Authors
Jiang Dong, Marius Noreikis, Yu Xiao, Antti Ylä-Jääski
Publication date
2018/7/20
Journal
IEEE Transactions on Mobile Computing
Volume
18
Issue
6
Pages
1461-1475
Publisher
IEEE
Description
Smartphone-based indoor navigation services are desperately needed in indoor environments. However, the adoption of them has been relatively slow, due to the lack of fine-grained and up-to-date indoor maps, or the potentially high deployment and maintenance cost of infrastructure-based indoor localization solutions. This work proposes ViNav, a scalable and cost-efficient system that implements indoor mapping, localization, and navigation based on visual and inertial sensor data collected from smartphones. ViNav applies structure-from-motion (SfM) techniques to reconstruct 3D models of indoor environments from crowdsourced images, locates points of interest (POI) in 3D models, and compiles navigation meshes for path finding. ViNav implements image-based localization that identifies users' positions and facing directions, and leverages this feature to calibrate dead-reckoning-based user trajectories and …
Total citations
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Scholar articles
J Dong, M Noreikis, Y Xiao, A Ylä-Jääski - IEEE Transactions on Mobile Computing, 2018