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Multiple sensor Bayesian extended target tracking fusion approaches using random matrices

机译:使用随机矩阵的多传感器贝叶斯扩展目标跟踪融合方法

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The tracking of extended targets is attracting a growing literature thanks to the high resolution of several modern radar systems. A fully Bayesian solution has been proposed in the random matrix framework. In this paper, the fusion of detections acquired by multiple sensors is analyzed. Four different methods are proposed to track and to estimate jointly both the kinematic and extent parameters. All of them use the same multi-sensor kinematic vector measurement update. The first approach is based on a particle approximation of the extent state probability density function, whereas the other three are based on an inverse Wishart representation of the latter. Extensive simulations evaluate the performance of the different approaches. The best performance is obtained by the particle filter-based approach paid by an increased computational burden. Comparable performance are observed for the two updates based on multi-sensor generalization, while the worst performance is obtained by the updated based on fusion approximation.
机译:由于几种现代雷达系统的高分辨率,对扩展目标的跟踪吸引了越来越多的文献。已经在随机矩阵框架中提出了完全贝叶斯解决方案。在本文中,分析了由多个传感器获取的检测的融合。提出了四种不同的方法来共同跟踪和估计运动学参数和范围参数。它们都使用相同的多传感器运动矢量测量更新。第一种方法基于范围状态概率密度函数的粒子近似,而其他三种方法基于后者的反Wishart表示。大量的仿真评估了不同方法的性能。最好的性能是通过基于粒子过滤器的方法获得的,而这种方法却增加了计算负担。在基于多传感器泛化的两个更新中观察到了可比的性能,而在基于融合近似的更新中获得了最差的性能。

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