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Unsupervised Indoor Localization Based on Smartphone Sensors iBeacon and Wi-Fi

机译:基于智能手机传感器iBeacon和Wi-Fi的无监督室内定位

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摘要

In this paper, we propose UILoc, an unsupervised indoor localization scheme that uses a combination of smartphone sensors, iBeacons and Wi-Fi fingerprints for reliable and accurate indoor localization with zero labor cost. Firstly, compared with the fingerprint-based method, the UILoc system can build a fingerprint database automatically without any site survey and the database will be applied in the fingerprint localization algorithm. Secondly, since the initial position is vital to the system, UILoc will provide the basic location estimation through the pedestrian dead reckoning (PDR) method. To provide accurate initial localization, this paper proposes an initial localization module, a weighted fusion algorithm combined with a k-nearest neighbors (KNN) algorithm and a least squares algorithm. In UILoc, we have also designed a reliable model to reduce the landmark correction error. Experimental results show that the UILoc can provide accurate positioning, the average localization error is about 1.1 m in the steady state, and the maximum error is 2.77 m.
机译:在本文中,我们提出UILoc,这是一种无监督的室内定位方案,该方案结合了智能手机传感器,iBeacons和Wi-Fi指纹,可实现可靠,准确的室内定位,而人工成本却为零。首先,与基于指纹的方法相比,UILoc系统可以自动构建指纹数据库,而无需进行任何现场调查,并且该数据库将用于指纹定位算法中。其次,由于初始位置对系统至关重要,因此,UILoc将通过行人航位推算(PDR)方法提供基本位置估计。为了提供准确的初始定位,本文提出了一个初始定位模块,结合了k近邻(KNN)算法和最小二乘算法的加权融合算法。在UILoc中,我们还设计了一个可靠的模型来减少界标校正误差。实验结果表明,UILoc可以提供精确的定位,稳态时的平均定位误差约为1.1 m,最大误差为2.77 m。

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