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Received Signal Strength Fingerprinting-Based Indoor Location Estimation Employing Machine Learning

机译:接收信号强度指纹识别的室内位置估计采用机器学习

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摘要

The fingerprinting technique is a popular approach to reveal location of persons, instruments or devices in an indoor environment. Typically based on signal strength measurement, a power level map is created first in the learning phase to align with measured values in the inference. Second, the location is determined by taking the point for which the recorded received power level is closest to the power level actually measured. The biggest limit of this technique is the reliability of power measurements, which may lack accuracy in many wireless systems. To this end, this work extends the power level measurement by using multiple anchors and multiple radio channels and, consequently, considers different approaches to aligning the actual measurements with the recorded values. The dataset is available online. This article focuses on the very popular radio technology Bluetooth Low Energy to explore the possible improvement of the system accuracy through different machine learning approaches. It shows how the accuracy–complexity trade-off influences the possible candidate algorithms on an example of three-channel Bluetooth received signal strength based fingerprinting in a one dimensional environment with four static anchors and in a two dimensional environment with the same set of anchors. We provide a literature survey to identify the machine learning algorithms applied in the literature to show that the studies available can not be compared directly. Then, we implement and analyze the performance of four most popular supervised learning techniques, namely k Nearest Neighbors, Support Vector Machines, Random Forest, and Artificial Neural Network. In our scenario, the most promising machine learning technique being the Random Forest with classification accuracy over 99%.
机译:指纹技术是一种流行的方法,可以在室内环境中揭示人员,仪器或设备的位置。通常基于信号强度测量,首先在学习阶段中创建电力电平映射以使得在推理中的测量值对准。其次,通过拍摄记录的接收功率电平最靠近实际测量的功率电平的点来确定位置。该技术的最大限制是功率测量的可靠性,这可能在许多无线系统中缺乏准确性。为此,该工作通过使用多个锚点和多个无线电通道来扩展功率电平测量,并且因此考虑与记录值对齐实际测量的不同方法。数据集可在线获取。本文重点介绍了非常流行的无线电技术蓝牙低能量,通过不同的机器学习方法探讨系统准确性的可能改善。它示出了准确性复杂性权衡如何在具有四维环境中的三通道蓝牙接收信号强度的示例中影响可能的候选算法,其中具有四个静态锚和具有相同一组锚的两个维环境。我们提供了一种文献调查,以确定在文献中应用的机器学习算法,以表明可以直接比较所提供的研究。然后,我们实施并分析四个最受欢迎的监督学习技术,即K最近邻居,支持向量机,随机林和人工神经网络的性能。在我们的情景中,最有前途的机器学习技术是随机森林,分类精度超过99%。

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