室内定位中机器学习算法的比较研究

Sinem Bozkurt, Gulin Elibol, Serkan Günal, Uğur Yayan
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引用次数: 99

摘要

基于指纹的定位通常用于室内定位。在此方法中,首先使用从预定义参考点测量的接收信号强度(RSS)值创建无线电地图。在定位过程中,将观测到的RSS值与射电图中已有的RSS值建立最佳匹配,作为预测位置。在定位文献中,机器学习算法在估计位置方面有广泛的应用。寻找合适的机器学习算法是室内定位系统的主要问题之一。本文从定位精度和计算时间两方面对所选机器学习算法进行了比较。实验中使用的是UJIIndoorLoc室内定位数据库。实验结果表明,k-最近邻(k-NN)算法是定位过程中最合适的算法。此外,AdaBoost和Bagging等集成算法被应用于提高决策树分类器的性能,几乎与k-NN相同,最终成为室内定位的最佳分类器。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A comparative study on machine learning algorithms for indoor positioning
Fingerprinting based positioning is commonly used for indoor positioning. In this method, initially a radio map is created using Received Signal Strength (RSS) values that are measured from predefined reference points. During the positioning, the best match between the observed RSS values and existing RSS values in the radio map is established as the predicted position. In the positioning literature, machine learning algorithms have widespread usage in estimating positions. One of the main problems in indoor positioning systems is to find out appropriate machine learning algorithm. In this paper, selected machine learning algorithms are compared in terms of positioning accuracy and computation time. In the experiments, UJIIndoorLoc indoor positioning database is used. Experimental results reveal that k-Nearest Neighbor (k-NN) algorithm is the most suitable one during the positioning. Additionally, ensemble algorithms such as AdaBoost and Bagging are applied to improve the decision tree classifier performance nearly same as k-NN that is resulted as the best classifier for indoor positioning.
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