Abstract

Location fingerprinting is a technique widely suggested for challenging indoor positioning. Despite the significant benefits of this technique, it needs a considerable amount of time and energy to measure the Received Signal Strength (RSS) at Reference Points (RPs) and build a fingerprinting database to achieve an appropriate localization accuracy. Reducing the number of RPs can reduce this cost, but it noticeably degrades the accuracy of positioning. In order to alleviate this problem, this paper takes the interior architecture of the indoor area and signal propagation effects into account and proposes two novel recovery methods for creating the reconstructed database instead of the measured one. They only need a few numbers of RPs to reconstruct the database and even are able to produce a denser database. The first method is a new zone-based path-loss propagation model which employs fingerprints of different zones separately and the second one is a new interpolation method, zone-based Weighted Ring-based (WRB). The proposed methods are compared with the conventional path-loss model and six interpolation functions. Two different test environments along with a benchmarking testbed, and various RPs configurations are also utilized to verify the proposed recovery methods, based on the reconstruction errors and the localization accuracies they provide. The results indicate that by taking only 11% of the initial RPs, the new zone-based path-loss model decreases the localization error up to 26% compared to the conventional path-loss model and the proposed zone-based WRB method outperforms all the other interpolation methods and improves the accuracy by 40%.

Highlights

  • W ITH increasing user demands on Location-based Services (LBS) and Social Networking Services (SNS), indoor positioning has become more crucial

  • In indoor localization, constructing the measured database in the training stage of location fingerprinting technique is so costly in terms of the required time and human efforts

  • It is applied in the path-loss model and six interpolation methods used in the indoor fingerprinting technique, in which the function parameters are computed separately for different zones

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Summary

Introduction

W ITH increasing user demands on Location-based Services (LBS) and Social Networking Services (SNS), indoor positioning has become more crucial. The main advantage of location fingerprinting is its capability of alleviating the multipath and Non-Line-of-Sight (NLOS) propagations problems in indoor environments. It needs no additional infrastructure hardware as Wi-Fi access points (APs) are already deployed indoors, and the Received Signal Strength (RSS) values are accessible from the Application Programming Interface (API) of mobile devices. It has two stages: training and positioning. It stores the locationdependent characteristics of a signal collected at Reference

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