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Indoor Localization with Wi-Fi Fine Timing Measurements Through Range Filtering and Fingerprinting Methods

机译:通过范围过滤和指纹识别方法通过Wi-Fi精细定时进行室内定位

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Wi-Fi technology has been thoroughly studied for indoor localization. This is mainly due to the existing infrastructure inside buildings for wireless connectivity and the uptake of mobile devices where Wi-Fi location-dependent measurements, e.g., timing and signal strength readings, are readily available to determine the user location. To enhance the accuracy of Wi-Fi solutions, a two-way ranging approach was recently introduced into the IEEE 802.11 standard for the provision of Fine Timing Measurements (FTM). Such measurements enable a more reliable estimation of the distance between FTM-capable Wi-Fi access points and user-carried devices; thus, promising to deliver meter-level location accuracy. In this work, we propose two novel solutions that leverage FTM and follow different approaches, which have not been investigated in the literature. The first solution is based on an Unscented Kalman Filter (UKF) algorithm to process FTM ranging measurements, while the second solution relies on an FTM fingerprinting method. Experimental results using real-life data collected in a typical office environment demonstrate the effectiveness of both solutions, while the FTM fingerprinting approach demonstrated 1.12m and 2.13m localization errors for the 67-th and 95-th percentiles, respectively. This is a two to three times improvement over the traditional Wi-Fi signal strength fingerprinting approach and the UKF ranging algorithm.
机译:对于室内定位,已经对Wi-Fi技术进行了深入研究。这主要归因于建筑物内用于无线连接的现有基础架构以及移动设备的普及,在这些设备中,随处可进行Wi-Fi位置相关的测量(例如,时序和信号强度读数)来确定用户位置。为了提高Wi-Fi解决方案的准确性,最近在IEEE 802.11标准中引入了一种双向测距方法,以提供精细定时测量(FTM)。这样的测量可以更可靠地估计支持FTM的Wi-Fi接入点与用户携带的设备之间的距离;因此,有望提供仪表级的定位精度。在这项工作中,我们提出了两种利用FTM并遵循不同方法的新颖解决方案,而文献中尚未对此进行研究。第一种解决方案基于无味卡尔曼滤波器(UKF)算法来处理FTM测距测量,而第二种解决方案则依赖于FTM指纹识别方法。使用在典型办公环境中收集的真实数据进行的实验结果证明了这两种解决方案的有效性,而FTM指纹方法分别证明了第67个和第95个百分点的定位误差为1.12m和2.13m。这是传统Wi-Fi信号强度指纹识别方法和UKF测距算法的两到三倍的改进。

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