Kotrotsios Konstantinos, Fanariotis Anastasios, Leligou Helen-Catherine, Orphanoudakis Theofanis
School of Sciences and Technology, Hellenic Open University, 26334 Patras, Greece.
Sensors (Basel). 2022 Jan 12;22(2):570. doi: 10.3390/s22020570.
In this paper, we present the results of a performance evaluation and optimization process of an indoor positioning system (IPS) designed to operate on portable as well as miniaturized embedded systems. The proposed method uses the Received Signal Strength Indicator (RSSI) values from multiple Bluetooth Low-Energy (BLE) beacons scattered around interior spaces. The beacon signals were received from the user devices and processed through an RSSI filter and a group of machine learning (ML) models, in an arrangement of one model per detected node. Finally, a multilateration problem was solved using as an input the inferred distances from the advertising nodes and returning the final position approximation. In this work, we first presented the evaluation of different ML models for inferring the distance between the devices and the installed beacons by applying different optimization algorithms. Then, we presented model reduction methods to implement the optimized algorithm on the embedded system by appropriately adapting it to its constraint resources and compared the results, demonstrating the efficiency of the proposed method.
在本文中,我们展示了一个室内定位系统(IPS)性能评估和优化过程的结果,该系统旨在在便携式以及小型化嵌入式系统上运行。所提出的方法使用来自散布在室内空间的多个低功耗蓝牙(BLE)信标的接收信号强度指示(RSSI)值。信标信号从用户设备接收,并通过RSSI滤波器和一组机器学习(ML)模型进行处理,每个检测到的节点对应一个模型。最后,使用从广告节点推断出的距离作为输入来解决多边定位问题,并返回最终位置近似值。在这项工作中,我们首先通过应用不同的优化算法,展示了对用于推断设备与已安装信标之间距离的不同ML模型的评估。然后,我们提出了模型简化方法,通过使其适当地适应嵌入式系统的受限资源来在嵌入式系统上实现优化算法,并比较了结果,证明了所提出方法的效率。