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A Bernoulli Filter for Extended Target Tracking Using Random Matrices in a UWB Sensor Network

机译:超宽带传感器网络中使用随机矩阵进行扩展目标跟踪的伯努利滤波器

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摘要

In this paper, we propose a new tractable Bernoulli filter based on the random matrix framework to track an extended target in an ultra-wideband (UWB) sensor network. The resulting filter jointly tracks the kinematic and shape parameters of the target and is called the extended target Gaussian inverse Wishart Bernoulli (ET-GIW-Ber) filter. Closed form expressions for the ET-GIW-Ber filter recursions are presented. A clustering step is inserted into the measurement update stage in order to have a computationally tractable filter. In addition, a new method that is consistent with the applied clustering method is embedded into the filter recursions in order to adaptively estimate the time-varying number of measurements of the extended target. The simulation results demonstrate the robust and effective performance of the proposed filter. Furthermore, real data collected from a UWB sensor network are used to assess the performance of the proposed filter. It is shown that the proposed filter yields a very promising performance in estimation of the kinematic and shape parameters of the target.
机译:在本文中,我们提出了一种基于随机矩阵框架的新的可处理伯努利滤波器,用于跟踪超宽带(UWB)传感器网络中的扩展目标。所得的滤波器共同跟踪目标的运动学和形状参数,并称为扩展目标高斯逆Wishart Bernoulli(ET-GIW-Ber)滤波器。给出了ET-GIW-Ber过滤器递归的封闭式表达式。聚类步骤被插入到测量更新阶段,以具有可计算处理的滤波器。另外,与应用的聚类方法一致的新方法被嵌入到滤波器递归中,以便自适应地估计扩展目标的测量的时变数量。仿真结果证明了所提出滤波器的鲁棒和有效性能。此外,从UWB传感器网络收集的真实数据用于评估所提出的滤波器的性能。结果表明,提出的滤波器在估计目标的运动学和形状参数方面具有非常有前途的性能。

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