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Radar-Jamming Classification in the Event of Insufficient Samples Using Transfer Learning

Yanbin Hou, Huidong Ren, Qinzhe Lv, Lili Wu, Xiaodong Yang, Yinghui Quan

2022Symmetry15 citationsDOIOpen Access PDF

Abstract

Radar has played an irreplaceable role in modern warfare. A variety of radar-jamming methods have been applied in recent years, which makes the electromagnetic environment more complex. The classification of radar jamming is critical for electronic counter-countermeasures (ECCM). In the field of signal classification, machine learning-based methods take great effort to find proper features as well as classifiers, and deep learning-based methods depend on large training datasets. For the above reasons, an efficient transfer learning-based method is proposed in this paper. Firstly, one-dimensional radar signals were transformed into time–frequency images (TFIs) using linear and bilinear time–frequency analysis, which is inspired by symmetry theory. Secondly, pretrained AlexNet and SqueezeNet networks were modified to classify the processed TFIs. Finally, performance of this method was evaluated and compared using a simulated data set with nine types of radar-jamming signals. The results demonstrate that our proposed classification method performs well in accuracy and efficiency at a 1% training ratio, which is practical for anti-jamming.

Topics & Concepts

JammingRadarTransfer of learningComputer scienceArtificial intelligenceElectronic warfareMachine learningRadar jamming and deceptionPattern recognition (psychology)Field (mathematics)Data miningRadar imagingPulse-Doppler radarMathematicsTelecommunicationsPhysicsThermodynamicsPure mathematicsWireless Signal Modulation ClassificationAdvanced SAR Imaging TechniquesAnomaly Detection Techniques and Applications
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