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Robust MT Tracking Based on M-Estimation and Interacting Multiple Model Algorithm

机译:基于运动估计和交互多模型算法的鲁棒MT跟踪

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摘要

An algorithm for mobile terminal (MT) tracking based on time-of-arrival measurements in non-line-of-sight (NLOS) environments where NLOS measurements are modeled as positive outliers is proposed. Standard filters such as the extended Kalman filter (EKF) fail because they are sensitive to outliers. In contrast, a robust EKF (REKF) always trades off efficiency in line-of-sight (LOS) versus robustness in NLOS environments and it is not possible to achieve both with the same filter. Instead, we propose to use two filters in parallel in a multiple model framework. An EKF yields high precision in LOS environments whereas an REKF provides robust state estimates when NLOS propagation comes into play. The state estimates of either filters are combined automatically based on the confidence we have for the underlying situation. It is shown via numerical studies that the proposed algorithm yields positioning accuracy similar to the EKF in LOS environments and even significantly outperforms the REKF in NLOS environments.
机译:提出了一种基于非视距(NLOS)环境中到达时间测量值的移动终端(MT)跟踪算法,其中NLOS测量值被建模为正离群值。诸如扩展卡尔曼滤波器(EKF)之类的标准滤波器会失败,因为它们对异常值很敏感。相反,健壮的EKF(REKF)总是要权衡视线(LOS)的效率与NLOS环境中的稳健性,并且不可能用同一滤波器实现这两者。相反,我们建议在多模型框架中并行使用两个过滤器。当NLOS传播起作用时,EKF在LOS环境中可产生高精度,而REKF可提供可靠的状态估计。根据对潜在情况的置信度,可以自动组合两个过滤器的状态估算值。通过数值研究表明,所提出的算法在LOS环境下产生的定位精度与EKF相似,甚至在NLOS环境下甚至明显优于REKF。

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