RSSI-Based Passive Localization in the Wild, At Streetscape Scales

Fanchen Bao;Stepan Mazokha;Jason O. Hallstrom
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Abstract

Pedestrian mobility data is valuable to data-driven decision-making for city planning, emergency response, and more. Thanks to the ubiquity of Wi–Fi-enabled devices, pedestrians may be colocalized with their devices using Received Signal Strength Indicator (RSSI) measurements from Wi–Fi probe requests, passively and privately. While shown to be feasible in controlled outdoor environments, few have used this method outdoors in production environments. In this article, we continue the work on the Mobility Intelligence System (MobIntel) and apply RSSI-based passive localization on data collected from the 500 and 400 blocks of Clematis Street in West Palm Beach, FL. We present an open-source dataset used in our study, which, to the best of our knowledge, is the first public Wi–Fi RSSI dataset for localization purposes in an outdoor environment. We then introduce a three-stage localization model that first classifies a test sample to a city block, followed by a sidewalk within the city block, and ends with an estimation of x-coordinate within the sidewalk. While we formulate the problem and validate our solution within an outdoor context, the work is equally applicable to large indoor environments. It achieves a mean localization error of 3.16 and 4.21 m, with 73% and 66% chance of reaching an error $\le$4 m, and 17% and 21% of the data discarded due to poor quality in the 500 and 400 block, respectively. We also highlight the challenges when dealing with real-world RSSI data, analyze the model's tolerance to missing data, and propose solutions to improve localization performance.
街景尺度下基于rssi的野外被动定位
行人移动数据对于城市规划、应急响应等方面的数据驱动决策非常有价值。由于支持Wi-Fi的设备无处不在,行人可以使用来自Wi-Fi探测请求的接收信号强度指示器(RSSI)测量,被动地和私下地与他们的设备进行定位。虽然在受控的室外环境中是可行的,但很少有人在室外生产环境中使用这种方法。在本文中,我们继续在移动智能系统(MobIntel)上的工作,并将基于RSSI的被动定位应用于从佛罗里达州西棕榈滩的Clematis街的500和400个街区收集的数据上。我们提出了一个在我们的研究中使用的开源数据集,据我们所知,这是第一个用于户外环境中定位目的的公共Wi-Fi RSSI数据集。然后,我们引入了一个三阶段定位模型,首先将测试样本分类到一个城市街区,然后是城市街区内的人行道,最后以人行道内的x坐标估计结束。虽然我们在室外环境中制定问题并验证我们的解决方案,但这项工作同样适用于大型室内环境。它的平均定位误差为3.16 m和4.21 m,达到误差$ $ 400 m的概率分别为73%和66%,500和400块中由于质量差而丢弃的数据分别为17%和21%。我们还强调了在处理现实世界的RSSI数据时所面临的挑战,分析了模型对丢失数据的容忍度,并提出了改进定位性能的解决方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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