Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background

Abstract Unmanned aerial vehicles (UAVs), widely used due to their low cost and versatility, pose security and privacy threats, which calls for their reliable recognition at low altitudes. However, strong ground clutter and multipath effects severely interfere with the weak radar echoes reflected of...

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Main Authors: Zeyang Wu, Yuexing Peng, Wenbo Wang
Format: Article
Language:English
Published: Wiley 2022-07-01
Series:IET Signal Processing
Subjects:
Online Access:https://doi.org/10.1049/sil2.12133
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author Zeyang Wu
Yuexing Peng
Wenbo Wang
author_facet Zeyang Wu
Yuexing Peng
Wenbo Wang
author_sort Zeyang Wu
collection DOAJ
description Abstract Unmanned aerial vehicles (UAVs), widely used due to their low cost and versatility, pose security and privacy threats, which calls for their reliable recognition at low altitudes. However, strong ground clutter and multipath effects severely interfere with the weak radar echoes reflected off the micro‐UAVs, resulting in severe degradation of recognition reliability. Based on channel modelling and UAV recognisability analysis, a time‐frequency transform‐aided contrastive learning model is proposed to suppress the severe ground clutter and reliably recognise low‐altitude UAVs. In the proposed framework, a time‐frequency transform unit is first applied to suppress the multipath‐induced ambiguity effect and ease the semantic feature extraction via Zhao‐Atlas‐Marks transform and morphological operation. Thereafter, a contrastive‐learning‐based feature extraction and fusion unit is established to suppress non‐target clutter interference and extract recognisable semantic UAV features. Finally, a gated recurrent unit‐based classifier is designed for UAV recognition. Sufficient experiments are carried out on both real and simulated data sets, and the comparative results verify that the proposed model outperforms the mainstream algorithms and improves the detection accuracy by more than 5% under severe ground clutter interference.
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spelling doaj-art-4d476cff1d2945f08a153eaa38826b532025-02-03T06:45:05ZengWileyIET Signal Processing1751-96751751-96832022-07-0116558860010.1049/sil2.12133Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter backgroundZeyang Wu0Yuexing Peng1Wenbo Wang2Department of Information and Communication Engineering Beijing University of Posts and Telecommunications Beijing ChinaDepartment of Information and Communication Engineering Beijing University of Posts and Telecommunications Beijing ChinaDepartment of Information and Communication Engineering Beijing University of Posts and Telecommunications Beijing ChinaAbstract Unmanned aerial vehicles (UAVs), widely used due to their low cost and versatility, pose security and privacy threats, which calls for their reliable recognition at low altitudes. However, strong ground clutter and multipath effects severely interfere with the weak radar echoes reflected off the micro‐UAVs, resulting in severe degradation of recognition reliability. Based on channel modelling and UAV recognisability analysis, a time‐frequency transform‐aided contrastive learning model is proposed to suppress the severe ground clutter and reliably recognise low‐altitude UAVs. In the proposed framework, a time‐frequency transform unit is first applied to suppress the multipath‐induced ambiguity effect and ease the semantic feature extraction via Zhao‐Atlas‐Marks transform and morphological operation. Thereafter, a contrastive‐learning‐based feature extraction and fusion unit is established to suppress non‐target clutter interference and extract recognisable semantic UAV features. Finally, a gated recurrent unit‐based classifier is designed for UAV recognition. Sufficient experiments are carried out on both real and simulated data sets, and the comparative results verify that the proposed model outperforms the mainstream algorithms and improves the detection accuracy by more than 5% under severe ground clutter interference.https://doi.org/10.1049/sil2.12133deep learningintelligent systemobject detectionreliable detectionUAV detection
spellingShingle Zeyang Wu
Yuexing Peng
Wenbo Wang
Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background
IET Signal Processing
deep learning
intelligent system
object detection
reliable detection
UAV detection
title Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background
title_full Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background
title_fullStr Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background
title_full_unstemmed Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background
title_short Deep learning‐based unmanned aerial vehicle detection in the low altitude clutter background
title_sort deep learning based unmanned aerial vehicle detection in the low altitude clutter background
topic deep learning
intelligent system
object detection
reliable detection
UAV detection
url https://doi.org/10.1049/sil2.12133
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AT yuexingpeng deeplearningbasedunmannedaerialvehicledetectioninthelowaltitudeclutterbackground
AT wenbowang deeplearningbasedunmannedaerialvehicledetectioninthelowaltitudeclutterbackground