Abstract

This paper presents a localization model employing convolutional neural network (CNN) and Gaussian process regression (GPR) based on Wi-Fi received signal strength indication (RSSI) fingerprinting data. In the proposed scheme, the CNN model is trained by a training dataset. The trained model adapts to complex scenes with multipath effects or many access points (APs). More specifically, the pre-processing algorithm makes the RSSI vector which is formed by considerable RSSI values from different APs readable by the CNN algorithm. The trained CNN model improves the positioning performance by taking a series of RSSI vectors into account and extracting local features. In this design, however, the performance is to be further improved by applying the GPR algorithm to adjust the coordinates of target points and offset the over-fitting problem of CNN. After implementing the hybrid model, the model is experimented with a public database that was collected from a library of Jaume I University in Spain. The results show that the hybrid model has outperformed the model using k-nearest neighbor (KNN) by 61.8%. While the CNN model improves the performance by 45.8%, the GPR algorithm further enhances the localization accuracy. In addition, the paper has also experimented with the three kernel functions, all of which have been demonstrated to have positive effects on GPR.

Highlights

  • With the rapid growth of the Internet of Things market, indoor localization has long been a question of great interest in a wide range of fields

  • The results show that the hybrid model has outperformed the model using k-nearest neighbor (KNN) by 61.8%

  • We propose a wireless positioning hybrid model using both convolutional neural networks (CNN) and Gaussian process regression (GPR)

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Summary

Introduction

With the rapid growth of the Internet of Things market, indoor localization has long been a question of great interest in a wide range of fields. There is an urgent need to address the precise indoor localization problems caused by location-based services. Location-based services typically include indoor navigation, shop finding, targeted advertising, transportation, users flow analysis and other industrial fields [1,2,3]. For localization in an outdoor environment, a Global Navigation. Satellite System (GNSS) is an ideal method that meets people’s performance requirements. The signals from GNSS have proven to be unreliable in an indoor environment. We urgently need positioning methods that can perform well in indoor environments [4,5]

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