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A new measurement partition for extended target tracking based on CFSFDP algorithm

机译:基于CFSFDP算法的扩展目标跟踪测量分区

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In an extended targets tracking, especially in clutter environment with unknown and varying number of targets, measurement partition is of great importance for accurate filtering. But it is always computational and complicated in many cases. To solve this problem, a new measurement set partitioning based on CFSFDP algorithm is proposed. Firstly, the Local Outlier Factor is used to reduce the clutter, then a new method based on density peaks in <;Science> is used to partition the measurement set. This algorithm is not sensitive to the shape and can realize accuracy measurement set partitioning for any shape of targets. Simulation results show that in the case of target crossover, the proposed algorithm can ensure the performance of the extended target tracking, as well as reduce the computational time effectively..
机译:在扩展的目标跟踪中,尤其是在目标数量未知且变化不定的混乱环境中,测量分区对于精确过滤至关重要。但是在许多情况下,它总是计算复杂的。针对这一问题,提出了一种基于CFSFDP算法的测量集划分方法。首先,使用局部离群因子减少杂波,然后使用基于<; Science>中密度峰值的新方法对测量集进行分区。该算法对形状不敏感,可以实现针对任意形状目标的精度测量集划分。仿真结果表明,在目标交叉的情况下,该算法可以保证扩展目标跟踪的性能,并有效地减少了计算时间。

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