Abstract

Automatically recognizing the modulation of radar signals is a necessary survival technique in electronic intelligence systems. In order to avoid the complex process of the feature extracting and realize the intelligent modulation recognition of various radar signals under low signal-to-noise ratios (SNRs), this paper proposes a method based on intrapulse signatures of radar signals using adaptive singular value reconstruction (ASVR) and deep residual learning. Firstly, the time-frequency spectrums of radar signals under low SNRs are improved after ASVR denoising processing. Secondly, a series of image processing techniques, including binarizing and morphologic filtering, are applied to suppress the background noise in the time-frequency distribution images (TFDIs). Thirdly, the training process of the residual network is achieved using TFDIs, and classification under various conditions is realized using the new-trained network. Simulation results show that, for eight kinds of modulation signals, the proposed approach still achieves an overall probability of successful recognition of 94.1% when the SNR is only −8 dB. Outstanding performance proves the superiority and robustness of the proposed method.

Highlights

  • Nowadays, advanced electronic reconnaissance technology is the key to obtain superiority in electronic countermeasures [1,2]

  • The method for the intrapulse modulation recognition of radar signals needs to have a better performance under low signal-to-noise ratios (SNRs) [3]

  • To get out of the predicament of inability to recognize radar signals under low SNRs, an adaptive singular value reconstruction (ASVR) algorithm based on the singular value difference spectrum is proposed for the first time in this paper

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Summary

Introduction

Nowadays, advanced electronic reconnaissance technology is the key to obtain superiority in electronic countermeasures [1,2]. In [8,9], the high-order cumulant, the instantaneous frequency and all order moments were extracted in the time-frequency domain Based on these features, the system can accurately identify eight kinds of radar signals in an environment full of intense noise. To get out of the predicament of inability to recognize radar signals under low SNRs, an adaptive singular value reconstruction (ASVR) algorithm based on the singular value difference spectrum is proposed for the first time in this paper. Image processing methods, including binarizing and morphologic filtering, are applied to remove the background noise of the TFDIs. after finishing the off-line training of the deep residual network using TFDIs, recognition of eight types of radar signals is achieved with high accuracy.

Signal Model
System Overview
Signalthe
H U V T
Matrix
M matrix
Adaptive Singular Value Reconstruction
Singular andand singular value difference spectrum ofof the received
TFDI Denoising Processing
Deep Residual Learning
Network Architecture
Simulation Result
Recognition Result
Effects
Effects of ASVR
Findings
Conclusions
Full Text
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