Bearing only tracking for maneuver target using nonlinear second-order Markov model

M. Ebrahimi, A. F. Ehyaei
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Abstract

In this paper, in addition to investigation and analyzing the dynamic model of a maneuver target, a new method based on the Interaction Multiple Model (IMM) method is presented to solve the tracking problem in presence of measurement noise. In this procedure, two models are used along with an extended Kalman filter for each model, for estimation of the states related to stochastic target model. To this end, a specific weight is calculated adaptively for each model and the final estimation of the target is obtained from the weighted sum of the modes related to each model. In this paper, second order Markov models are used to better describe the system behavior which leads to a decrease in the number of required motion models. This means that the previous two models are used to decide on the next model, and a much better algorithm is provided than the first-order IMM algorithm
基于非线性二阶马尔可夫模型的机动目标单方位跟踪
本文在对机动目标的动力学模型进行研究和分析的基础上,提出了一种基于交互多模型(IMM)的机动目标跟踪方法,以解决存在测量噪声的机动目标跟踪问题。在此过程中,使用两个模型以及每个模型的扩展卡尔曼滤波器来估计与随机目标模型相关的状态。为此,对每个模型自适应计算特定的权重,并从每个模型相关的模式的加权和中得到目标的最终估计。本文采用二阶马尔可夫模型来更好地描述系统行为,从而减少了所需运动模型的数量。这意味着使用前两个模型来决定下一个模型,并且提供了比一阶IMM算法更好的算法
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