Feature Extraction Method of Radiation Source in Deep Learning Based on Square Integral Bispectrum

Author:

Yao Yanyan,Yu Lu,Chen Yiming

Abstract

Abstract The feature extraction method of radiation source based on deep learning is a hotspot of specific emitter identification research. In the selection of the initial radiation source data for feature extraction, there are mainly two kinds of time series IQ data and frequency domain bispectral data. Both the IQ signal and the signal bispectrum contain the information that can characterize the fingerprint of the radiation source, and the deep learning methods mostly use different deep network structures to obtain better classification performance. This paper proposes a feature extraction method of radiation source based on bispectral data, and designs a deep network structure combining convolution and long short memory network, which has a better classification and recognition rate than a single convolution network and a single LSTM network.

Publisher

IOP Publishing

Subject

General Physics and Astronomy

Reference15 articles.

1. Research on Individual Identification Technology of Communication Radio;Min;Chinese Journal of Electronics,2009

2. Time-frequency Approach to Radar Detection, Imaging, and Classification;Boashash;IET Signal Processing,2010

3. Individual Identification of Communication Radiation Sources Based on Bispectrum[J];Zhongwei;Journal of Communications,2007

4. A Novel Specific Emitter Identification Method Based on Radio frequency Fingerprints;Deng,2017

5. Radio Frequency Fingerprint Extraction Based on Singular Values and Singular Vectors of Time-frequency Spectrum;Gangsong,2018

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