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Comprehensive analysis of distance and similarity measures for Wi-Fi fingerprinting indoor positioning systems

机译:Wi-Fi指纹室内定位系统的距离和相似性度量的综合分析

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Recent advances in indoor positioning systems led to a business interest in those applications and services where a precise localization is crucial. Wi-Fi fingerprinting based on machine learning and expert systems are commonly used in the literature. They compare a current fingerprint to a database of fingerprints, and then return the most similar one/ones according to: I) a distance function, 2) a data representation method for received signal strength values, and 3) a thresholding strategy. However, most of the previous works simply use the Euclidean distance with the raw unprocessed data. There is not any previous work that studies which is the best distance function, which is the best way of representing the data and which is the effect of applying thresholding. In this paper, we present a comprehensive study using 51 distance metrics, 4 alternatives to represent the raw data (2 of them proposed by us), a thresholding based on the RSS values and the public UJIIndoorLoc database. The results shown in this paper demonstrate that researchers and developers should take into account the conclusions arisen in this work in order to improve the accuracy of their systems. The IPSs based on k-NN are improved by just selecting the appropriate configuration (mainly distance function and data representation). In the best case, 13-NN with Sorensen distance and the pawed data representation, the error in determining the place (building and floor) has been reduced in more than a 50% and the positioning accuracy has been increased in 1.7 m with respect to the 1-NN with Euclidean distance and raw data commonly used in the literature. Moreover, our experiments also demonstrate that thresholding should not be applied in multi-building and multi-floor environments. (C) 2015 Elsevier Ltd. All rights reserved.
机译:室内定位系统的最新进展引起了对精确定位至关重要的那些应用和服务的商业兴趣。文献中通常使用基于机器学习和专家系统的Wi-Fi指纹识别。他们将当前指纹与指纹数据库进行比较,然后根据以下条件返回最相似的一个/一个:I)距离函数; 2)接收信号强度值的数据表示方法; 3)阈值化策略。但是,大多数以前的工作都只是将欧几里德距离与未处理的原始数据一起使用。以前没有任何研究工作是最佳距离函数,最佳数据表示方法以及应用阈值的效果。在本文中,我们使用51个距离度量,代表原始数据的4种替代方法(由我们提出的2种替代方法),基于RSS值的阈值和公共UJIIndoorLoc数据库进行了全面研究。本文显示的结果表明,研究人员和开发人员应考虑这项工作中出现的结论,以提高其系统的准确性。通过选择适当的配置(主要是距离函数和数据表示),可以改进基于k-NN的IPS。在最好的情况下,具有Sorensen距离和爪状数据表示的13-NN,确定位置(建筑物和楼层)的误差降低了50%以上,相对于,定位精度提高了1.7 m具有欧几里得距离的1-NN和文献中常用的原始数据。此外,我们的实验还表明,不应在多层建筑和多层环境中应用阈值设置。 (C)2015 Elsevier Ltd.保留所有权利。

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