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Bayesian approach to avoiding track seduction

机译:贝叶斯避免轨道诱惑的方法

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摘要

The problem of maintaining track on a primary target in the presence spurious objects is addressed. Recursive and batch filtering approaches are developed. For the recursive approach, a Bayesian track splitting filter is derived which spawns candidate tracks if there is a possibility of measurement misassociation. The filter evaluates the probability of each candidate track being associated with the primary target. The batch filter is a Markov-chain Monte Carlo (MCMC) algorithm which fits the observed data sequence to models of target dynamics and measurement-track association. Simulation results are presented.
机译:解决了在存在虚假物体中维持在主要目标上的轨道的问题。开发了递归和批量过滤方法。对于递归方法,导出贝叶斯轨道分割滤波器,如果存在测量差异的可能性,则会产生候选轨道。滤波器评估与主要目标相关联的每个候选轨道的概率。批量滤波器是Markov-Chain Monte Carlo(MCMC)算法,其适合目标动态和测量轨道关联的模型。提出了仿真结果。

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