Integrated location fingerprinting and physical neighborhood for WLAN probabilistic localization

Mu Zhou, Qiao Zhang, Z. Tian, Feng Qiu, Qi Wu
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引用次数: 11

Abstract

For the purpose of utilizing physical neighborhood relations of adjacent reference points (ARPs) in radio-map, a new approach by constructing both location fingerprinting database and physical neighborhood database in off-line phase is proposed to enhance the accuracy of wireless local area network (WLAN) probabilistic localization. In the on-line phase, we first rely on Bayesian inference to find the most adjacent points (MAPs) with respect to each testing point (TP). Then, based on the physical neighborhood database, we obtain the physical adjacent points (PAPs) corresponding to these MAPs. In the set of MAPs and PAPs, we choose the feature points (FPs) for the second Bayesian inference. Finally, we locate the TP at the geometric center of the chosen FPs which has the maximum posterior probabilities.
集成位置指纹和物理邻域的WLAN概率定位
的目的是利用物理邻里关系radio-map相邻参考点(ARPs)的一种新方法通过构造两个位置指纹数据库和物理社区数据库在离线阶段提出了提高无线局域网(WLAN)的准确性概率本地化。在在线阶段,我们首先依靠贝叶斯推理来找到相对于每个测试点(TP)的最邻近点(map)。然后,基于物理邻域数据库,得到这些map对应的物理邻域点(pap)。在map和pap集合中,我们选择用于第二次贝叶斯推理的特征点(FPs)。最后,我们将TP定位在具有最大后验概率的所选fp的几何中心。
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