Towards a practical indoor location matching system using 4G LTE PHY layer information

Nithyananthan Poosamani, I. Rhee
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引用次数: 14

Abstract

Predicting the location of a user in indoor settings in a practical and energy-efficient manner is (still) a very non-trivial task. The latest challenge in indoor localization is not to design specialized sensors but to design and implement practical data fusion methods using the already available technologies. Current state-of-the-art indoor localization techniques utilize Wi-Fi and a variety of sensors inside smart phones to predict user location. Some also require site-specific input such as indoor floor plans or the location of Wi-Fi access points. In this paper, we propose to use physical (PHY) layer information from 4G cellular network signals such as Reference Signal Received Power (RSRP) and Reference Signal Received Quality (RSRQ) to logically predict user location. Since the cellular signals are received by the smart phones at no additional cost, our methodology is very energy-efficient. We implement a prototype system in Android and evaluated it over 60 indoor locations. The prediction accuracy ranged up to 91% with an average localization error of less than 2.3m for any combination of 4G PHY layer information. The results show promise for improvements in current indoor localization systems using cellular signals.
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探讨一种实用的利用4G LTE物理层信息的室内定位匹配系统
以实用和节能的方式预测用户在室内环境中的位置(仍然)是一项非常重要的任务。室内定位的最新挑战不是设计专门的传感器,而是利用现有技术设计和实现实用的数据融合方法。目前最先进的室内定位技术利用Wi-Fi和智能手机内的各种传感器来预测用户的位置。有些还需要特定地点的输入,如室内平面图或Wi-Fi接入点的位置。在本文中,我们建议使用来自4G蜂窝网络信号的物理层(PHY)信息,如参考信号接收功率(RSRP)和参考信号接收质量(RSRQ)来逻辑地预测用户位置。由于智能手机接收蜂窝信号无需额外费用,因此我们的方法非常节能。我们在Android上实现了一个原型系统,并在60多个室内地点对其进行了评估。对于任意组合的4G物理层信息,预测精度可达91%,平均定位误差小于2.3m。研究结果显示,目前使用蜂窝信号的室内定位系统有望得到改进。
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