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Tracking With Sparse and Correlated Measurements via a Shrinkage-Based Particle Filter

机译:通过基于收缩的粒子滤波器跟踪稀疏和相关测量

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摘要

This paper presents a shrinkage-based particle filter method for tracking a mobile user in wireless networks. The proposed method estimates the shadowing noise covariance matrix using the shrinkage technique. The particle filter is designed with the estimated covariance matrix to improve the tracking performance. The shrinkage-based particle filter can be applied in a number of applications for navigation, tracking, and localization when the available sensor measurements are correlated and sparse. The performance of the shrinkage-based particle filter is compared with the posterior Cramer-Rao lower bound, which is also derived in this paper. The advantages of the proposed shrinkage-based particle filter approach are demonstrated via simulation and experimental results.
机译:本文提出了一种基于收缩的粒子滤波方法,用于跟踪无线网络中的移动用户。所提出的方法使用收缩技术来估计阴影噪声协方差矩阵。粒子滤波器设计有估计的协方差矩阵,以提高跟踪性能。当可用传感器测量值相关且稀疏时,基于收缩的粒子过滤器可应用于许多应用中,以进行导航,跟踪和定位。将基于收缩的粒子过滤器的性能与后Cramer-Rao下界进行了比较,后者也从本文得出。通过仿真和实验结果证明了所提出的基于收缩的粒子过滤方法的优势。

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