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GraphLoc: a graph-based method for indoor subarea localization with zero-configuration

机译:GraphLoc:基于图的零配置室内子区域定位方法

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摘要

Indoor subarea localization can facilitate numerous location-based services, such as indoor navigation, indoor POI recommendation and mobile advertising. Most existing subarea localization approaches suffer from two bottlenecks, one is fingerprint-based methods require time-consuming site survey and another is triangulation-based methods are lack of scalability. In this paper, we propose a graph-based method for indoor subarea localization with zero-configuration. Zero-configuration means the proposed method can be directly employed in indoor environment without time-consuming site survey or pre-installing additional infrastructure. To accomplish this, we first utilize two unexploited characteristics of WiFi radio signal strength to generate logical floor graph and then formulate the problem of constructing fingerprint map as a graph isomorphism problem between logical floor graph and physical floor graph. In online localization phase, a Bayesian-based approach is utilized to estimate the unknown subarea. The proposed method has been implemented in a real-world shopping mall, and extensive experimental results show that the proposed method can achieve competitive performance comparing with existing methods.
机译:室内分区的本地化可以促进众多基于位置的服务,例如室内导航,室内POI推荐和移动广告。大多数现有的分区定位方法都存在两个瓶颈,一种是基于指纹的方法需要耗时的现场调查,另一种是基于三角剖分的方法缺乏可伸缩性。在本文中,我们提出了一种基于图的零配置室内分区定位方法。零配置意味着所提出的方法可以直接在室内环境中使用,而无需进行费时的现场调查或预先安装其他基础设施。为此,我们首先利用WiFi无线电信号强度的两个未利用的特征来生成逻辑楼层图,然后将构建指纹图的问题表述为逻辑楼层图和物理楼层图之间的图同构问题。在在线本地化阶段,基于贝叶斯的方法被用来估计未知分区。所提出的方法已经在现实世界的购物中心中实现,大量的实验结果表明,所提出的方法与现有方法相比具有竞争优势。

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