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Set JPDA Filter for Multitarget Tracking

机译:设置JPDA过滤器以进行多目标跟踪

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摘要

In this article, we show that when targets are closely spaced, traditional tracking algorithms can be adjusted to perform better under a performance measure that disregards identity. More specifically, we propose an adjusted version of the joint probabilistic data association (JPDA) filter, which we call set JPDA (SJPDA). Through examples and theory we motivate the new approach, and show its possibilities. To decrease the computational requirements, we further show that the SJPDA filter can be formulated as a continuous optimization problem which is fairly easy to handle. Optimal approximations are also discussed, and an algorithm, Kullback–Leibler SJPDA (KLSJPDA), which provides optimal Gaussian approximations in the Kullback–Leibler sense is derived. Finally, we evaluate the SJPDA filter on two scenarios with closely spaced targets, and compare the performance in terms of the mean optimal subpattern assignment (MOSPA) measure with the JPDA filter, and also with the Gaussian-mixture cardinalized probability hypothesis density (GM-CPHD) filter. The results show that the SJPDA filter performs substantially better than the JPDA filter, and almost as well as the more complex GM-CPHD filter.
机译:在本文中,我们证明了当目标间隔很近时,可以在忽略身份的性能指标下调整传统的跟踪算法,使其表现更好。更具体地说,我们提出了联合概率数据协会(JPDA)过滤器的调整版本,我们称其为集合JPDA(SJPDA)。通过实例和理论,我们激励了这种新方法,并展示了它的可能性。为了降低计算要求,我们进一步表明SJPDA滤波器可以公式化为一个相当容易处理的连续优化问题。还讨论了最佳逼近,并推导了算法Kullback-Leibler SJPDA(KLSJPDA),该算法提供了Kullback-Leibler意义上的最佳高斯近似。最后,我们在目标间隔很近的两种情况下评估SJPDA过滤器,并用JPDA过滤器以及高斯混合基数化概率假设密度(GM- CPHD)过滤器。结果表明,SJPDA滤波器的性能明显优于JPDA滤波器,几乎比更复杂的GM-CPHD滤波器好。

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