A Review of Indoor Positioning Systems for UAV Localization with Machine Learning Algorithms

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Abstract

The potential of indoor unmanned aerial vehicle (UAV) localization is paramount for diversified applications within large industrial sites, such as hangars, malls, warehouses, production lines, etc. In such real-time applications, autonomous UAV location is required constantly. This paper comprehensively reviews radio signal-based wireless technologies, machine learning (ML) algorithms and ranging techniques that are used for UAV indoor positioning systems. UAV indoor localization typically relies on vision-based techniques coupled with inertial sensing in indoor Global Positioning System (GPS)-denied situations, such as visual odometry or simultaneous localization and mapping employing 2D/3D cameras or laser rangefinders. This work critically reviews the research and systems related to mini-UAV localization in indoor environments. It also provides a guide and technical comparison perspective of different technologies, presenting their main advantages and disadvantages. Finally, it discusses various open issues and highlights future directions for UAV indoor localization.

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APA

Sandamini, C., Maduranga, M. W. P., Tilwari, V., Yahaya, J., Qamar, F., Nguyen, Q. N., & Ibrahim, S. R. A. (2023, April 1). A Review of Indoor Positioning Systems for UAV Localization with Machine Learning Algorithms. Electronics (Switzerland). MDPI. https://doi.org/10.3390/electronics12071533

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