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Main Authors: Gallucci, Nicola, Aragnetti, Giacomo, Malagrinò, Matteo, Linsalata, Francesco, Magarini, Maurizio, Mucchi, Lorenzo
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2601.15836
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author Gallucci, Nicola
Aragnetti, Giacomo
Malagrinò, Matteo
Linsalata, Francesco
Magarini, Maurizio
Mucchi, Lorenzo
author_facet Gallucci, Nicola
Aragnetti, Giacomo
Malagrinò, Matteo
Linsalata, Francesco
Magarini, Maurizio
Mucchi, Lorenzo
contents Accurate classification of Radio-Frequency (RF) signals is essential for reliable wearable health-monitoring systems, providing awareness of the interference conditions in which medical protocols operate. In the overcrowded 2.4 GHz ISM band, however, identifying low-power transmissions from medical sensors is challenging due to strong co-channel interference and substantial power asymmetry with coexisting technologies. This work introduces the first open source framework for automatic recognition of SmartBAN signals in Body Area Networks (BANs). The framework combines a synthetic dataset of simulated signals with real RF acquisitions obtained through Software-Defined Radios (SDRs), enabling both controlled and realistic evaluation. Deep convolutional neural networks based on ResNet encoders and U-Net decoders with attention mechanisms are trained and assessed across diverse propagation conditions. The proposed approach achieves over 90% accuracy on synthetic datasets and demonstrates consistent performance on real over-the-air spectrograms. By enabling reliable SmartBAN signal recognition in dense spectral environments, this framework supports interferenceaware coexistence strategies and improves the dependability of wearable healthcare systems.
format Preprint
id arxiv_https___arxiv_org_abs_2601_15836
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle RF Intelligence for Health: Classification of SmartBAN Signals in overcrowded ISM band
Gallucci, Nicola
Aragnetti, Giacomo
Malagrinò, Matteo
Linsalata, Francesco
Magarini, Maurizio
Mucchi, Lorenzo
Networking and Internet Architecture
Accurate classification of Radio-Frequency (RF) signals is essential for reliable wearable health-monitoring systems, providing awareness of the interference conditions in which medical protocols operate. In the overcrowded 2.4 GHz ISM band, however, identifying low-power transmissions from medical sensors is challenging due to strong co-channel interference and substantial power asymmetry with coexisting technologies. This work introduces the first open source framework for automatic recognition of SmartBAN signals in Body Area Networks (BANs). The framework combines a synthetic dataset of simulated signals with real RF acquisitions obtained through Software-Defined Radios (SDRs), enabling both controlled and realistic evaluation. Deep convolutional neural networks based on ResNet encoders and U-Net decoders with attention mechanisms are trained and assessed across diverse propagation conditions. The proposed approach achieves over 90% accuracy on synthetic datasets and demonstrates consistent performance on real over-the-air spectrograms. By enabling reliable SmartBAN signal recognition in dense spectral environments, this framework supports interferenceaware coexistence strategies and improves the dependability of wearable healthcare systems.
title RF Intelligence for Health: Classification of SmartBAN Signals in overcrowded ISM band
topic Networking and Internet Architecture
url https://arxiv.org/abs/2601.15836