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多目标跟踪的混合高斯PHD滤波
引用本文:吴盘龙,任开创,蔡亚东.多目标跟踪的混合高斯PHD滤波[J].计算机工程与应用,2011,47(14):230-232.
作者姓名:吴盘龙  任开创  蔡亚东
作者单位:南京理工大学自动化学院,南京,210094
基金项目:高等学校博士学科点专项科研基金,南京理工大学自主科研专项计划资助项目
摘    要:为解决目标数未知或随时间变化时的多目标跟踪问题,将多目标状态和观测信息表示为随机集的形式,建立了多目标跟踪的混合高斯概率假设密度(PHD)滤波方法。当目标初始的先验概率密度满足高斯分布的形式时,通过将状态噪声、观测噪声、目标的繁衍、新目标的产生、目标的存活概率和检测概率表示成混合高斯的形式,之后每个时刻的后验概率密度均能表示成混合高斯的形式。线性混合高斯PHD滤波方法将Kalman滤波引入到PHD滤波中,利用混合高斯成分预测和更新随机集的PHD,并估计出目标的状态。实验结果表明,在杂波环境下混合高斯PHD滤波方法可以有效地跟踪目标状态。

关 键 词:多目标跟踪  随机集  混合高斯  概率假设密度
修稿时间: 

Gaussian mixture Probability Hypothesis Density filter for multiple target tracking
WU Panlong,REN Kaichuang,CAI Yadong.Gaussian mixture Probability Hypothesis Density filter for multiple target tracking[J].Computer Engineering and Applications,2011,47(14):230-232.
Authors:WU Panlong  REN Kaichuang  CAI Yadong
Affiliation:Department of Automation,Nanjing University of Science and Technology,Nanjing 210094,China
Abstract:When the number of targets is unknown or varied with time,the target state and measurements can be represent-ed as random sets.The Gaussian mixture Probability Hypothesis Density(PHD)filter is implemented to track the multi-targets.The analytical analysis of the method show that the posterior intensity at any subsequent time step remains a Gaussian mix-ture under the assumption that the state noise,the measurement noise,target spawn intensity,new birth intensity,target surviv-al probability,and detection probability are all Gaussian mixture.The Kalman filter is embedded in the Gaussian mixturePHD filter.This method uses Gaussian components to predict and update the PHD of random sets,and estimates targets states.Experiments show that the Gaussian mixture PHD filter can be used to track multi-target in clutter effectively
Keywords:multi-target tracking  random set  Gaussian mixture  probability hypothesis density
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