Adaptive Learning Strategies for AoA-Based Outdoor Localization: A Comprehensive Framework
Bac Trinh-Nguyen, Sara Berri, Sin G. Teo, Tram Truong-Huu, Arsenia Chorti

TL;DR
This paper introduces an adaptive AoA-based localization framework for 5G/6G networks, employing offline and online learning strategies to enhance accuracy with varying dataset sizes.
Contribution
It proposes a novel adaptive framework combining hierarchical offline and online learning methods tailored for different dataset scales in outdoor localization.
Findings
Hierarchical offline localization distinguishes LoS and NLoS regions for high accuracy.
Online learning models enable incremental updates with streaming data.
The framework achieves robust localization with limited data, reducing dataset collection efforts.
Abstract
Localization in 5G and 6G networks is essential for important use cases such as intelligent transportation, smart factories, and smart cities. Although deep learning has enabled improving localization accuracy, depending on the deployment scenario and the effort required for dataset collection campaigns on a given infrastructure, the training process for localization models can vary significantly. Furthermore, with respect to feature selection, recent works have demonstrated the robustness of angle-of-arrival (AoA) based localization. In view of these two points, we propose an adaptive framework for AoA-based localization that consists of two alternative learning strategies, each suited either for large or small training datasets. The proposed framework is evaluated on a real, massive multiple input multiple output (mMIMO) orthogonal frequency division multiplexing (OFDM) outdoor…
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