Bellavista-Parent Vladimir, Torres-Sospedra Joaquín, Pérez-Navarro Antoni
Faculty of Computer Sciences, Multimedia and Telecommunication, Universitat Oberta de Catalunya, 08018 Barcelona, Spain.
Algoritmi Research Center (CALG), Universidade do Minho, 4800-058 Guimarães, Portugal.
Sensors (Basel). 2022 Jun 19;22(12):4622. doi: 10.3390/s22124622.
Nowadays, there are a multitude of solutions for indoor positioning, as opposed to standards for outdoor positioning such as GPS. Among the different existing studies on indoor positioning, the use of Wi-Fi signals together with Machine Learning algorithms is one of the most important, as it takes advantage of the current deployment of Wi-Fi networks and the increase in the computing power of computers. Thanks to this, the number of articles published in recent years has been increasing. This fact makes a review necessary in order to understand the current state of this field and to classify different parameters that are very useful for future studies. What are the most widely used machine learning techniques? In what situations have they been tested? How accurate are they? Have datasets been properly used? What type of Wi-Fi signals have been used? These and other questions are answered in this analysis, in which 119 papers are analyzed in depth following PRISMA guidelines.
如今,与GPS等室外定位标准不同,室内定位有多种解决方案。在现有的关于室内定位的不同研究中,将Wi-Fi信号与机器学习算法结合使用是最重要的方法之一,因为它利用了当前Wi-Fi网络的部署情况以及计算机计算能力的提升。因此,近年来发表的相关文章数量一直在增加。为了了解该领域的现状并对未来研究非常有用的不同参数进行分类,有必要进行一次综述。最广泛使用的机器学习技术有哪些?它们在哪些情况下进行了测试?它们的准确性如何?数据集是否得到了妥善使用?使用了哪种类型的Wi-Fi信号?在本次分析中回答了这些以及其他问题,该分析按照PRISMA指南对119篇论文进行了深入分析。