CIMLoc:面向本地化的众包室内数字地图构建系统

Xiuming Zhang, Yunye Jin, H. Tan, Wee-Seng Soh
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引用次数: 39

摘要

室内地图作为许多室内定位和导航系统的关键先决条件,有时无法获得。由于室内地图数据库的缺乏和手工构建室内地图的高成本,需要一种廉价、高效的方法来动态构建室内地图。无处不在的配备传感器的移动设备使我们能够众包用户轨迹,从而可以以低成本自动构建室内数字地图。与其他众包数据一样,收集到的用户轨迹往往存在噪声,保真度较低,这给地图的准确构建带来了挑战。为了解决这一问题,我们提出了一种用于定位的众包室内地图构建系统CIMLoc。该系统使用从不同移动设备收集的真实世界轨迹进行评估。我们通过计算构造地图和真实地图的定位误差来量化构造误差。实验结果表明,CIMLoc能够构建精确的地图,显著提高了定位结果。我们认为CIMLoc为无法获得室内地图的室内定位问题提供了有效的解决方案。
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CIMLoc: A crowdsourcing indoor digital map construction system for localization
Indoor maps, as crucial prerequisites for many indoor localization and navigation systems, are sometimes inaccessible. The absence of an indoor map database and the high cost of manually constructing an indoor map produce a need for an inexpensive and efficient way to dynamically construct indoor maps. The ubiquity of sensor-equipped mobile devices enables us to crowdsource user trajectories, out of which indoor digital maps can be automatically constructed at low costs. Similar to other crowdsourced data, the collected user trajectories are often noisy and of low fidelity, which poses a challenge to the accurate map construction. To alleviate this problem, we propose CIMLoc - a crowdsourcing indoor map construction system for localization. The system is evaluated with real-world trajectories collected from different mobile devices. We quantify the construction errors by computing the localization errors achieved with the constructed map and the real map. Experimental results reveal that CIMLoc is able to construct accurate maps that significantly improve localization results. We believe that CIMLoc provides an effective solution to the indoor localization problems where the indoor maps are unavailable.
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