IEEE Access (Jan 2024)

Evaluation and Comparison of 5G, WiFi, and Fusion With Incomplete Maps for Indoor Localization

  • Carlos Simon Alvarez-Merino,
  • Emil J. Khatib,
  • Hao Qiang Luo-Chen,
  • Antonio Tarrias Munoz,
  • Raquel Barco Moreno

DOI
https://doi.org/10.1109/ACCESS.2024.3384625
Journal volume & issue
Vol. 12
pp. 51893 – 51903

Abstract

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Precise positioning will play a key role in future 5G/6G services. The upcoming location-based services drive the necessity of high-precision positioning to indoors. In fingerprinting, which is the most commonly used location algorithm indoors, comprehensive radio maps are essential for a precise localization service and highly influence on the result of the final position of the user. A Machine Learning (ML) algorithm that supports missing reference points information when maps are incomplete that are used during the training phase may improve the robustness and reliability of the localization service. In this work, we compare the performance of the classical fingerprinting technique and different Decision Tree Regressor (DTR)-based algorithms that are Decision Tree Adaboost (DTA), Linear Tree Adaboost (LTA) and Random Forest (RF). The experiments were carried out with real 5G and WiFi data in an indoor scenario to test the performance of the techniques. Additionally, we demonstrate the benefits of fusion of technologies when positioning with radio maps. Finally, an evaluation of the robustness from the different methods was carried out when missing information in radio maps during the training phase.

Keywords