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A novel fast partitioning algorithm for extended target tracking using a Gaussian mixture PHD filter

机译:一种使用高斯混合PHD滤波器的扩展目标跟踪的新型快速分区算法

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摘要

In an extended target PHD filter, the exact filter requires all possible partitions of the current measurement set for updating, which is computationally intractable. In order to limit the number of partitions, a fast partitioning algorithm for extended target Gaussian mixture PHD (ET-GM-PHD) filter is proposed, which substitutes Distance Partitioning with a fuzzy ART model. Alternative partitions of the measurement set are generated by the different vigilance values in ART. Suitable measures and remedies are given to handle the problems arisen by overestimation of target number and spatially close targets. The simulation results show that the proposed algorithm can well handle the close-spaced targets and obviously reduce computational burden without losing tracking performance, which implies good application prospects for the real-time extended target tracking system.
机译:在扩展的目标PHD滤波器中,精确的滤波器需要将当前测量集的所有可能分区进行更新,这在计算上是棘手的。为了限制分割的数量,提出了一种扩展目标高斯混合PHD(ET-GM-PHD)滤波器的快速分割算法,该算法用模糊ART模型代替了距离分割。测量集的替代分区由ART中的不同警戒值生成。给出了适当的措施和补救措施来处理由于高估目标数量和空间上接近的目标而引起的问题。仿真结果表明,该算法能够很好地处理近距离目标,并且在不损失跟踪性能的情况下,明显减少了计算量,这为实时扩展目标跟踪系统的应用提供了良好的前景。

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