RTS辅助手机定位:利用Extra Mile缓解指纹空间拼图问题

Chao Song, Jie Wu, Li Lu, Ming Liu
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引用次数: 2

摘要

随着基于位置服务(lbs)技术的发展,基于移动电话的非gps定位技术越来越受到学术界和业界的关注。大多数现有的定位方法都利用信号指纹作为定位确定的度量。然而,最具挑战性的问题之一是建立指纹图谱的不确定指纹问题,称为拼图问题。在本文中,为了获得更准确的移动定位指纹,我们研究了来自连接的蜂窝塔的接收信号强度指示(RSSI)随时间沿移动用户轨迹的变化,称为RSSI时间序列(RTS)。因此,我们提出一种RTS辅助定位系统(RALS),这是一种无gps的户外移动定位系统。对于本地化,通过人群感知的方式,在后端服务器上构建RTS地图,该后端服务器由从手机中获取的RTS组成。拼图问题减慢了地图的构建速度,仅由具有短距离轨迹的非故意用户进行构建,并影响了其效率。为了加速地图的构建,我们建议以比普通用户更高的成本雇佣一些具有额外长距离轨迹的高级意向用户,这被称为额外里程。扩展实验验证了该定位系统的有效性。
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RTS Assisted Mobile Localization: Mitigating Jigsaw Puzzle Problem of Fingerprint Space with Extra Mile
With the development of Location Based Services (LBSs), both academic researchers and industries have paid more attention to GPS-less mobile localization on mobile phones. The majority of the existing localization approaches have utilized signal-fingerprint as a metric for location determinations. However, one of the most challenging issues is the problem of uncertain fingerprints for building the fingerprint map, termed as the jigsaw puzzle problem. In this paper, for more accurate fingerprints of the mobile localization, we investigate the changes of Received Signal Strength Indication (RSSI) from the connected cell-towers over time along the mobile users' trajectories, termed as RSSI Time Series (RTS). Thus, we propose an RTS Assisted Localization System (RALS), which is a GPS-less outdoor mobile localization system. For localization, an RTS map is built on the back-end server, which consists of RTS harvested from the mobile phones, by the way of crowd sensing. The jigsaw puzzle problem slows down the map construction solely by the regular unintentional users with short-distance trajectories, and affects its efficiency. To speed up the map construction, we propose employing a few advanced intentional users with additional long-distance trajectories, at a higher cost than the regular user, this is called extra mile. Our extensional experiments verify the effectiveness of our localization system.
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