English

Self-Supervised Radio Pre-training: Toward Foundational Models for Spectrogram Learning

Signal Processing 2024-11-18 v1 Artificial Intelligence Machine Learning Networking and Internet Architecture

Abstract

Foundational deep learning (DL) models are general models, trained on large, diverse, and unlabelled datasets, typically using self-supervised learning techniques have led to significant advancements especially in natural language processing. These pretrained models can be fine-tuned for related downstream tasks, offering faster development and reduced training costs, while often achieving improved performance. In this work, we introduce Masked Spectrogram Modeling, a novel self-supervised learning approach for pretraining foundational DL models on radio signals. Adopting a Convolutional LSTM architecture for efficient spatio-temporal processing, we pretrain the model with an unlabelled radio dataset collected from over-the-air measurements. Subsequently, the pretrained model is fine-tuned for two downstream tasks: spectrum forecasting and segmentation. Experimental results demonstrate that our methodology achieves competitive performance in both forecasting accuracy and segmentation, validating its effectiveness for developing foundational radio models.

Keywords

Cite

@article{arxiv.2411.09849,
  title  = {Self-Supervised Radio Pre-training: Toward Foundational Models for Spectrogram Learning},
  author = {Ahmed Aboulfotouh and Ashkan Eshaghbeigi and Dimitrios Karslidis and Hatem Abou-Zeid},
  journal= {arXiv preprint arXiv:2411.09849},
  year   = {2024}
}
R2 v1 2026-06-28T20:00:36.617Z