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Amp-Phi: A CSI-Based Indoor Positioning System

机译:Amp-Phi:基于CSI的室内定位系统

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摘要

With rapid growth in the demand of location-based services (LBS) in indoor environments, localizations based on fingerprinting have attracted significant interest due to their convenience. Until now, most such methods were based on received signal strength indicator (RSSI), which is vulnerable to non-line-of-sight (NLOS). In order to realize high-precision indoor positioning, we propose a channel state information (CSI)-based Amp-Phi indoor-positioning system which exploits the amplitude and phase information of CSI at the same time to establish a fingerprinting database. Firstly, according to the characteristics of the raw CSI information collected at different positions under different environments, we build an NLOS mitigation model and a phase error mitigation model, respectively, to process the amplitude and phase of CSI. Secondly, we analyze the statistical characteristics of CSI carefully, including maximum, minimum, mean and variance. After being processed with the models, the CSI features can be used to distinguish different positions clearly, which provides a theoretical basis for the indoor positioning based on fingerprinting. Finally, we build a fingerprinting database based on the features of amplitude and phase, realize to locate the targets position with the K-Nearest Neighbor (KNN) matching algorithm. Experiments implemented in different situations show that Amp-Pi system is reliable and robust, whose position accuracy is higher than that of PhaseFi, Horus and machine learning (ML) systems under the same condition. It can be used in many scenarios, such as the localization of robots in our daily life, by doctors or patients in the hospital, for people localization in large supermarkets or museums and so on.
机译:随着室内环境中基于位置的服务(LBS)需求的快速增长,基于指纹的本地化由于其便利性而引起了人们的极大兴趣。直到现在,大多数此类方法都是基于接收信号强度指示器(RSSI),它很容易受到非视距(NLOS)的影响。为了实现高精度的室内定位,我们提出了一种基于信道状态信息(CSI)的Amp-Phi室内定位系统,该系统同时利用CSI的幅度和相位信息来建立指纹数据库。首先,根据不同环境下在不同位置采集到的原始CSI信息的特点,分别建立了NLOS缓解模型和相位误差缓解模型,对CSI的幅度和相位进行处理。其次,我们仔细分析CSI的统计特征,包括最大值,最小值,均值和方差。在对模型进行处理后,CSI特征可以用于清晰地区分不同位置,这为基于指纹的室内定位提供了理论基础。最后,基于幅度和相位的特征,建立指纹数据库,利用K最近邻(KNN)匹配算法实现对目标位置的定位。在不同情况下进行的实验表明,Amp-Pi系统可靠且健壮,在相同条件下其位置精度高于PhaseFi,Horus和机器学习(ML)系统。它可以在许多情况下使用,例如我们日常生活中机器人的定位,医院的医生或患者的定位,大型超市或博物馆中的人的定位等。

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