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Comparison of data association algorithms for bearings-only multi-sensor multi-target tracking

机译:数据关联算法对轴承的多传感器多目标跟踪的比较

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In multi-sensor multi-target bearings-only tracking we often see false intersections of bearings known as ghosts.When the bearing measurements from each sensor have been associated to form sequences termed threads, the problem is to associate pairs of threads to identify the true target intersections. In this paper we present two algorithms: (i) Classical Bayesian Thread Association (CBTA) and (ii) Monte Carlo Thread Association (MCTA), for this problem. The performance of these algorithms is compared using Monte Carlo simulations. Furthermore, we also compare their performance against the Rao-Blackwellised Monte Carlo Data Association (RBMCDA) algorithm, which uses unthreaded measurements, in order to ascertain the benefits of using thread information. Simulations show that MCTA is superior to CBTA, and that there is significant benefit in using thread information in this class of problems.
机译:在多传感器多目标轴承的跟踪中,我们经常看到称为鬼魂的轴承的错误交叉点。当每个传感器的轴承测量与形成序列被称为线程的序列时,问题是将对线程对识别真实的目标交叉点。在本文中,我们呈现了两种算法:(i)古典贝叶斯线程协会(CBTA)和(ii)蒙特卡罗线程关联(MCTA),用于这个问题。使用Monte Carlo仿真进行比较这些算法的性能。此外,我们还将其性能与Rao-Blackwellised Monte Carlo数据关联(RBMCDA)算法进行比较,该算法使用未剥离测量,以确定使用线程信息的好处。模拟表明,MCTA优于CBTA,并且在这类问题中使用线程信息存在显着的好处。

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