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SSD: A Robust RF Location Fingerprint Addressing Mobile Devices' Heterogeneity

机译:SSD:解决移动设备异质性的强大RF位置指纹

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摘要

Fingerprint-based methods are widely adopted for indoor localization purpose because of their cost-effectiveness compared to other infrastructure-based positioning systems. However, the popular location fingerprint, Received Signal Strength (RSS), is observed to differ significantly across different devices' hardware even under the same wireless conditions. We derive analytically a robust location fingerprint definition, the Signal Strength Difference (SSD), and verify its performance experimentally using a number of different mobile devices with heterogeneous hardware. Our experiments have also considered both Wi-Fi and Bluetooth devices, as well as both Access-Point(AP)-based localization and Mobile-Node (MN)-assisted localization. We present the results of two well-known localization algorithms (K Nearest Neighbor and Bayesian Inference) when our proposed fingerprint is used, and demonstrate its robustness when the testing device differs from the training device. We also compare these SSD-based localization algorithms' performance against that of two other approaches in the literature that are designed to mitigate the effects of mobile node hardware variations, and show that SSD-based algorithms have better accuracy.
机译:与基于其他基础设施的定位系统相比,基于指纹的方法具有成本效益,因此被广泛用于室内定位。但是,即使在相同的无线条件下,不同设备的硬件之间也发现流行的位置指纹接收信号强度(RSS)明显不同。我们通过分析得出一个可靠的位置指纹定义,即信号强度差(SSD),并使用许多具有异构硬件的不同移动设备通过实验验证其性能。我们的实验还考虑了Wi-Fi和Bluetooth设备,以及基于接入点(AP)的本地化和移动节点(MN)辅助的本地化。当使用我们提出的指纹时,我们展示了两种众所周知的定位算法(K最近邻算法和贝叶斯推断)的结果,并证明了当测试设备与训练设备不同时,其鲁棒性。我们还将这些基于SSD的本地化算法的性能与文献中旨在减轻移动节点硬件变化影响的其他两种方法的性能进行了比较,并表明基于SSD的算法具有更好的准确性。

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