基于轴向积分双谱和深度残余收缩网络的特定辐射源特征提取与识别

Yifan Li, Chunjie Cao, Hong Zhang, Xiuhua Wen, Yang Sun, Keqi Zhan
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引用次数: 1

摘要

在现有的特定辐射源识别研究中,在对样本进行分类时不可避免地会产生一些噪声,影响了具有独特固有特性的射频指纹(RFF)的提取,从而降低了分类精度。本文提出了一种基于轴积分双谱特征与深度残余收缩网络(DRSN)相结合的特定辐射源特征提取与识别方法。首先利用轴向积分双谱提取信号特征,然后在深度残差收缩网络中对信号进行软阈值降噪,并利用注意机制根据每个样本的情况自动设置阈值。实验结果表明,新方法能有效提高低信噪比下的分类准确率,在低信噪比情况下,最大距离为62ft时,分类识别准确率可达98.5%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Feature Extraction and Identification of Specific Radiation Sources Based on Axial Integral Bispectrum and Deep Residual Shrinkage Network
In the existing research on the identification of specific radiation sources, some noise inevitably occurs when classifying samples, which affects the extraction of Radio frequency fingerprint (RFF) with unique native properties, thus reducing the classification accuracy. In this paper, a feature extraction and identification method for specific radiation sources based on the integration of axial integral bispectrum features and deep residual shrinkage networks(DRSN) is proposed. First, the axial integral bispectrum is used to extract the signal features, and then the signal is denoised by soft thresholding in the deep residual shrinkage network, and the threshold is automatically set according to the situation of each sample using the attention mechanism. The experimental results show that the new method can effectively improve the classification accuracy under low signal-to-noise ratio, and in the case of low signal-to-noise ratio, the maximum distance of 62ft can achieve 98.5% classification and recognition accuracy.
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