HMM-Based Indoor Localization Using Smart Watches' BLE Signals

Donghee Han, Hyungtay Rho, Sejoon Lim
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引用次数: 8

Abstract

This paper describes the implementation of indoor localization technology using Bluetooth modules and beacons featuring Bluetooth Low Energy (BLE) by smart watches. We implemented a Hidden Markov Model (HMM)-based fingerprinting method using various data from recognized BLE signals. For fingerprinting, we obtained both a received signal strength indication and a signal observation frequency that were obtained from nearby beacons. The location was estimated from both a presurveilled profile and an exponential fit model. When using an exponential fit model with the signal observation frequency, we were able to achieve approximately 80% accuracy, even with little data. In addition, when using the HMM-based fingerprinting and a transition model based on the probability of users' movement, the accuracy of our location prediction increased by up to 15%.
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基于hmm的基于智能手表BLE信号的室内定位
本文介绍了智能手表使用蓝牙模块和具有低功耗蓝牙(BLE)功能的信标实现室内定位技术。我们实现了一种基于隐马尔可夫模型(HMM)的指纹识别方法,该方法使用了来自可识别BLE信号的各种数据。对于指纹识别,我们获得了从附近信标获得的接收信号强度指示和信号观察频率。通过压力监测剖面和指数拟合模型对位置进行了估计。当使用具有信号观测频率的指数拟合模型时,即使数据很少,我们也能够达到大约80%的精度。此外,当使用基于hmm的指纹识别和基于用户移动概率的过渡模型时,我们的位置预测精度提高了15%。
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