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Passive multi-target tracking with the marginalized Kalman GM-PHD filter

机译:边缘化卡尔曼GM-PHD滤波器的被动多目标跟踪

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A marginalized Kalman Gaussian mixture Probability Hypothesis Density (GM-PHD) is proposed for jointly estimating the time-varying number of targets and their states from a sequence of observation sets in the presence of nonlinear state and observation model, detection uncertainty, noise and false alarms. The marginalized transformation (MT) is applied to calculate the prediction and update distribution of target states for the nonlinear models, and then the analytical expression of the target state and its covariance can be got. The measurement driven birth intensity is applied in the filter to ensure the target birth intensity could cover the entire state space. Finally, the resulting marginalized Kalman GM-PHD (MK-PHD) is compared to the EK-PHD, UK-PHD and CK-PHD in aspects of estimation of target number, OSPA distance and computation time. The evaluations show the effectivity of the theoretical analysis and the advantages of the proposed filter.
机译:提出了一种边缘化的卡尔曼高斯混合概率假设密度(GM-PHD),用于在存在非线性状态和观测模型,检测不确定性,噪声和假性的情况下,根据一系列观测集共同估算目标及其状态的时变数量警报。应用边缘化变换(MT)计算非线性模型目标状态的预测和更新分布,得到目标状态及其协方差的解析表达式。将测量驱动的出生强度应用于过滤器中,以确保目标出生强度可以覆盖整个状态空间。最后,在目标数量,OSPA距离和计算时间方面,将边缘化的卡尔曼GM-PHD(MK-PHD)与EK-PHD,UK-PHD和CK-PHD进行比较。评估显示了理论分析的有效性以及所提出的滤波器的优点。

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