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Electrotechnical and Computer Engineering

Vol. 34 No. 11 (2019): Proceedings of the Faculty of Technical Sciences

MACHINE LEARNING – BASED INDOOR LOCALIZATION FOR MOBILE DEVICES

  • Vukan Ninković
  • Dejan Vukobratović
  • Dejan Nemec
DOI:
https://doi.org/10.24867/05BE10Ninkovic
Submitted
November 2, 2019
Published
2019-11-02

Abstract

With the proliferation of mobile devices, indoor localization has become an increasingly important problem. The latest ideas related to its solution are closely related to the principles of machine learning. We propose new algorithm wich considers time – frequency representation of the signal, after OFDM demodulation, as a picture and uses all benefits of machine learning that are alredy applied in solving the problem of image processing and classification. At the end we compare different architectures by accuracy and complexity.

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