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首页> 外文期刊>The Journal of the Astronautical Sciences >Minimum Uncertainty JPDA Filters and Coalescence Avoidance for Multiple Object Tracking
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Minimum Uncertainty JPDA Filters and Coalescence Avoidance for Multiple Object Tracking

机译:最小不确定性JPDA过滤器和多目标跟踪避免合并

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摘要

Two variations of the joint probabilistic data association filter (JPDAF) are derived and simulated in various cases in this paper. First, an analytic solution for an optimal gain that minimizes posterior estimate uncertainty is derived, referred to as the minimum uncertainty JPDAF (M-JPDAF). Second, the coalescence-avoiding JPDAF (C-JPDAF) is derived, which removes coalescence by minimizing a weighted sum of the posterior uncertainty and a measure of similarity between estimated probability densities. Both novel algorithms are tested in much further depth than any prior work to show how the algorithms perform in various scenarios. In particular, the M-JPDAF more accurately tracks objects than the conventional JPDAF in all simulated cases. When coalescence degrades the estimates at too great of a level, and the C-JPDAF is often superior at removing coalescence when its parameters are properly tuned.
机译:本文推导了联合概率数据关联过滤器(JPDAF)的两种变体,并在各种情况下进行了仿真。首先,推导了用于最小化后验估计不确定度的最佳增益的解析解,称为最小不确定度JPDAF(M-JPDAF)。其次,推导出避免聚结的JPDAF(C-JPDAF),该方法通过最小化后验不确定性的加权和与估计概率密度之间的相似性度量来消除聚结。两种新颖的算法都经过了比以前任何工作都更深入的测试,以展示算法在各种情况下的性能。特别是,在所有模拟情况下,M-JPDAF都比常规JPDAF更准确地跟踪对象。当合并降低估计值时,C-JPDAF通常会在适当调整其参数时优于消除合并。

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