基于rssi的BLE传感器室内定位方向匹配多重建模

M. Atashi, Parvin Malekzadeh, Mohammad Salimibeni, Zohreh Hajiakhondi-Meybodi, K. Plataniotis, Arash Mohammadi
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引用次数: 11

摘要

物联网(IoT)已经渗透到我们现代生活的各个方面,支持低功耗蓝牙(BLE)的智能传感器越来越多地部署在我们周围的室内环境中。基于ble的定位通常基于接收信号强度指标(Received Signal Strength Indicator, RSSI),但RSSI的波动较大,存在不同的缺点。在本文中,我们重点研究了一个多模型估计框架,用于分析和解决启用ble的设备的方向对室内定位精度的影响。该方法的融合单元将RSSI值估计的方向与惯性测量单元(IMU)传感器估计的航向进行融合,以获得更高的方向分类精度。与现有的基于rssi的解决方案使用单一路径损耗模型相反,该框架由八个方向匹配的路径损耗模型以及一个多传感器和数据驱动的分类模型组成,该模型可以估计手持设备的方向,准确率高达99%。通过对方向的估计,可以减轻方向对RSSI值的影响,从而提高基于RSSI的距离估计。特别是,所提出的数据驱动和多模型框架是基于通过实现的LBS平台收集的超过1000万个RSSI值和IMU传感器数据构建的。
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Orientation-Matched Multiple Modeling for RSSI-based Indoor Localization via BLE Sensors
Internet of Things (IoT) has penetrated different aspects of our modern life where smart sensors enabled with Bluetooth Low Energy (BLE) are deployed increasingly within our surrounding indoor environments. BLE-based localization is, typically, performed based on Received Signal Strength Indicator (RSSI), which suffers from different drawbacks due to its significant fluctuations. In this paper, we focus on a multiplemodel estimation framework for analyzing and addressing effects of orientation of a BLE-enabled device on indoor localization accuracy. The fusion unit of the proposed method would merge orientation estimated by RSSI values and heading estimated by Inertial Measurement Unit (IMU) sensors to gain higher accuracy in orientation classification. In contrary to existing RSSIbased solutions that use a single path-loss model, the proposed framework consists of eight orientation-matched path loss models coupled with a multi-sensor and data-driven classification model that estimates the orientation of a hand-held device with high accuracy of 99%. By estimating the orientation, we could mitigate the effect of orientation on the RSSI values and consequently improve RSSI-based distance estimates. In particular, the proposed data-driven and multiple-model framework is constructed based on over 10 million RSSI values and IMU sensor data collected via an implemented LBS platform.
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