基于多蓝牙信标和机器学习的精确无网格室内定位

Konstantinos Kotrotsios, T. Orphanoudakis
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引用次数: 8

摘要

在这项工作中,我们提出了一种室内定位方法,使用智能手机作为位置信息的来源。该方法利用分散在室内空间周围的蓝牙低能信标的接收信号强度指示器(RSSI)值。我们使用机器学习展示了我们的模型的结果,该模型是基于占用31m2空间的实验室环境中Beacons的RSSI值的测量而开发的。测量结果被提供给开源的TensorFlow框架,以开发手机和信标之间距离的估计器。接下来,基于外围线的横截面,以信标的位置为中心,以预测距离为半径,我们计算所有圆的交点,并基于交点的几何中位数进行位置估计。通过实验表明,该系统的平均精度为69.58cm,在80%的情况下,该系统的位置预测精度小于1米。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accurate Gridless Indoor Localization Based on Multiple Bluetooth Beacons and Machine Learning
In this work we present an indoor location method using smartphones as a source of location information. The proposed method uses the Received Signal Strength Indicator (RSSI) value from Bluetooth Low Energy Beacons scattered around interior spaces. We present the results of our model using machine learning, which was developed based on measurements of RSSI values from Beacons inside a lab environment occupying a space of 31m2. Measurements were fed to the open-source TensorFlow framework to develop an estimator of the distance between the mobile phone and the beacon. Next, based on the cross-sections of peripheral lines having as a center the location of the Beacons and radius the predicted distances we compute the intersection points from all circles and base our position estimation on the Geometric median of intersection points. Through experiments, we show that our system has an average accuracy of 69.58cm and can predict position with an accuracy of less than a meter in 80% of the cases.
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