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极化旋转域特征驱动的极化ISAR空间目标分类

崔兴超 付耀文 粟毅 陈思伟

信号处理2025,Vol.41Issue(6):1072-1085,14.
信号处理2025,Vol.41Issue(6):1072-1085,14.DOI:10.12466/xhcl.2025.06.006

极化旋转域特征驱动的极化ISAR空间目标分类

Polarimetric ISAR Space Target Classification Driven by Polarimetric Rotation Domain Features

崔兴超 1付耀文 2粟毅 2陈思伟2

作者信息

  • 1. 国防科技大学电子科学学院,湖南 长沙 410073||北京市遥感信息研究所,北京 100080
  • 2. 国防科技大学电子科学学院,湖南 长沙 410073
  • 折叠

摘要

Abstract

With advancements in aerospace technology,many military and technological powers globally have launched a vast number of space targets,including remote sensing imaging satellites and communication satellites,which signifi-cantly contribute to national defense and economic development.The ground-based polarimetric inverse synthetic aper-ture radar(ISAR)system is one of the primary means of observing these space targets,characterized by its ability to provide long-distance,high-resolution imaging in all weather conditions.The polarimetric ISAR system can generate high-resolution two-dimensional radar images of space targets.The classification and recognition of these targets based on polarimetric ISAR images are crucial for determining the type of payload and potential behavioral intentions of the targets.Recently,interpreting polarimetric ISAR images has become vital for classifying space targets.This paper ad-dresses the challenges of interpretation ambiguity arisen from target scattering diversity and the sensing problem of po-larimetric ISAR image global characteristics.We focus on the polarimetric ISAR system and conduct research on space target classification driven by polarimetric rotation domain features.First,we selected four types of satellites for our study:the HISEA-1 satellite,Starlink satellite,QPS-SAR satellite,and Capella satellite.We conducted electromagnetic simulations based on computer-aided design(CAD)models of the space targets using FKEO software to create a polari-metric ISAR electromagnetic simulation dataset.This dataset varied according to different observation angles,band-widths,and signal-to-noise ratio parameters.Next,to tackle the issue of scattering diversity among space targets,we ex-tended the polarimetric correlation values between two channels to the polarimetric rotation domain around the radar's line of sight.We constructed a polarimetric correlation pattern tool to explore and extract the hidden information within this rotation domain.Various polarimetric correlation pattern features were derived,including polarimetric correlation original value,mean value,maximum value,minimum value,standard deviation value,contrast value,anti-entropy,beam-width,maximum angle,and minimum angle.We then selected the most recognizable amplitude polarimetric fea-tures for further analysis in polarimetric ISAR target classification.Additionally,to address the challenge of sensing global characteristics in polarimetric ISAR images,we optimized a popular deep learning model,ResNet.We developed a non-local attention mechanism that calculates the dependency relationship between any two points in the polarimetric ISAR images,allowing for the extraction of non-local features.Finally,we embedded this proposed non-local mecha-nism into the ResNet model after the convolutional layers,resulting in a new machine learning model called NL-ResNet.This model was driven by the selected polarimetric rotation domain features to achieve high-accuracy classification of polarimetric ISAR space targets.Experimental studies were conducted on the electromagnetic simulation data of the four types of space targets,varying in observation angles,bandwidths,and signal-to-noise ratio parameters.The proposed method demonstrated higher classification accuracy and robustness compared to other comparative methods.

关键词

空间目标/极化逆合成孔径雷达/分类/极化旋转域

Key words

space target/polarimetric inverse synthetic aperture radar/classification/polarimetric rotation domain

分类

信息技术与安全科学

引用本文复制引用

崔兴超,付耀文,粟毅,陈思伟..极化旋转域特征驱动的极化ISAR空间目标分类[J].信号处理,2025,41(6):1072-1085,14.

基金项目

国家自然科学基金(U24B20189,62122091) (U24B20189,62122091)

高层次科技创新人才工程计划 The National Natural Science Foundation of China(U24B20189,62122091) (U24B20189,62122091)

The High-Level Science and Technology Innovation Talent Project ()

信号处理

OA北大核心

1003-0530

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