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In Search of Indoor Dense Regions: An Approach Using Indoor Positioning Data

机译:寻找室内密集区域:一种使用室内定位数据的方法

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As people spend significant parts of daily lives indoors, it is useful and important to measure indoor densities and find the dense regions in many indoor scenarios like space management and security control. In this paper, we propose a data-driven approach that finds top-k indoor dense regions by using indoor positioning data. Such data is obtained by indoor positioning systems working at a relatively low frequency, and the reported locations in the data are discrete, from a preselected location set that does not continuously cover the entire indoor space. When a search is triggered, the object positioning information is already out-of-date and thus object locations are uncertain. To this end, we first integrate object location uncertainty into the definitions for counting objects in an indoor region and computing its density. Subsequently, we conduct a thorough analysis of the location uncertainty in the context of complex indoor topology, deriving upper and lower bounds of indoor region densities and introducing distance decaying effect into computing concrete indoor densities. Enabled by the uncertainty analysis outcomes, we design efficient search algorithms for solving the problem. Finally, we conduct extensive experimental studies on our proposals using synthetic and real data. The experimental results verify that the proposed search approach is efficient, scalable, and effective. The top-k indoor dense regions returned by our search are considerably consistent with ground truth, despite that the search uses neither historical data nor extra knowledge about objects.
机译:由于人们将大部分日常生活都花在了室内,因此在许多室内场景(例如空间管理和安全控制)中测量室内密度并找到密集区域是有用且重要的。在本文中,我们提出了一种数据驱动的方法,该方法通过使用室内定位数据来找到前k个室内密集区域。这样的数据是通过以相对较低的频率工作的室内定位系统获得的,并且数据中报告的位置是与不连续覆盖整个室内空间的预选位置集分离的。当触发搜索时,对象定位信息已经过时,因此对象位置不确定。为此,我们首先将对象位置不确定性纳入定义中,以便对室内区域中的对象进行计数并计算其密度。随后,我们对复杂的室内拓扑结构中的位置不确定性进行了详尽的分析,得出室内区域密度的上限和下限,并将距离衰减效应引入到计算具体的室内密度中。在不确定性分析结果的支持下,我们设计了有效的搜索算法来解决问题。最后,我们使用综合和真实数据对我们的提案进行了广泛的实验研究。实验结果验证了所提出的搜索方法是有效,可扩展和有效的。尽管搜索既未使用历史数据,也未获得有关物体的额外知识,但我们搜索返回的前k个室内密集区域与地面真实情况相当一致。

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