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  4. Machine Learning-based Real-Time Indoor Landmark Localization
 

Machine Learning-based Real-Time Indoor Landmark Localization

URI
https://arbor.bfh.ch/handle/arbor/40165
Version
Published
Date Issued
2018-06-18
Author(s)
Zhongliang, Zhao
Carrera, Jose
Niklaus, Joël  
Braun, Torsten
Editor(s)
Chowdhury, K.
Di Felice, M.
Matta, I.
Sheng, B.
Type
Conference Paper
Language
English
Subjects

Machine learning Indo...

Abstract
Nowadays, smartphones can collect huge amounts of data from their surroundings with the help of highly accurate sensors. Since the combination of the Received Signal Strengths of surrounding access points and sensor data is assumed to be unique in some locations, it is possible to use this information to accurately predict smartphones' indoor locations. In this work, we apply machine learning methods to derive the correlation between smartphones' locations and the received Wi-Fi signal strength and sensor values. We have developed an Android application that is able to distinguish between rooms on a floor, and special landmarks within the detected room. Our real-world experiment results show that the Voting ensemble predictor outperforms individual machine learning algorithms and it achieves the best indoor landmark localization accuracy of 94% in office-like environments. This work provides a coarse-grained indoor room recognition and landmark localization within rooms, which can be envisioned as a basis for accurate indoor positioning.
ISBN
978-3-030-02930-2
DOI
10.24451/arbor.19708
https://doi.org/10.24451/arbor.19708
Publisher DOI
10.1007/978-3-030-02931-9_8
Series/Report No.
Lecture Notes in Computer Science
Publisher URL
http://wwic2018.nws.cs.unibo.it/
Related URL
https://www.ifip.org/
Organization
Data and Infrastructure  
Wirtschaft  
Institut Public Sector Transformation (IPST)  
Volume
10866
Conference
16th International Conference on Wired/Wireless Internet Communication
Publisher
Springer
Submitter
VerbruggenS
Citation apa
Zhongliang, Z., Carrera, J., Niklaus, J., & Braun, T. (2018). Machine Learning-based Real-Time Indoor Landmark Localization (K. Chowdhury, M. Di Felice, I. Matta, & B. Sheng, Eds.; Vol. 10866, pp. 95–106). Springer. https://doi.org/10.24451/arbor.19708
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