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Probabilistic data association avoiding track coalescence

机译:概率数据关联避免跟踪合并

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摘要

For the problem of tracking multiple targets, the joint probabilistic data association (JPDA) approach has shown to be very effective in handling clutter and missed detections. The JPDA, however, tends to coalesce neighboring tracks and ignores the coupling between those tracks. Fitzgerald (1990) has shown that hypothesis pruning may be an effective way to prevent track coalescence. Unfortunately, this process leads to an undesired sensitivity to clutter and missed detections, and it does not support any coupling. To improve this situation, the paper follows a novel approach to combine the advantages of JPDA coupling, and hypothesis pruning into new algorithms. First, the problem of multiple target tracking is embedded into one filtering for a linear descriptor system with stochastic coefficients. Next, for this descriptor system, the exact Bayesian and new JPDA filters are derived. Finally, through Monte Carlo simulations, it is shown that these new PDA filters are able to handle coupling and are insensitive to track coalescence, clutter, and missed detections
机译:对于跟踪多个目标的问题,联合概率数据协会(JPDA)方法已显示出在处理混乱和漏检方面非常有效。但是,JPDA倾向于合并相邻的轨道,而忽略了这些轨道之间的耦合。菲茨杰拉德(Fitzgerald,1990)指出,假说修剪可能是防止磁迹合并的有效方法。不幸的是,该过程导致对杂波和漏检的不希望的敏感性,并且它不支持任何耦合。为了改善这种情况,本文采用了一种新颖的方法,将JPDA耦合的优点与假设修剪合并为新算法。首先,将多目标跟踪问题嵌入到具有随机系数的线性描述符系统的一个滤波中。接下来,对于此描述符系统,派生了准确的贝叶斯和新的JPDA过滤器。最后,通过蒙特卡洛仿真,表明这些新型PDA滤波器能够处理耦合,并且对跟踪合并,混乱和漏检不敏感

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