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Integrated Local Linearization Particle Filter for Multiple Maneuvering Target Tracking in Clutter

机译:集成局部线性化粒子滤波器,用于杂波中的多机动目标跟踪

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The integrated particle filter (IPF) algorithm is proposed for single target tracking in clutter that combines the existing particle filters with false track discrimination (FTD) which distinguishes between the true tracks and the false tracks using the target existence probability as a track quality measure. To improve the tracking performance of IPF for maneuvering multitarget tracking, we propose an integrated local linearization particle filter (ILLPF) that applies the FTD to LLPF which approximates the optimal importance density with the updated estimates of a bank of tracking filters. The proposed algorithm is extended to accommodate interacting multiple model-linear multitarget-ILLPF (IMM-LM-ILLPF) for maneuvering target tracking with multiple target dynamic models for robust tracking. A study with Monte Carlo simulation demonstrates the improvement of maneuvering multitarget tracking performance in cluttered environments.
机译:提出了一种用于杂波中单个目标跟踪的集成粒子滤波器(IPF)算法,该算法将现有的粒子滤波器与错误轨道判别(FTD)相结合,后者使用目标存在概率作为轨道质量度量来区分真实轨道和错误轨道。为了提高用于机动多目标跟踪的IPF跟踪性能,我们提出了一种集成的局部线性化粒子滤波器(ILLPF),该算法将FTD应用于LLPF,该算法使用更新的跟踪滤波器组估计值来近似最佳重要性密度。所提出的算法被扩展以适应用于操纵目标跟踪的交互的多个模型线性多目标ILLPF(IMM-LM-ILLPF)与用于鲁棒跟踪的多个目标动态模型的交互。蒙特卡洛模拟的一项研究表明,在杂乱的环境中,机动多目标跟踪性能得到了改善。

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