Self-calibration and Collaborative Localization for UWB Positioning Systems

Author:

Ridolfi Matteo1ORCID,Kaya Abdil2,Berkvens Rafael2ORCID,Weyn Maarten2,Joseph Wout3,Poorter Eli De1

Affiliation:

1. IDLab, Department of Information Technology, Ghent University--imec, Ghent, Belgium

2. IDLab, Faculty of Applied Engineering, University of Antwerp--imec, Antwerp, Belgium

3. WAVES, Ghent University--imec, Ghent, Belgium

Abstract

Ultra-Wideband (UWB) is a Radio Frequency technology that is currently used for accurate indoor localization. However, the cost of deploying such a system is large, mainly due to the need for manually measuring the exact location of the installed infrastructure devices (“anchor nodes”). Self-calibration of UWB reduces deployment costs, because it allows for automatic updating of the coordinates of fixed nodes when they are installed or moved. Additionally, installation costs can also be reduced by using collaborative localization approaches where mobile nodes act as anchors. This article surveys the most significant research that has been done on self-calibration and collaborative localization. First, we find that often these terms are improperly used, leading to confusion for the readers. Furthermore, we find that in most of the cases, UWB-specific characteristics are not exploited, so crucial opportunities to improve performance are lost. Our classification and analysis provide the basis for further research on self-calibration and collaborative localization in the deployment of UWB indoor localization systems. Finally, we identify several research tracks that are open for investigation and can lead to better performance, e.g., machine learning and optimized physical settings.

Funder

VLAIO proeftuinproject SmartConnectivity, imec.icon In-WareDrones and EOS project MUSE-WINET

Publisher

Association for Computing Machinery (ACM)

Subject

General Computer Science,Theoretical Computer Science

Reference118 articles.

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3. UWB Nodes Auto-Calibration through a Bias-Aware Two-Stage Methodology*;2023 IEEE Symposium Sensor Data Fusion and International Conference on Multisensor Fusion and Integration (SDF-MFI);2023-11-27

4. Two Dimensional Local Positioning for Monitoring Position and Movement using UWB;2023 8th International Conference on Electrical, Electronics and Information Engineering (ICEEIE);2023-09-28

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