首页> 外文会议>Conference on Signal and Data Processing of Small Targets 2004; 20040413-20040415; Orlando,FL; US >A Multiple Model Probability Hypothesis Density Filter for Tracking Maneuvering Targets
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A Multiple Model Probability Hypothesis Density Filter for Tracking Maneuvering Targets

机译:用于跟踪机动目标的多模型概率假设密度滤波器

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Tracking multiple targets with uncertain target dynamics is a difficult problem, especially with nonlinear state and/or measurement equations. With multiple targets, representing the full posterior distribution over target states is not practical. The problem becomes even more complicated when the target number varies, in which case the dimensionality of the state space itself becomes a discrete random variable. The Probability Hypothesis Density (PHD) filter, which propagates only the first-order statistical moment (or the PHD) of the full target posterior, has been shown to be a computationally efficient solution to multitarget tracking problems with varying number of targets. The integral of PHD in any region of the state space gives the expected number of targets in that region. With maneuvering targets, detecting and tracking the changes in the target motion model also become important, but current PHD implementations do not provide a mechanism for handling this. The target dynamic model uncertainty can be resolved by assuming multiple models for possible motion modes and then combining the mode-conditioned estimates in a manner similar to the one used in the Interacting Multiple Model (IMM) estimator. In this paper a multiple model implementation of the PHD filter, which approximates the PHD by a set of weighted random samples propagated over time using Sequential Monte Carlo methods, is proposed. The resulting filter can handle nonlinear, non-Gaussian dynamics with uncertain model parameters in multisensor-multitarget tracking scenarios. Simulation results are presented to show the effectiveness of the proposed filter over single-model PHD filters.
机译:跟踪具有不确定目标动态的多个目标是一个难题,尤其是对于非线性状态和/或测量方程而言。对于多个目标,代表目标状态的全部后验分布是不切实际的。当目标数变化时,问题变得更加复杂,在这种情况下,状态空间本身的维数成为离散的随机变量。概率假设密度(PHD)过滤器仅传播完整目标后验的一阶统计矩(或PHD),已被证明是具有变化目标数量的多目标跟踪问题的有效计算解决方案。 PHD在状态空间任何区域中的积分给出了该区域中预期的目标数量。对于机动目标,检测和跟踪目标运动模型中的变化也变得很重要,但是当前的PHD实现并没有提供处理该问题的机制。通过为可能的运动模式假设多个模型,然后以与交互多模型(IMM)估计器中使用的相似的方式组合模式条件估计,可以解决目标动态模型的不确定性。本文提出了一种PHD滤波器的多模型实现,该模型通过使用顺序蒙特卡洛方法随时间传播的一组加权随机样本来近似PHD。最终的滤波器可以在多传感器多目标跟踪方案中处理具有不确定模型参数的非线性非高斯动力学。仿真结果表明,所提出的滤波器优于单模PHD滤波器。

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