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Robust indoor localization based on hybrid Bayesian graphical models

机译:基于混合贝叶斯图形模型的稳健室内定位

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In this paper, we study the problem of accurately estimating the location of indoor wireless devices which, due to its vast application areas, has continued to generate much interest both in the academia and industry. Specifically, we consider the location estimation problem and develop non-hybrid Bayesian location estimators for when received signal strength (RSS) and/or time of arrival (TOA) measurements between the target node (TN) and designated beacon nodes (BNs) in the network are obtainable. However, RSS- and TOA-based location estimators can be inaccurate when the RF-characteristics are not stable and time synchronization between the TN and BNs is not set up properly, respectively. To mitigate the disadvantages of these two location estimators, we propose the hybrid Bayesian location estimators. We show, through the results of extensive simulation experiments conducted that in comparison with the non-hybrid estimators, the hybrid Bayesian location estimators are more robust in the localization environment where RSS/TOA measurement precision varies.
机译:在本文中,我们研究了准确估计室内无线设备位置的问题,由于室内无线设备的广泛应用,在室内和无线领域都引起了学术界和工业界的极大兴趣。具体而言,我们考虑位置估计问题,并针对目标节点(TN)与指定信标节点(BN)之间的接收信号强度(RSS)和/或到达时间(TOA)测量值何时开发非混合贝叶斯位置估计器。网络是可获得的。但是,当RF特性不稳定且TN和BN之间的时间同步设置不正确时,基于RSS和TOA的位置估计器可能会不准确。为了减轻这两个位置估计器的缺点,我们提出了混合贝叶斯位置估计器。我们通过进行大量模拟实验的结果表明,与非混合估计器相比,混合贝叶斯位置估计器在RSS / TOA测量精度变化的本地化环境中更为健壮。

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