Abstract

The accuracy of fingerprinting-based indoor localization correlates with the quality and up-to-dateness of collected training data. Perpetual crowdsourced data collection reduces manual labeling effort and provides a fresh data base. However, the decentralized collection comes with the cost of heterogeneous data that causes performance degradation. In settings with imperfect data, area localization can provide higher positioning guarantees than exact position estimation. Existing area localization solutions employ a static segmentation into areas that is independent of the available training data. This approach is not applicable for crowdsoucred data collection, which features an unbalanced spatial training data distribution that evolves over time. A segmentation is required that utilizes the existing training data distribution and adapts once new data is accumulated. We propose an algorithm for data-aware floor plan segmentation and a selection metric that balances expressiveness (information gain) and performance (correctly classified examples) of area classifiers. We utilize supervised machine learning, in particular, deep learning, to train the area classifiers. We demonstrate how to regularly provide an area localization model that adapts its prediction space to the accumulating training data. The resulting models are shown to provide higher reliability compared to models that pinpoint the exact position.

Highlights

  • In recent years, the usage of location-based services (LBS) has experienced substantial growth.This is mostly caused by the wide adoption of smartphones with the ability to reliably track a user’s location

  • Existing area localization solutions employ a static segmentation into areas that is independent of the available training data [17,18,19,20]

  • This approach is not applicable for crowdsoucred data collection, since it features an unbalanced spatial training data distribution that changes over time

Read more

Summary

Introduction

The usage of location-based services (LBS) has experienced substantial growth. This is mostly caused by the wide adoption of smartphones with the ability to reliably track a user’s location. Global Navigation Satellite Systems (GNSS), such as the Global Positioning System (GPS), are the dominant technology to enable LBS, since they offer accurate and reliable localization performance. GNSS do not provide sufficient availability and reliability inside buildings, since the satellite signals are attenuated and scattered by building features. This drawback has led to the development of various alternative indoor localization systems [1], which utilize a spectrum of techniques and technologies. There is not any gold standard for indoor localization, which can be stated as the main issue that has prevented indoor LBS from developing their full potential [2]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call