Abstract

Indoor and outdoor positioning lets to offer universal location services in industry and academia. Wi-Fi and Global Positioning System (GPS) are the promising technologies for indoor and outdoor positioning, respectively. However, Wi-Fi-based positioning is less accurate due to the vigorous changes of environments and shadowing effects. GPS-based positioning is also characterized by much cost, highly susceptible to the physical layouts of equipment, power-hungry, and sensitive to occlusion. In this paper, we propose a hybrid of support vector machine (SVM) and deep neural network (DNN) to develop scalable and accurate positioning in Wi-Fi-based indoor and outdoor environments. In the positioning processes, we primarily construct real datasets from indoor and outdoor Wi-Fi-based environments. Secondly, we apply linear discriminate analysis (LDA) to construct a projected vector that uses to reduce features without affecting information contents. Thirdly, we construct a model for positioning through the integration of SVM and DNN. Fourthly, we use online datasets from unknown locations and check the missed radio signal strength (RSS) values using the feed-forward neural network (FFNN) algorithm to fill the missed values. Fifthly, we project the online data through an LDA-based projected vector. Finally, we test the positioning accuracies and scalabilities of a model created from a hybrid of SVM and DNN. The whole processes are implemented using Python 3.6 programming language in the TensorFlow framework. The proposed method provides accurate and scalable positioning services in different scenarios. The results also show that our proposed approach can provide scalable positioning, and 100% of the estimation accuracies are with errors less than 1 m and 1.9 m for indoor and outdoor positioning, respectively.

Highlights

  • In the Internet of Things (IoT) era, indoor and outdoor positioning plays various roles to find the location of people, mobile devices, and equipment

  • We propose to use the integration of feed-forward neural network (FFNN), linear discriminate analysis (LDA), support vector machine (SVM), and deep neural network (DNN) algorithms for scalable and accurate positioning, as proposed in our previous work [26]

  • The testing results using a hybrid of SVM and DNN in wireless environments are presented to show the performance of the proposed method

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Summary

Introduction

In the Internet of Things (IoT) era, indoor and outdoor positioning plays various roles to find the location of people, mobile devices, and equipment. Because of the popularities of social networks and the widespread usage of mobile devices, demands for location-based services (LBS) are increased in both indoor and outdoor environments [1, 2]. Positioning can be considered as a key technology to IoT, since it uses to provide situation-awake services in various applicable areas [3, 4]. Human daily life is becoming highly integrated with the IoT as the Internet attracts much attention with respect to the outlook of future life and rapidly increases communication networks. Rapid technological growths cause to increase positioning services. In [5], positioning is one of the primary services in the IoT era

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