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Efficient and Scalable Calibration-Free Indoor Positioning Using Crowdsourced Data

机译:使用众包数据提供高效且可扩展的无校准室内定位

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摘要

With the development of Internet of Things (IoT), a variety of crowdsourced data becomes available. In this article, we propose to utilize the crowdsourced WiFi received signal strength (RSS) data to perform indoor positioning. In many instances, the size of crowdsourced WiFi RSS data is potentially large, and the ground truths of the corresponding RSS fingerprints are unavailable. Therefore, it is challenging to construct the associated radio map. In the proposed method, a heuristic geometrical algorithm is developed to convert the RSS data into pairwise distances among the fingerprints. Based on these pairwise distances, multidimensional scaling (MDS) is then applied to compute the positions of all the fingerprints, thereby building a radio map. We show that the accuracy of the proposed method is only reasonably lower than a state-of-the-art calibration-based method. Further, we present a ${k}$ -means clustering-based region partitioning method that partitions the large crowdsourced data set effectively. The parallel processing on the partitioned data and computational simplicity of MDS result in significantly shorter runtime for the proposed method than the previous optimization-based methods.
机译:随着物联网(物联网)的发展,各种众群数据可用。在本文中,我们建议利用众包接收的信号强度(RSS)数据来进行室内定位。在许多情况下,众包的WiFi RSS数据的大小可能很大,相应的RSS指纹的地面真理不可用。因此,构建相关的无线电映射是挑战性的。在该方法中,开发了一种启发式几何算法以将RSS数据转换为指纹之间的成对距离。基于这些成对距离,然后应用多维缩放(MDS)以计算所有指纹的位置,从而构建无线电映射。我们表明,所提出的方法的准确性仅低于最先进的基于校准的方法。此外,我们提出了一种$ {k} $ -means基于群集的区域划分方法,该方法分区有效地分区大的众包数据。对于所提出的方法,对分区数据的并行处理和MDS的计算简单性导致所提出的方法的运行时比基于先前的优化的方法更短。

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