Self-Supervised Radio Pre-training: Toward Foundational Models for Spectrogram Learning
Aboulfotouh, Ahmed, Eshaghbeigi, Ashkan, Karslidis, Dimitrios, Abou-Zeid, Hatem
–arXiv.org Artificial Intelligence
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.
arXiv.org Artificial Intelligence
Nov-14-2024
- Country:
- North America > Canada
- Ontario > Toronto (0.05)
- Alberta > Census Division No. 6
- Calgary Metropolitan Region > Calgary (0.05)
- North America > Canada
- Genre:
- Research Report > New Finding (0.49)
- Technology: