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一种基于众包的稳健室内定位系统。

A Robust Crowdsourcing-Based Indoor Localization System.

作者信息

Zhou Baoding, Li Qingquan, Mao Qingzhou, Tu Wei

机构信息

Shenzhen Key Laboratory of Spatial Smart Sensing and Services, Shenzhen University, Shenzhen 518060, China.

Key Laboratory for Geo-Environment Monitoring of Coastal Zone of the National Administration of Surveying, Mapping and Geoinformation, Shenzhen University, Shenzhen 518060, China.

出版信息

Sensors (Basel). 2017 Apr 14;17(4):864. doi: 10.3390/s17040864.

Abstract

WiFi fingerprinting-based indoor localization has been widely used due to its simplicity and can be implemented on the smartphones. The major drawback of WiFi fingerprinting is that the radio map construction is very labor-intensive and time-consuming. Another drawback of WiFi fingerprinting is the Received Signal Strength (RSS) variance problem, caused by environmental changes and device diversity. RSS variance severely degrades the localization accuracy. In this paper, we propose a robust crowdsourcing-based indoor localization system (RCILS). RCILS can automatically construct the radio map using crowdsourcing data collected by smartphones. RCILS abstracts the indoor map as the semantics graph in which the edges are the possible user paths and the vertexes are the location where users may take special activities. RCILS extracts the activity sequence contained in the trajectories by activity detection and pedestrian dead-reckoning. Based on the semantics graph and activity sequence, crowdsourcing trajectories can be located and a radio map is constructed based on the localization results. For the RSS variance problem, RCILS uses the trajectory fingerprint model for indoor localization. During online localization, RCILS obtains an RSS sequence and realizes localization by matching the RSS sequence with the radio map. To evaluate RCILS, we apply RCILS in an office building. Experiment results demonstrate the efficiency and robustness of RCILS.

摘要

基于WiFi指纹的室内定位因其简单性而被广泛使用,并且可以在智能手机上实现。WiFi指纹的主要缺点是无线电地图构建非常耗费人力且耗时。WiFi指纹的另一个缺点是接收信号强度(RSS)变化问题,这是由环境变化和设备多样性引起的。RSS变化严重降低了定位精度。在本文中,我们提出了一种基于众包的健壮室内定位系统(RCILS)。RCILS可以使用智能手机收集的众包数据自动构建无线电地图。RCILS将室内地图抽象为语义图,其中边是可能的用户路径,顶点是用户可能进行特殊活动的位置。RCILS通过活动检测和行人航位推算提取轨迹中包含的活动序列。基于语义图和活动序列,可以定位众包轨迹,并根据定位结果构建无线电地图。对于RSS变化问题,RCILS使用轨迹指纹模型进行室内定位。在在线定位期间,RCILS获得一个RSS序列,并通过将该RSS序列与无线电地图进行匹配来实现定位。为了评估RCILS,我们将RCILS应用于一座办公楼。实验结果证明了RCILS的效率和健壮性。

https://cdn.ncbi.nlm.nih.gov/pmc/blobs/804c/5424741/abf96c5e1a79/sensors-17-00864-g001.jpg

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