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Unknown Clutter Estimation by FMM Approach in Multitarget Tracking Algorithm

机译:多目标跟踪算法中基于FMM的未知杂波估计

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Finite mixture model (FMM) approach is a research focus in multitarget tracking field. The clutter was treated as uniform distribution previously. Aiming at severe bias caused by unknown and complex clutter, a multitarget tracking algorithm based on clutter model estimation is put forward in this paper. Multitarget likelihood function is established with FMM. In this frame, the algorithms of expectation maximum (EM) and Markov Chain Monte Carlo (MCMC) are both consulted in FMM parameters estimation. Furthermore, target number and multitarget states can be estimated precisely after the clutter model fitted. Association between target and measurement can be avoided. Simulation proved that the proposed algorithm has a good performance in dealing with unknown and complex clutter.
机译:有限混合模型(FMM)方法是多目标跟踪领域的研究重点。先前将杂波视为均匀分布。针对未知和复杂杂波引起的严重偏差,提出了一种基于杂波模型估计的多目标跟踪算法。用FMM建立多目标似然函数。在该框架中,FMM参数估计中均参考了期望最大值算法(EM)和马尔可夫链蒙特卡洛算法(MCMC)。此外,在拟合杂波模型之后,可以精确估计目标数量和多目标状态。可以避免目标与测量之间的关联。仿真结果表明,该算法在处理未知和复杂杂波方面具有良好的性能。

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