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Wi-Fi Fingerprint Positioning Updated by Pedestrian Dead Reckoning for Mobile Phone Indoor Localization

机译:Wi-Fi指纹定位由行人死亡更新,用于手机室内定位

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The widespread deployment of Wi-Fi communication makes it easy to find Wi-Fi access points in the indoor environment, which enables us to use them for Wi-Fi fingerprint positioning. Although much research is devoted to this topic in the literature, the practical implementation of Wi-Fi based localization is hampered by the variations of the received signal strength (RSS) due to e.g. impediments in the channel, decreasing the positioning accuracy. In order to improve this accuracy, we integrate Pedestrian Dead Reckoning (PDR) with Wi-Fi fingerprinting: the movement distance and walking direction, obtained with the PDR algorithm, are combined with the K-Weighted Nearest Node (KWNN) algorithm to assist in selecting reference points (RPs) closer to the actual position. To illustrate and evaluate our algorithm, we collected the RSS values from 8 Wi-Fi access points inside a building to create a fingerprint database. Simulation results showed that, compared to the conventional KWNN algorithm, the positioning algorithm is improved with 17 %, corresponding to an average positioning error of 1.58 m for the proposed algorithm, while an accuracy of 1.91 m was obtained with the KWNN algorithm. The advantage of the proposed algorithm is that not only the existing Wi-Fi infrastructure and fingerprint database can be used without modification, but also that a standard mobile phone is sufficient to implement our algorithm.
机译:Wi-Fi通信的广泛部署使得在室内环境中可以轻松找到Wi-Fi接入点,这使我们能够为Wi-Fi指纹定位使用它们。虽然在文献中致力于对该主题进行了多大研究,但由于由于例如,所接收的信号强度(RSS)的变化,基于Wi-Fi定位的实际实施是阻碍的。频道中的障碍降低定位精度。为了提高这种准确性,我们将行人死亡率(PDR)与Wi-Fi指纹集成:使用PDR算法获得的移动距离和行走方向与K加权最近的节点(KWNN)算法组合以帮助选择接近实际位置的参考点(RPS)。为了说明和评估我们的算法,我们从建筑物内的8个Wi-Fi接入点收集了RSS值以创建指纹数据库。仿真结果表明,与传统的KWNN算法相比,定位算法随着17%的提高,对应于所提出的算法的平均定位误差为1.58μm,而用KWNN算法获得1.91m的精度。所提出的算法的优点是,不仅可以在没有修改的情况下使用现有的Wi-Fi基础设施和指纹数据库,而且还可以使用标准移动电话足以实现我们的算法。

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