Fusion of Magnetic and Visual Sensors for Indoor Localization: Infrastructure-Free and More Effective

Zhenguang Liu,Luming Zhang,Qi Liu,Yifang Yin,Li Cheng,Roger Zimmermann

Published 2017 in IEEE transactions on multimedia

ABSTRACT

Accurate and infrastructure-free indoor positioning can be very useful in a variety of applications. However, most existing approaches (e.g., WiFi and infrared-based methods) for indoor localization heavily rely on infrastructure, which is neither scalable nor pervasively available. In this paper, we propose a novel indoor localization and tracking approach, termed VMag, that does not require any infrastructure assistance. The user can be localized while simply holding a smartphone. To the best of our knowledge, the proposed method is the first exploration of fusing geomagnetic and visual sensing for indoor localization. More specifically, we conduct an in-depth study on both the advantageous properties and the challenges in leveraging the geomagnetic field and visual images for indoor localization. Based on these studies, we design a context-aware particle filtering framework to track the user with the goal of maximizing the positioning accuracy. We also introduce a neural-network-based method to extract deep features for the purpose of indoor positioning. We have conducted extensive experiments on four different indoor settings including a laboratory, a garage, a canteen, and an office building. Experimental results demonstrate the superior performance of VMag over the state of the art with these four indoor settings.

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