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基于ET-PHD滤波器和变分贝叶斯近似的扩展目标跟踪算法
引用本文:何祥宇,李静,杨数强,夏玉杰. 基于ET-PHD滤波器和变分贝叶斯近似的扩展目标跟踪算法[J]. 计算机应用, 2020, 40(12): 3701-3706. DOI: 10.11772/j.issn.1001-9081.2020040451
作者姓名:何祥宇  李静  杨数强  夏玉杰
作者单位:1. 洛阳师范学院 物理与电子信息学院, 河南 洛阳 471934;2. 洛阳师范学院 信息技术学院, 河南 洛阳 471934
基金项目:河南省高等学校青年骨干教师培养计划
摘    要:针对未知测量噪声协方差情况下的多扩展目标跟踪问题,利用扩展目标概率假设密度(ET-PHD)滤波器和变分贝叶斯(VB)近似理论,提出了一种标准ET-PHD滤波器的扩展方法及其解析的实现方法。首先,根据标准ET-PHD滤波器的目标状态方程和测量方程,定义了目标状态和测量噪声协方差的增广状态变量及二者的联合转移函数;然后,根据标准ET-PHD滤波器,构建了扩展的ET-PHD滤波器的预测和更新公式;最后,在线性高斯假设的条件下,利用高斯和逆伽马(IG)混合分布表示目标的联合后验强度函数,从而给出了扩展ET-PHD滤波器的解析实现。仿真结果表明:所提算法能提供可靠的跟踪结果,可有效地处理未知测量噪声协方差环境中的多扩展目标跟踪问题。

关 键 词:扩展目标跟踪  概率假设密度  随机有限集  变分贝叶斯  噪声协方差  
收稿时间:2020-04-12
修稿时间:2020-08-03

Extended target tracking algorithm based on ET-PHD filter and variational Bayesian approximation
HE Xiangyu,LI Jing,YANG Shuqiang,XIA Yujie. Extended target tracking algorithm based on ET-PHD filter and variational Bayesian approximation[J]. Journal of Computer Applications, 2020, 40(12): 3701-3706. DOI: 10.11772/j.issn.1001-9081.2020040451
Authors:HE Xiangyu  LI Jing  YANG Shuqiang  XIA Yujie
Affiliation:1. College of Physical and Electronic Information, Luoyang Normal University, Luoyang Henan 471934, China;2. School of Information Technology, Luoyang Normal University, Luoyang Henan 471934, China
Abstract:Aiming at the tracking problem of multiple extended targets under the circumstances with unknown measurement noise covariance, an extension of standard Extended Target Probability Hypothesis Density (ET-PHD) filter and the way to realize its analysis were proposed by using ET-PHD filter and Variational Bayesian (VB) approximation theory. Firstly, on the basis of the target state equations and measurement equations of the standard ET-PHD filter, the augmented state variables of target state and measurement noise covariance as well as the joint transition function of the above variables were defined. Then, the prediction and update equations of the extended ET-PHD filter were established based on the standard ET-PHD filter. And finally, under the condition of linear Gaussian assumptions, the joint posterior intensity function was expressed as the Gaussian and Inverse-Gamma (IG) mixture distribution, and the analysis of the extended ET-PHD filter was realized. Simulation results demonstrate that the proposed algorithm can obtain reliable tracking results, and can effectively track multiple extended targets in the circumstances with unknown measurement noise covariance.
Keywords:extended target tracking  Probability Hypothesis Density (PHD)  Random Finite Set (RFS)  Variational Bayesian (VB)  noise covariance  
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