Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures

Micro-Doppler signature represents the micromotion state of a target, and it is used in target recognition and classification technology. The micro-Doppler frequency appears as a transition of the Doppler frequency due to the rotation and vibration of an object. Thus, tracking and classifying target...

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Main Authors: Ji-Hyeon Kim, Soon-Young Kwon, Hyoung-Nam Kim
Format: Article
Language:English
Published: MDPI AG 2024-01-01
Series:Electronics
Subjects:
Online Access:https://www.mdpi.com/2079-9292/13/2/376
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author Ji-Hyeon Kim
Soon-Young Kwon
Hyoung-Nam Kim
author_facet Ji-Hyeon Kim
Soon-Young Kwon
Hyoung-Nam Kim
author_sort Ji-Hyeon Kim
collection DOAJ
description Micro-Doppler signature represents the micromotion state of a target, and it is used in target recognition and classification technology. The micro-Doppler frequency appears as a transition of the Doppler frequency due to the rotation and vibration of an object. Thus, tracking and classifying targets with high recognition accuracy is possible. However, it is difficult to distinguish the types of targets when subdividing targets with the same micromotion or classifying different targets with similar velocities. In this study, we address the problem of classification of three different targets with similar speeds and segmentation of the same type of targets. A novel signature extraction procedure is developed to automatically recognize drone, bird, and human targets by exploiting the different micro-Doppler signatures exhibited by each target. The developed algorithm is based on a novel adaptation of the spectral kurtosis technique of the radar echoes reflected by the three target types. Further, image-embedding layers are used to classify the spectral kurtosis of objects with the same micromotion. We apply a ResNet34 deep neural network to micro-Doppler images to analyze its performance in classifying objects performing micro-movements on the collected bistatic radar data. The results demonstrate that the proposed method accurately differentiates the three targets and effectively classifies multiple targets with the same micromotion.
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spelling doaj.art-61290122b9664d9ab298f6a2e9ff82712024-01-26T16:14:15ZengMDPI AGElectronics2079-92922024-01-0113237610.3390/electronics13020376Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler SignaturesJi-Hyeon Kim0Soon-Young Kwon1Hyoung-Nam Kim2Department of Electronics Engineering, Pusan National University, Busan 46241, Republic of KoreaDepartment of Electronics Engineering, Pusan National University, Busan 46241, Republic of KoreaDepartment of Electronics Engineering, Pusan National University, Busan 46241, Republic of KoreaMicro-Doppler signature represents the micromotion state of a target, and it is used in target recognition and classification technology. The micro-Doppler frequency appears as a transition of the Doppler frequency due to the rotation and vibration of an object. Thus, tracking and classifying targets with high recognition accuracy is possible. However, it is difficult to distinguish the types of targets when subdividing targets with the same micromotion or classifying different targets with similar velocities. In this study, we address the problem of classification of three different targets with similar speeds and segmentation of the same type of targets. A novel signature extraction procedure is developed to automatically recognize drone, bird, and human targets by exploiting the different micro-Doppler signatures exhibited by each target. The developed algorithm is based on a novel adaptation of the spectral kurtosis technique of the radar echoes reflected by the three target types. Further, image-embedding layers are used to classify the spectral kurtosis of objects with the same micromotion. We apply a ResNet34 deep neural network to micro-Doppler images to analyze its performance in classifying objects performing micro-movements on the collected bistatic radar data. The results demonstrate that the proposed method accurately differentiates the three targets and effectively classifies multiple targets with the same micromotion.https://www.mdpi.com/2079-9292/13/2/376micro-DopplerResNet34spectral kurtosisimage embeddingtarget classification
spellingShingle Ji-Hyeon Kim
Soon-Young Kwon
Hyoung-Nam Kim
Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures
Electronics
micro-Doppler
ResNet34
spectral kurtosis
image embedding
target classification
title Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures
title_full Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures
title_fullStr Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures
title_full_unstemmed Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures
title_short Spectral-Kurtosis and Image-Embedding Approach for Target Classification in Micro-Doppler Signatures
title_sort spectral kurtosis and image embedding approach for target classification in micro doppler signatures
topic micro-Doppler
ResNet34
spectral kurtosis
image embedding
target classification
url https://www.mdpi.com/2079-9292/13/2/376
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