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Performance analysis of NNF-class target tracking algorithms applied to benchmark problem

机译:用于基准问题的NNF类目标跟踪算法的性能分析

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In target tracking system, accurate target state estimation is required to accomplish efficient radar beam pointing control even in a cluttered environment. State estimation accuracy is degraded by false alarms due to clutters and jamming by intelligent targets. The NNF (nearest neighbor filter) is widely used for tracking a target in a cluttered environment for its computational simplicity. One drawback of the NNF stems from the fact that the selected NN is a false measurement. To improve the performance of the NNF, the PNNF is suggested to consider the probability of the event that the selected NN is the target-originated measurement. The PNNF-m is a new data association with the NN by incorporating the number of validated measurements into design of the PNNF. In this paper, tracking filter algorithms combined with nearest neighbor data association have been applied to the benchmark problem of target tracking algorithms for MPAR (monopulse phased array radar) to compare the tracking performance in the realistic situation where the spatial density of false measurements in the validation region is unknown. Also the performance comparison of the NNF-class filters and the PDAF is included.
机译:在目标跟踪系统中,即使在杂乱的环境中,需要精确的目标状态估计来实现高效的雷达光束指向控制。由于智能目标的折衷和干扰,状态估计精度因误报而降低。 NNF(最近邻滤波器)广泛用于跟踪杂乱环境中的目标,以实现其计算简单性。 NNF的一个缺点源于所选择的NN是假测量的事实。为了提高NNF的性能,建议PNNF考虑所选择的NN是目标发发的测量的事件的可能性。通过将验证的测量的数量结合到PNNF的设计中,PNNF-M是与NN的新数据相关联。在本文中,跟踪滤波器算法与最近的邻居数据关联结合的用于MPAR(Monopulse相控阵列雷达)的目标跟踪算法的基准问题,以比较验证的空间密度的现实情况中的跟踪性能验证区域未知。还包括NNF级过滤器和PDAF的性能比较。

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