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A fast ellipse extended target PHD filter using box-particle implementation

机译:使用盒粒子实现的快速椭圆扩展目标PHD滤波器

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This paper presents a box-particle implementation of the ellipse extended target probability hypothesis density (ET-PHD) filter, called the ellipse extended target box particle PHD (EET-BP-PHD) filter, where the extended targets are described as a Poisson model developed by Gilholm et al. and the term "box" is here equivalent to the term "interval" used in interval analysis. The proposed EET-BP-PHD filter is capable of dynamically tracking multiple ellipse extended targets and estimating the target states and the number of targets, in the presence of clutter measurements, false alarms and missed detections. To derive the PHD recursion of the EET-BP-PHD filter, a suitable measurement likelihood is defined for a given partitioning cell, and the main implementation steps are presented along with the necessary box approximations and manipulations. The limitations and capabilities of the proposed EET-BP-PHD filter are illustrated by simulation examples. The simulation results show that a box-particle implementation of the ET-PHD filter can avoid the high number of particles and reduce computational burden, compared to a particle implementation of that for extended target tracking.
机译:本文介绍了椭圆扩展目标概率假设密度(ET-PHD)过滤器的箱粒子实现,称为椭圆扩展目标箱粒子PHD(EET-BP-PHD)过滤器,其中扩展目标被描述为Poisson模型由Gilholm等人开发。术语“盒”在此等同于间隔分析中使用的术语“间隔”。所提出的EET-BP-PHD滤波器能够在存在杂波测量,错误警报和漏检的情况下动态跟踪多个椭圆扩展目标并估计目标状态和目标数量。为了导出EET-BP-PHD滤波器的PHD递归,为给定的分区单元定义了合适的测量可能性,并介绍了主要的实现步骤以及必要的框近似和操作。仿真示例说明了所提出的EET-BP-PHD滤波器的局限性和功能。仿真结果表明,与扩展目标跟踪的粒子实现相比,ET-PHD滤波器的盒粒子实现可以避免大量粒子,并减少计算负担。

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