Deep learning-based LPI radar signals analysis and identification using a Nyquist Folding Receiver architecture附视频

被引:1
|
作者
Tao Wan
Kai-li Jiang
Hao Ji
Bin Tang
机构
[1] SchoolofInformationandCommunicationEngineering,UniversityofElectronicScienceandTechnologyofChina
关键词
D O I
暂无
中图分类号
TN957.51 [雷达信号检测处理];
学科分类号
摘要
Nyquist Folding Receiver(NYFR) is a perceptron structure that realizes a low probability of intercept(LPI)signal analog to information. Aiming at the problem of LPI radar signal receiving, the time domain,frequency domain, and time-frequency domain problems of signals intercepted by NYFR structure are studied. Combined with the time-frequency analysis(TFA) method, a radar recognition scheme based on deep learning(DL) is introduced, which can reliably classify common LPI radar signals. First, the structure of NYFR and its characteristics in the time domain, frequency domain, and time and frequency domain are analyzed. Then, the received signal is then converted into a time-frequency image(TFI). Finally, four kinds of DL algorithms are used to classify LPI radar signals. Simulation results demonstrate the correctness of the NYFR structure, and the effectiveness of the proposed recognition method is verified by comparison experiments.
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页码:196 / 209
页数:14
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