Radio Access Technology Characterisation Through Object Detection
Erika Fonseca, Joao F. Santos, Francisco Paisana, and Luiz A. DaSilva

TL;DR
This paper presents a machine learning approach using object detection on spectrograms to classify radio access technologies and extract key parameters, improving spectrum monitoring in shared 5G environments.
Contribution
The proposed method uniquely combines CNN-based waveform classification with object detection to identify multiple parameters of RATs in shared spectrum, enhancing spectrum awareness.
Findings
Achieved 96% accuracy in RAT classification.
Extracted features with 2% precision margin.
Detected over 94% of objects under various conditions.
Abstract
\ac{RAT} classification and monitoring are essential for efficient coexistence of different communication systems in shared spectrum. Shared spectrum, including operation in license-exempt bands, is envisioned in the \ac{5G} standards (e.g., 3GPP Rel. 16). In this paper, we propose a \ac{ML} approach to characterise the spectrum utilisation and facilitate the dynamic access to it. Recent advances in \acp{CNN} enable us to perform waveform classification by processing spectrograms as images. In contrast to other \ac{ML} methods that can only provide the class of the monitored \acp{RAT}, the solution we propose can recognise not only different \acp{RAT} in shared spectrum, but also identify critical parameters such as inter-frame duration, frame duration, centre frequency, and signal bandwidth by using object detection and a feature extraction module to extract features from spectrograms.…
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