Salihu, A., Rupp, M., & Schwarz, S. (2023). Self-Supervised Learning for Wireless Localization. In I. A. Alimi & J. J. Popoola (Eds.), 5G and 6G Enhanced Broadband Communications. IntechOpen. https://doi.org/10.5772/intechopen.1003773
In this chapter, we provide an overview of several data-driven techniques for wireless localization. We initially discuss shallow dimensionality reduction (DR) approaches and investigate a supervised learning method. Subsequently, we transition into deep metric learning and then place particular emphasis on a transformer-based model and self-supervised learning. We highlight a new research direction of employing designed pretext tasks to train AI models, enabling them to learn compressed channel features useful for wireless localization. We use datasets obtained in massive multiple-input multiple-output (MIMO) systems indoors and outdoors to investigate the performance of the discussed approaches.
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Project title:
Zuverlässige Drahtlose Konnektivität für eine Gesellschaft in Bewegung: - (Christian Doppler Forschungsgesells)