扩展目标概率假设密度滤波器的随机划分

Julian Böhler, Tim Baur, S. Wirtensohn, J. Reuter
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引用次数: 3

摘要

针对扩展目标概率假设密度滤波框架,提出了一种新的基于似然的测量集划分方法。最近的工作主要依赖于启发式划分方法,该方法基于单个测量值之间的距离度量对测量数据进行聚类。如果跟踪的扩展对象间隔很近,这可能导致滤波性能差。所提出的方法称为随机分区(StP)是基于抽样方法,并受到Granström等人以前工作的启发。在这项工作中,StP方法应用于高斯逆Wishart (GIW) PHD滤波器,并与使用启发式距离分区(DP)方法的第二个滤波器实现进行比较。在两个物体相互接近的情况下,通过蒙特卡罗模拟对性能进行了评估。结果表明,与DP相比,基于采样的StP方法具有更好的滤波性能。
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Stochastic Partitioning for Extended Object Probability Hypothesis Density Filters
This paper presents a new likelihood-based partitioning method of the measurement set for the extended object probability hypothesis density (PHD) filter framework. Recent work has mostly relied on heuristic partitioning methods that cluster the measurement data based on a distance measure between the single measurements. This can lead to poor filter performance if the tracked extended objects are closely spaced. The proposed method called Stochastic Partitioning (StP) is based on sampling methods and was inspired by a former work of Granström et. al. In this work, the StP method is applied to a Gaussian inverse Wishart (GIW) PHD filter and compared to a second filter implementation that uses the heuristic Distance Partitioning (DP) method. The performance is evaluated in Monte Carlo simulations in a scenario where two objects approach each other. It is shown that the sampling based StP method leads to an improved filter performance compared to DP.
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