Abstract

This paper presents a system based on pedestrian dead reckoning (PDR) for localization of networked mobile users, which relies only on sensors embedded in the devices and device- to-device connectivity. The user trajectory is reconstructed by measuring step by step the user displacements. Though step length can be estimated rather accurately, heading evaluation is extremely problematic in indoor environments. Magnetometer is typically used, however measurements are strongly perturbed. To improve the location accuracy, this paper proposes a novel cooperative system to estimate the direction of motion based on a machine learning approach for perturbation detection and filtering, combined with a consensus algorithm for performance augmentation by cooperative data fusion at multiple devices. A first algorithm filters out perturbed magnetometer measurements based on a-priori information on the Earth’s magnetic field. A second algorithm aggregates groups of users walking in the same direction, while a third one combines the measurements of the aggregated users in a distributed way to extract a more accurate heading estimate. To the best of our knowledge, this is the first approach that combines machine learning with consensus algorithms for cooperative PDR. Compared to other methods in the literature, the method has the advantage of being infrastructure-free, fully distributed and robust to sensor failures thanks to the pre-filtering of perturbed measurements. Extensive indoor experiments show that the heading error is highly reduced by the proposed approach thus leading to noticeable enhancements in localization performance.

Highlights

  • As technology advances, computers and mobile devices are becoming the leading digital platforms in our everyday life

  • We propose a novel distributed and collaborative pedestrian dead reckoning (PDR) system based on cooperative machine learning (CML) that enhances magnetic sensors embedded in the smart phones and accurately estimates the heading of pedestrians that are closely located

  • The results show that the performance of Pedestrian Clustering (PC) slightly increases, the best average accuracy of cooperative machine learning PDR (CML-PDR) is achieved for received signal strength (RSS) sampling rate of 0.3 s and window size of 0.6 s

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Summary

Introduction

Computers and mobile devices are becoming the leading digital platforms in our everyday life. As the use and reliance on smart devices grows within public domain, context aware technologies are expected to become an essential requirement in the development of smart cities. In this sense, the location of people is an important source of contextual information and a key enabler of novel location-based services (LBS) [3,4,5]. Global Navigation Satellite Systems (GNSS) are the most widely used positioning solutions [6], they can be blocked in indoor environments as they cannot handle the high attenuation and sever multi-path effects that occur indoors This calls the development of new solutions for indoor localization.

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