Indoor localization without the pain

Krishna Chintalapudi, A. Iyer, V. Padmanabhan
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引用次数: 1013

Abstract

While WiFi-based indoor localization is attractive, the need for a significant degree of pre-deployment effort is a key challenge. In this paper, we ask the question: can we perform indoor localization with no pre-deployment effort? Our setting is an indoor space, such as an office building or a mall, with WiFi coverage but where we do not assume knowledge of the physical layout, including the placement of the APs. Users carrying WiFi-enabled devices such as smartphones traverse this space in normal course. The mobile devices record Received Signal Strength (RSS) measurements corresponding to APs in their view at various (unknown) locations and report these to a localization server. Occasionally, a mobile device will also obtain and report a location fix, say by obtaining a GPS lock at the entrance or near a window. The centerpiece of our work is the EZ Localization algorithm, which runs on the localization server. The key intuition is that all of the observations reported to the server, even the many from unknown locations, are constrained by the physics of wireless propagation. EZ models these constraints and then uses a genetic algorithm to solve them. The results from our deployment in two different buildings are promising. Despite the absence of any explicit pre-deployment calibration, EZ yields a median localization error of 2m and 7m, respectively, in a small building and a large building, which is only somewhat worse than the 0.7m and 4m yielded by the best-performing but calibration-intensive Horus scheme [29] from prior work.
室内定位无痛
虽然基于wifi的室内定位很有吸引力,但需要大量的预部署工作是一个关键挑战。在本文中,我们提出了一个问题:我们是否可以在没有预部署工作的情况下进行室内定位?我们的设置是一个室内空间,如办公楼或商场,有WiFi覆盖,但我们不假设了解物理布局,包括ap的位置。携带wifi设备(如智能手机)的用户在正常情况下会穿过这个空间。移动设备记录其视图中不同(未知)位置的ap对应的接收信号强度(RSS)测量值,并将其报告给本地化服务器。偶尔,移动设备也会获取并报告定位定位,比如在入口处或窗户附近获得GPS锁定。我们工作的核心是EZ Localization算法,它运行在本地化服务器上。关键的直觉是,所有报告给服务器的观测结果,甚至许多来自未知位置的观测结果,都受到无线传播物理的限制。EZ对这些约束进行建模,然后使用遗传算法来求解它们。我们在两座不同的建筑中部署的结果很有希望。尽管没有任何明确的部署前校准,EZ在小型建筑和大型建筑中的定位误差中值分别为2米和7米,仅略低于先前工作中性能最好但校准密集的Horus方案[29]所产生的0.7米和4米。
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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