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Maneuvering Target Tracking in Clutter Using VSIMM-PDA

机译:使用VSIMM-PDA在杂乱中操纵目标跟踪

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Variable Structure Multiple Model (VSMM) estimation generalizes Multiple Model (MM) estimation by assuming that the set of models used for MM estimation is time varying. By using VSMM estimation, a large model set which may cover all possible target maneuvers can be used without significant increase of computational load, while maintaining a reasonable estimation accuracy. Various implementable VSMM algorithms, like Model Group Switching (MGS), Likely Model Set (LMS) and Minimal Sub-Model-Set Switching (MSMSS) using the Interacting Multiple Model (IMM) algorithm with a sub-model-set adaptation logic have appeared in the recent literature. However, the use of these algorithms for tracking maneuvering target in clutter has not been explored. In presence of clutter, one need to use data association technique to differentiate target originated measurement from clutter. The probabilistic data association (PDA) has been popularly adopted to many algorithms for tracking in clutter. In this paper, we integrate PDA technique with MSMSS and propose a VSIMM-PDA algorithm for maneuvering target tracking in clutter. A new grating technique to account for potential model errors is used. A numeric example via multiple Monte Carlo runs, which compares the performance of the new algorithm to a standard IMM-PDA in terms of Root Mean Squared error (RMS) and percentage of track loss, is presented.
机译:可变结构多模型(VSMM)估计通过假设用于MM估计的模型集是时变的模型一组模型来概括多模型(MM)估计。通过使用VSMM估计,可以使用可能涵盖所有可能的目标机动的大型模型集,而无需显着增加计算负载,同时保持合理的估计精度。出现了各种可实现的VSMM算法,如模型组切换(MGS),可能的模型集(LMS)和最小的子模型设置切换(MSMS)使用具有子模型集适应逻辑的交互多模型(IMM)算法在最近的文献中。然而,没有探索使用这些算法来跟踪杂波中的操纵目标。在杂波存在下,需要使用数据关联技术来区分杂波的目标发起的测量。概率数据关联(PDA)已被广泛地采用到许多用于在杂波中跟踪的算法。在本文中,我们将PDA技术与MSMSS集成并提出了一种用于在杂波中操纵目标跟踪的VSIMM-PDA算法。使用用于解释潜在模型误差的新光栅技术。通过多个蒙特卡罗运行的数字示例,它将新算法对标准IMM-PDA的性能进行了比较,呈现出均方根误差(RMS)和轨道损耗的百分比。

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