实用的服务器端室内定位:处理基数和离群值挑战

Anuradha Ravi, Archan Misra
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引用次数: 0

摘要

尽管室内定位技术取得了许多进步,但实际实现健壮的设备无关的服务器端Wi-Fi定位(即,没有任何客户端设备的积极参与)仍然是一个挑战。这项工作利用基于经典雷达算法的可操作部署的基于Wi-Fi的室内定位基础设施来解决两个这样的实际挑战:(a)低基数,即只有相关AP生成足够的RSSI报告;(b)异常值识别,这需要明确识别连接到Wi-Fi网络但在指纹区域之外的移动客户端。为了解决低基数问题,我们提出了一种技术,该技术使用基数变化来划分固定行为的周期,然后用来自邻近ap的有用但显然“过时”的RSSI读数来增强RSSI报告。为了解决具有异常位置的客户端的过滤问题,我们提出了一个模型,该模型将加权路径损耗传播模型与指纹图谱的Voronoi镶嵌相结合,以定义RSSI读数的合适边界值。我们通过实验证明了这两种方法如何提高位置跟踪的稳定性和鲁棒性,从而提高总体占用估计的准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Practical Server-side Indoor Localization: Tackling Cardinality & Outlier Challenges
In spite of many advances in indoor localization techniques, practical implementation of robust device-independent, server-side Wi-Fi localization (i.e., without any active participation of client devices) remains a challenge. This work utilizes an operationally-deployed Wi-Fi based indoor location infrastructure, based on the classical RADAR algorithm, to tackle two such practical challenges: (a) Low cardinality, whereby only the associated AP generates sufficient RSSI reports and (b) outlier identification, which requires explicit identification of mobile clients that are attached to the Wi-Fi network but outside the fingerprinted region. To tackle the low-cardinality problem, we present a technique that uses cardinality changes to demarcate periods of stationary behaviour, and then augment the RSSI reports with useful but apparently “stale” RSSI readings from neighbouring APs. To tackle the filtering of clients with outlier locations, we propose a model that combines a weighted path-loss propagation model with a Voronoi tessellation of the fingerprint map to define suitable boundary values for RSSI readings. We experimentally show how these two approaches improve the stability and robustness of location tracking, and consequently, the accuracy of overall occupancy estimation.
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