中国空间科学技术 ›› 2026, Vol. 46 ›› Issue (1): 135-144.doi: 10.16708/j.cnki.1000-758X.2026.0013

• 论文 • 上一篇    

基于高斯过程与PHD滤波器的空间三维多扩展目标跟踪

兰宇1,2,吴健发1,2,魏春岭1,2,*   

  1. 1.北京控制工程研究所,北京100094
    2.空间智能控制技术全国重点实验室,北京100094
  • 收稿日期:2025-04-11 修回日期:2025-06-23 录用日期:2025-06-30 发布日期:2026-01-09 出版日期:2026-01-30

Space 3D multi-extended target tracking based on Gaussian process PHD filter

LAN Yu1,2,WU Jianfa1,2,WEI Chunling1,2,*   

  1. 1.Beijing Institute of Control Engineering,Beijing 100094,China
    2.National Key Laboratory of Space Intelligent Control,Beijing 100094,China
  • Received:2025-04-11 Revision received:2025-06-23 Accepted:2025-06-30 Online:2026-01-09 Published:2026-01-30

摘要: 在空间预警、规避与非合作目标监视等任务中,为了更准确地获取目标的详细信息,需要同时估计目标的运动状态与形态特征,因此扩展目标跟踪算法的研究至关重要。针对这一需求,提出了一种适用于三维轨道空间的新型扩展目标跟踪算法。首先,采用基于高斯过程(GP)的径向函数对三维形状进行非参数化建模,有效地解决了随机矩阵模型难以精确描述复杂形状的问题。然后,研究了基于随机有限集(RFS)理论的概率假设密度(PHD)多目标跟踪滤波器,充分发挥了RFS在无需显式数据关联方面的优势,有效应对了空间高密度杂波环境。最后,提出了一种基于改进欧式距离的动态阈值分区策略,在保证跟踪精度的同时显著提升计算效率。仿真结果表明,相较于基于随机矩阵的扩展目标跟踪算法,提出的GPPHD滤波器在目标状态估计精度与三维形态描述能力上均显著提升,具体而言,其中形态描述指标IOU提升幅度达64%。该方法有效克服了传统目标跟踪方法在轨道空间中应用的局限性,为空间非合作目标跟踪提供了新的技术手段。


关键词: 空间多目标跟踪, 高斯过程, 扩展目标跟踪, PHD滤波器, 随机有限集

Abstract: In tasks such as space warning, evasion, and surveillance of noncooperative targets, the accurate acquisition of detailed information about targets requires simultaneous estimation of both their motion state and shape characteristics. Therefore, research on extended target tracking algorithms is critical. To address this situation, a novel algorithm of extended target tracking suitable for three-dimensional orbital space is proposed. Firstly, a non-parametric modeling approach based on Gaussian process (GP) radial functions is used to model three-dimensional shapes, effectively solving the problem where random matrix models fail to describe complex shapes accurately. Secondly, a probability hypothesis density (PHD) multitarget tracking filter based on the random finite set (RFS) theory is explored. The RFS theory is employed to leverage its benefits, including the elimination of explicit data association, and to effectively handle high-density clutter in space. Finally, a dynamic threshold partitioning strategy based on an improved Euclidean distance is proposed. This strategy which significantly enhances computational efficiency while ensuring tracking accuracy. The simulation results demonstrate that, compared with the extended object tracking algorithm based on the random matrix method, the proposed GP-PHD filter exhibits significant improvements in both target state estimation accuracy and 3D shape description. In terms of shape description, the IOU metric demonstrates an enhancement of 64%. This method effectively overcomes the limitations of traditional tracking methods in orbital space and provides a new technical solution for noncooperative target tracking in space.

Key words: space multi-target tracking, Gaussian process, extended target tracking, PHD filter, random finite set