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首页> 外文期刊>Communications Letters, IEEE >RBGF: Recursively Bounded Grid-Based Filter for Indoor Position Tracking Using Wireless Networks
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RBGF: Recursively Bounded Grid-Based Filter for Indoor Position Tracking Using Wireless Networks

机译:RBGF:使用无线网络进行室内位置跟踪的基于递归有界网格的滤波器

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摘要

Numerical methods for recursive Bayesian estimation are widespread in position tracking of robotics. However, challenges arise to indoor network positioning due to the limited processing power and inaccurate ranging measurements of low-end network nodes. For efficient and robust indoor position tracking, we incorporate a recursive bound to a grid-based filter namely RBGF, which approximates the posterior of the target's position by a grid of weighted cells over a bounded state-space. The state-space (the set in which the state samples can take) is recursively confined based on both the previous estimation and current measurements, therefore, the grid cells converge to the true state and the effect of non-line-of-sight (NLOS) measurements is bounded. Experimental results by an indoor sensor test-bed demonstrate RBGF achieves the average and the worst-case of positioning errors about 1 meter and 3 meters, respectively on condition that the average ranging error is about 3 meters.
机译:递归贝叶斯估计的数值方法广泛应用于机器人的位置跟踪。然而,由于有限的处理能力和低端网络节点的测距测量不准确,室内网络定位面临挑战。为了进行有效且鲁棒的室内位置跟踪,我们将递归约束与基于网格的过滤器RBGF结合,该过滤器通过有界状态空间上的加权单元格网格来近似目标位置的后验。基于先前的估计和当前测量值,递归地限制状态空间(可以收集状态样本的集合),因此,网格单元会收敛到真实状态和非视距的影响( NLOS)测量是有界的。室内传感器测试台的实验结果表明,在平均测距误差约为3米的情况下,RBGF分别实现了大约1米和3米的平均和最差的定位误差。

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