JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network

Abstract The newly developed cognitive radar (CR) can implement flexible work modes defined with a set of mode definition parameters. Each definition parameter can employ its modulation type and corresponding optimised modulating values. Automatic recognition and analysis of CR work mode are signifi...

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Main Authors: Mengtao Zhu, Ziwei Zhang, Cong Li, Yunjie Li
Format: Article
Language:English
Published: Wiley 2021-11-01
Series:IET Radar, Sonar & Navigation
Online Access:https://doi.org/10.1049/rsn2.12142
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spelling doaj-4b65dfb8931e4a5ebfba1b28ec8f59372021-10-11T07:44:23ZengWileyIET Radar, Sonar & Navigation1751-87841751-87922021-11-0115111508152410.1049/rsn2.12142JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask networkMengtao Zhu0Ziwei Zhang1Cong Li2Yunjie Li3School of Information and Electronics Beijing Institute of Technology Beijing ChinaSchool of Information and Electronics Beijing Institute of Technology Beijing ChinaSchool of Information and Electronics Beijing Institute of Technology Beijing ChinaSchool of Information and Electronics Beijing Institute of Technology Beijing ChinaAbstract The newly developed cognitive radar (CR) can implement flexible work modes defined with a set of mode definition parameters. Each definition parameter can employ its modulation type and corresponding optimised modulating values. Automatic recognition and analysis of CR work mode are significant challenges for electromagnetic reconnaissance applications. In this article, a deep multitask neural network is proposed for Joint automatic Modulation Recognition and modulation Parameter Estimation (JMRPE‐Net) for the emerging task of CR signals analysis. The proposed JMRPE‐Net consists of a fork‐shaped architecture in which three cascaded convolutional layers act as a shared module for the extraction of common features followed by multiple branches of long short‐term memory layers with the attention mechanism for task‐specific features extraction. The proposed network can receive a sequence of CR pulse signals as input and parallelly perform automatic modulation recognition (AMR) and modulation parameter estimation tasks for multiple work mode definition parameters. Extensive experiments are conducted based on simulated radar intermediate frequency signals with consideration of imperfections of real‐world electromagnetic environments. The experimental results validate the superiority of the proposed JMRPE‐Net against the existing state‐of‐the‐art single task AMR methods or parameter estimation methods.https://doi.org/10.1049/rsn2.12142
collection DOAJ
language English
format Article
sources DOAJ
author Mengtao Zhu
Ziwei Zhang
Cong Li
Yunjie Li
spellingShingle Mengtao Zhu
Ziwei Zhang
Cong Li
Yunjie Li
JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
IET Radar, Sonar & Navigation
author_facet Mengtao Zhu
Ziwei Zhang
Cong Li
Yunjie Li
author_sort Mengtao Zhu
title JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
title_short JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
title_full JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
title_fullStr JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
title_full_unstemmed JMRPE‐Net: Joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
title_sort jmrpe‐net: joint modulation recognition and parameter estimation of cognitive radar signals with a deep multitask network
publisher Wiley
series IET Radar, Sonar & Navigation
issn 1751-8784
1751-8792
publishDate 2021-11-01
description Abstract The newly developed cognitive radar (CR) can implement flexible work modes defined with a set of mode definition parameters. Each definition parameter can employ its modulation type and corresponding optimised modulating values. Automatic recognition and analysis of CR work mode are significant challenges for electromagnetic reconnaissance applications. In this article, a deep multitask neural network is proposed for Joint automatic Modulation Recognition and modulation Parameter Estimation (JMRPE‐Net) for the emerging task of CR signals analysis. The proposed JMRPE‐Net consists of a fork‐shaped architecture in which three cascaded convolutional layers act as a shared module for the extraction of common features followed by multiple branches of long short‐term memory layers with the attention mechanism for task‐specific features extraction. The proposed network can receive a sequence of CR pulse signals as input and parallelly perform automatic modulation recognition (AMR) and modulation parameter estimation tasks for multiple work mode definition parameters. Extensive experiments are conducted based on simulated radar intermediate frequency signals with consideration of imperfections of real‐world electromagnetic environments. The experimental results validate the superiority of the proposed JMRPE‐Net against the existing state‐of‐the‐art single task AMR methods or parameter estimation methods.
url https://doi.org/10.1049/rsn2.12142
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