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A PHD filter for tracking closely spaced objects with elliptic Random Hypersurface models

机译:使用椭圆随机超曲面模型跟踪紧密间隔对象的PHD滤波器

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It is one of the difficulties for space-based optical sensors to track a group of closely spaced objects (CSOs). A suitable way is to treat the CSOs as extended targets, tracking the centroid states and extensions jointly instead of individual objects. The target-generated measurements are modeled by the elliptic Random Hypersurface model (RHM) which can be easily embedded into other Bayesian inference algorithms. Here, the RHM is incorporated with the Gaussian-mixture probability hypothesis density (GM-PHD) for extended target tracking, which enables estimating shape-varying targets in presence of clutter and uncertain associations. Compared with the Gaussian inverse Wishart (GIW) PHD, simulation results demonstrate the capabilities and limitations of the proposed method. At last, a ballistic missile defense scene is established to depict how the method is to handle the CSOs tracking issue.
机译:天基光学传感器跟踪一组紧密间隔的物体(CSO)是困难之一。一种合适的方法是将CSO视为扩展目标,而不是单个对象一起跟踪质心状态和扩展。目标生成的测量值是通过椭圆随机超曲面模型(RHM)建模的,该模型可以轻松地嵌入其他贝叶斯推理算法中。在此,将RHM与高斯混合概率假设密度(GM-PHD)结合在一起,以进行扩展的目标跟踪,从而可以在存在混乱和不确定关联的情况下估算形状变化的目标。与高斯逆维沙特(GIW)PHD相比,仿真结果证明了该方法的功能和局限性。最后,建立了弹道导弹防御场景,以描述该方法如何处理CSO的跟踪问题。

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