Xiaodong Xu, Yufeng Qin, Weijie Dong
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引用次数: 10

摘要

特定发射器识别(SEI)能够根据接收到的波形,使用发射信号的一些外部特征测量对各种独特的发射器进行分类,并已显示出其在军事和民用应用中的潜力。然而,接收波形的表征容易受到传播过程中各种因素的影响,导致单个发射器的表征不准确,因此现有方法的鉴别性能通常具有挑战性。为了弥补这些缺点,本文提出了一种使用生成对抗网络(GAN)的新型半监督SEI。我们将表示深度网络简化为三重gan,并构建了一个四层结构的框架。通过表示网络可以提取隐藏在原始信号中的整体特征信息,提高识别性能,而三氮化gan的分类结果又可以帮助表征者学习到更多的单个发射器的判别特征。给出了仿真和实际数据实验的结果。数值性能表明我们的结论,我们提出的框架在分类精度方面不断优于其他现有方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Generative Adversarial Network Based Framework for Specific Emitter Characterization and Identification
Specific emitter identification (SEI) enables the classification of various unique emitters based on received waveforms using some external feature measurements from their transmit signals and has shown its potential for military and civil applications. However, the characterization of the received waveform is susceptible to various factors in propagation process, resulting in inaccurate representations for the individual emitters, so the discriminative performances of existing methods are usually challenging. To remedy these shortcomings, this paper presents a novel semi-supervised SEI using generative adversarial networks (GAN). We mitigated a representation deep network into Triple-GAN and construct a quadruple-structured framework. The overall feature information hidden in the original signals can be extracted by representation network to improve identification performance while the classification results of Triple-GAN can in turn help the representer learning more discriminative characteristics of individual emitters. Results from both simulations and real world data experiments are provided. Numerical performances indicate our conclusion that our proposed framework constantly outperforms other existing schemes in terms of classification accuracy.
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