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A Robust Filter for TOA Based Indoor Localization in Mixed LOS/NLOS Environment

机译:混合LOS / NLOS环境中基于托的室内定位的强大滤波器

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One of the major problems in TOA (Time of Arrival) based localization is the presence of non-line-of-sight (NLOS), which is caused by intermittent blockage of the signal propagation path between the transmitter and the receiver. The NLOS measurement can be isolated with varies distribution tests or mitigated with time domain smoothing. This paper presents a robust extended Kalman filter (RKF) that adapting NLOS with the variance inflation method and proposes a new robustness performance indicator named bias mitigation ratio (BMR). The RKF performs a normalized residual test to identify the NLOS measurement and adapting the identified NLOS measurement with the variance inflation method. This approach is computationally efficient and does not require any prior information about NLOS distribution. The simulation results indicate that the RKF can mitigate the effect of NLOS efficiently and achieves 0.5m positioning accuracy by integrating Wi-Fi signal and pedestrian dead reckoning (PDR). The robustness of RKF is examined by BMR. BMR enables to analyze the robustness of RKF quantitatively, which reveals the performance improvement of RKF subject to the extended Kalman filter (EKF).
机译:TOA(到达时间)本地化的一个主要问题是存在非视线(NLOS),这是由发射器和接收器之间的信号传播路径的间歇堵塞引起的。可以使用各种分布测试隔离NLOS测量或随着时域平滑减轻的。本文介绍了一种强大的扩展卡尔曼滤波器(RKF),其采用方差充气方法调整NLO,提出了一种名为偏置缓解率(BMR)的新的鲁棒性能指标。 RKF执行标准化的残余测试以识别NLOS测量并使用方差充气方法调整所识别的NLO测量。这种方法是计算上高效的,不需要关于NLOS分发的任何先前信息。仿真结果表明,RKF可以有效地减轻NLO的效果,并通过整合Wi-Fi信号和行人死亡(PDR)来实现0.5M定位精度。 BMR检查RKF的稳健性。 BMR可以定量分析RKF的稳健性,这揭示了RKF对扩展卡尔曼滤波器(EKF)的性能改善。

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