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Online clutter estimation using a Gaussian kernel density estimator for multitarget tracking

机译:使用高斯核密度估计器进行多目标跟踪的在线杂波估计

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摘要

In this study, the spatial distribution of false alarms is assumed to be a non-homogeneous Poisson point (NHPP) process. Then, a new method is developed under the kernel density estimation (KDE) framework to estimate the spatial intensity of false alarms for the multitarget tracking problem. In the proposed method, the false alarm spatial intensity estimation problem is decomposed into two subproblems: (i) estimating the number of false alarms in one scan and (ii) estimating the variation of the intensity function value in the measurement space. Under the NHPP assumption, the only parameter that needs to be estimated for the first subproblem is the mean of false alarm number, and the empirical mean is used here as the maximum likelihood estimate of that parameter. Then, for the second subproblem, an online multivariate local adaptive Gaussian kernel density estimator is proposed. Furthermore, the proposed estimation method is seamlessly integrated with widely used multitarget trackers, like the joint integrated probabilistic data association algorithm and the multiple hypotheses tracking algorithm. Simulation results show that the proposed KDE-based method can provide a better estimate of the false alarm spatial intensity and help the multitarget trackers yield superior performance in scenarios with spatially non-homogeneous false alarms.
机译:在这项研究中,错误警报的空间分布被假定为非均匀泊松点(NHPP)过程。然后,在核密度估计(KDE)框架下开发了一种新方法来估计针对多目标跟踪问题的虚警的空间强度。在所提出的方法中,虚警空间强度估计问题被分解为两个子问题:(i)估计一次扫描中虚警的数量;(ii)估计测量空间中强度函数值的变化。在NHPP假设下,需要为第一个子问题估计的唯一参数是错误警报数的平均值,在此将经验平均值用作该参数的最大似然估计。然后,针对第二个子问题,提出了一种在线多元局部自适应高斯核密度估计器。此外,所提出的估计方法可以与广泛使用的多目标跟踪器无缝集成,例如联合集成概率数据关联算法和多假设跟踪算法。仿真结果表明,所提出的基于KDE的方法可以更好地估计虚假警报的空间强度,并在空间非均匀虚假警报的情况下,帮助多目标跟踪器获得更好的性能。

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