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基于雷达航迹序列的无人机/飞鸟动态分类

李书盼 梁彦 张会霞 闫实 江安宁 张华宇

航空学报2026,Vol.47Issue(3):96-111,16.
航空学报2026,Vol.47Issue(3):96-111,16.DOI:10.7527/S1000-6893.2024.31408

基于雷达航迹序列的无人机/飞鸟动态分类

Dynamic classification of unmanned aerial vehicles and flying birds based on radar track sequences

李书盼 1梁彦 1张会霞 1闫实 1江安宁 1张华宇1

作者信息

  • 1. 西北工业大学 自动化学院,西安 710129||信息融合技术教育部重点实验室,西安 710129
  • 折叠

摘要

Abstract

The identification of Unmanned Aerial Vehicles(UAVs)and flying birds based on radar track sequences is crucial for air safety supervision.In practical applications,it is essential to achieve accurate and rapid classification of UAVs/flying birds with the continuous arrival of track data.A short-medium-long multi-scale dynamic classification mechanism characterized by'rapid multi-feature synthesis,multi-likelihood sequential decision,and multi-factor long-term precise classification'is proposed.In rapid multi-feature synthesis,input track vectors are categorized based on physical features:position-related features(representing the target's situation),velocity-related features(represent-ing target's situation changes),and radiation-related features(representing target's material structure).These fea-tures are then fed into a short-term multi-head one-dimensional Convolutional Neural Network(1D-CNN)and synthe-sized using a channel attention mechanism,enabling real-time measurement of target attribute confidence.In multi-likelihood sequential decision-making,the likelihood distribution of target attribute confidence is statistically analyzed,and a multi-leveldecision logic incorporating both short-term and long-term confidence likelihood is designed to achieve comprehensive inference of target attributes over a longer time span.In multi-factor long-term precise classification,multiple factors measurements including velocity/heading angle changes and velocity/head angle trends are proposed,and the random forest algorithm is then employed to accurately classify hard-to-distinguish samples with multiple fea-tures over a long period of time.The proposed algorithm outperforms the existing algorithms in terms of classification accuracy,false positive rate,and false negative rate in real radar track data,verifying its effectiveness.

关键词

雷达目标分类/多特征综合/多头1D-CNN网络/似然决策/多因子度量

Key words

radar target classification/multi-feature integration/multi-head 1D-CNN/likelihood-based decision-making/multi-factor measurement

分类

航空航天

引用本文复制引用

李书盼,梁彦,张会霞,闫实,江安宁,张华宇..基于雷达航迹序列的无人机/飞鸟动态分类[J].航空学报,2026,47(3):96-111,16.

基金项目

国家自然科学基金(61873205) National Natural Science Foundation of China(61873205) (61873205)

航空学报

1000-6893

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