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Hidden Markov Models for Radio Localization in Mixed LOS/NLOS Conditions

机译:混合LOS / NLOS条件下无线电定位的隐马尔可夫模型

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摘要

This paper deals with the problem of radio localization of moving terminals (MTs) for indoor applications with mixed line-of-sighton-line-of-sight (LOS/NLOS) conditions. To reduce false localizations, a grid-based Bayesian approach is proposed to jointly track the sequence of the positions and the sight conditions of the MT. This method is based on the assumption that both the MT position and the sight condition are Markov chains whose state is hidden in the received signals [hidden Markov model (HMM)]. The observations used for the HMM localization are obtained from the power-delay profile of the received signals. In ultrawideband (UWB) systems, the use of the whole power-delay profile, rather than the total power only, allows to reach higher localization accuracy, as the power-profile is a joint measurement of time of arrival and power. Numerical results show that the proposed HMM method improves the accuracy of localization with respect to conventional ranging methods, especially in mixed LOS/NLOS indoor environments
机译:本文针对混合视线/非视线(LOS / NLOS)条件的室内应用中移动终端(MT)的无线电定位问题。为了减少错误的定位,提出了一种基于网格的贝叶斯方法来联合跟踪MT的位置顺序和视觉条件。该方法基于以下假设:MT位置和视线条件均为马尔可夫链,其状态隐藏在接收信号中[隐马尔可夫模型(HMM)]。从接收信号的功率延迟曲线中获得用于HMM定位的观测值。在超宽带(UWB)系统中,由于功率分布是到达时间和功率的联合度量,因此使用整个功率延迟分布而不是仅使用总功率可以实现更高的定位精度。数值结果表明,与传统的测距方法相比,所提出的HMM方法提高了定位精度,特别是在混合LOS / NLOS室内环境中

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