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遥感卫星视频目标跟踪方法综述

李洋帆 李伟 田静 沈清

中国空间科学技术(中英文)2025,Vol.45Issue(5):60-74,15.
中国空间科学技术(中英文)2025,Vol.45Issue(5):60-74,15.DOI:10.16708/j.cnki.1000-758X.2025.0076

遥感卫星视频目标跟踪方法综述

Object tracking in satellite videos:a survey

李洋帆 1李伟 1田静 1沈清1

作者信息

  • 1. 天基智能信息处理全国重点实验室,北京 100081||北京理工大学 信息与电子学院,北京 100081
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摘要

Abstract

This paper aims to review the research progress in remote sensing satellite video single-target tracking technologies,analyze the advantages and disadvantages of existing methods,and explore future development directions.Through literature review and comparative analysis,the research achievements in this field over the past five years were systematically summarized.The existing methods are categorized into two types:correlation filtering-based methods and deep learning-based methods.The technical features and performance of each category were analyzed.Tracking accuracy of representative methods was evaluated based on publicly available datasets,and the applicability and limitations of different methods were discussed.Experimental results show that correlation filtering-based methods perform excellently in terms of computation speed and tracking accuracy.On the publicly available SatSOT dataset,the highest tracking accuracy can reach 69.8%,with an average frame rate exceeding 30frame/s,demonstrating strong practicality and real-time performance.These methods efficiently track targets with low computationalcost by utilizing appearance features and motion information,making them particularly suitable for resource-constrained onboard platforms.In contrast,deep learning-based methods have significant advantages in feature representation and adaptability to complex scenes,but due to the lack of large-scale annotated data in the remote sensing domain,their highest tracking accuracy on the SatSOT dataset is currently 66.9%,slightly lower than correlation filtering methods.This paper summarizes the research progress in remote sensing satellite video single-target tracking.Correlation filtering methods are mature and highly real-time,suitable for current tasks.Deep learning methods show great potential but require further improvements in model optimization.

关键词

卫星视频/单目标跟踪/相关滤波/深度学习

Key words

satellite videos/single object tracking/correlation filter/deep learning

分类

信息技术与安全科学

引用本文复制引用

李洋帆,李伟,田静,沈清..遥感卫星视频目标跟踪方法综述[J].中国空间科学技术(中英文),2025,45(5):60-74,15.

基金项目

中国博士后科学基金(2024M764136),国家资助博士后研究人员计划(GZB20240941) (2024M764136)

中国空间科学技术(中英文)

OA北大核心

1000-758X

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