Improving sparse organic WiFi localization with inertial sensors

Johannes Schmid, Tobias Gädeke, Dorothy W. Curtis, J. Ledlie
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引用次数: 7

Abstract

Personal location discovery and navigation within buildings has become an important research topic in the last years. One method to determine one's current position based on mobile-devices is to compare the set of available WiFi access points (APs), i.e. the fingerprint of a given space, to a previously collected database. In this context, this paper addresses the inherent problem of such systems that this fingerprint database needs to be established beforehand. Thus, situations can occur where a building is only partially represented in the database and localization can only be provided in a subset of the spaces of the building. This problem occurs especially in crowd-sourcing (organic) approaches where users consecutively contribute location-binds. In these situations an additional system is needed to provide localization. We present a first study on the fusion of pedestrian dead reckoning (PDR) from inertial sensors with position estimates from a WiFi localization system. We outline a possible design of particle filter and analyze its behavior on experimental data. We conclude that the outlined method can help to improve WiFi localization and is especially useful within crowd-sourcing environments.
利用惯性传感器改进稀疏有机WiFi定位
近年来,建筑内部的个人位置发现与导航成为一个重要的研究课题。根据移动设备确定当前位置的一种方法是将可用的WiFi接入点(ap)集合(即给定空间的指纹)与先前收集的数据库进行比较。在此背景下,本文解决了此类系统需要事先建立指纹数据库的固有问题。因此,可能会出现建筑物在数据库中仅部分表示,并且只能在建筑物空间的子集中提供本地化的情况。这个问题尤其出现在用户连续贡献位置绑定的众包(有机)方法中。在这些情况下,需要一个额外的系统来提供本地化。我们首次研究了来自惯性传感器的行人航位推算(PDR)与来自WiFi定位系统的位置估计的融合。我们概述了一种可能的粒子滤波器设计,并在实验数据上分析了它的性能。我们的结论是,概述的方法可以帮助提高WiFi定位,并在众包环境中特别有用。
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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