GeoF: A geometric Bayesian filter for indoor position tracking in mixed LOS/NLOS conditions

Yuan Yang, Yubin Zhao, M. Kyas
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引用次数: 4

Abstract

A large number of indoor positioning systems are based on sensor networks or WLAN ranging techniques with a filter to remove the positioning uncertainty coming from the ranging errors. Bayesian filter has emerged as a useful approach for sequential position estimation, which generally resorts to a numerical solution due to the nonlinearity and the non-Gaussian nature of mobile positioning. The accuracy of numerical Bayesian approaches depends mostly on two factors: the sample density of the state approximation and how closely the state transition model mimics the true motion of each iteration. However, dense samples typically cause high computation and memory complexity; worse, an improper transition model can lead to the problem of filter divergence. We hold that in the presence of at least one line-of-sight (LOS) range, the state space can be effectively confined by the geometries of ranging measurements. Therefore, this paper proposes a geometric filter (GeoF) learning the transition model by the geometry of the most recent TOA ranges. The key idea of GeoF is to adaptively generate the sample set of the state based on the intersections of every pair-wise range circles. Therefore, our approach employs a very small number of samples, causing much smaller implementation and computation overhead compared to general numerical Bayesian approaches. The experiment results of mobile robot localization in typical LOS/NLOS mixed scenarios show that GeoF yields better performance over extended Kalman filter, generic particle filter and grid-based filter.
GeoF:一种用于LOS/NLOS混合条件下室内位置跟踪的几何贝叶斯滤波器
大量的室内定位系统是基于传感器网络或无线局域网的测距技术,通过滤波来消除测距误差带来的定位不确定性。由于移动定位的非线性和非高斯特性,贝叶斯滤波已成为一种有用的序列位置估计方法,通常采用数值解。数值贝叶斯方法的准确性主要取决于两个因素:状态近似的样本密度和状态转移模型对每次迭代的真实运动的模拟程度。然而,密集样本通常会导致较高的计算和内存复杂度;更糟糕的是,一个不合适的过渡模型会导致滤波器发散问题。我们认为,在至少一个视距(LOS)范围存在的情况下,状态空间可以被距离测量的几何形状有效地约束。因此,本文提出了一种几何滤波器(GeoF),通过最近TOA范围的几何形状来学习过渡模型。GeoF的关键思想是根据每一对距离圆的交点自适应生成状态样本集。因此,我们的方法使用的样本数量非常少,与一般的数值贝叶斯方法相比,实现和计算开销要小得多。在典型LOS/NLOS混合场景下的移动机器人定位实验结果表明,GeoF比扩展卡尔曼滤波、通用粒子滤波和基于网格的滤波具有更好的定位性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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