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A Gaussian-mixture PHD filter based on random hypersurface model for multiple extended targets

机译:基于随机超曲面模型的高斯混合PHD滤波器用于多个扩展目标

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This paper presents an approach to track an unknown number of extended targets, in the presence of clutter measurements and missed detections, where the extensions of targets are modeled as random hypersurfaces. The random hypersurface model developed recently by Baum et al. is embedded into the extended target PHD framework. To do this, the pseudo-measurement and measurement likelihood function for extended target are constructed, and the update of PHD filter is derived based on the random hypersurface model under the necessary assumptions and approximations. The simulation results show that the proposed extended target filter could track the kinematic state and extension state of extended targets well.
机译:本文提出了一种在杂波测量和漏检的情况下跟踪未知数量的扩展目标的方法,其中目标的扩展被建模为随机超曲面。 Baum等人最近开发的随机超表面模型。嵌入到扩展目标PHD框架中。为此,构造了扩展目标的伪测量和测量似然函数,并在必要的假设和近似下,基于随机超曲面模型推导了PHD滤波器的更新。仿真结果表明,所提出的扩展目标滤波器能够很好地跟踪扩展目标的运动状态和扩展状态。

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