Generative Adversarial Learning for Spectrum Sensing
Kemal Davaslioglu, Yalin E. Sagduyu

TL;DR
This paper introduces a GAN-based method to generate synthetic data and adapt training data for spectrum sensing in cognitive radio, improving classifier accuracy with limited initial data across changing spectrum environments.
Contribution
It presents a novel GAN-based approach for data augmentation and domain adaptation tailored for spectrum sensing in cognitive radio applications.
Findings
Data augmentation significantly improves classifier accuracy.
Domain adaptation maintains accuracy across spectrum changes.
Method works with limited initial training data.
Abstract
A novel approach of training data augmentation and domain adaptation is presented to support machine learning applications for cognitive radio. Machine learning provides effective tools to automate cognitive radio functionalities by reliably extracting and learning intrinsic spectrum dynamics. However, there are two important challenges to overcome, in order to fully utilize the machine learning benefits with cognitive radios. First, machine learning requires significant amount of truthed data to capture complex channel and emitter characteristics, and train the underlying algorithm (e.g., a classifier). Second, the training data that has been identified for one spectrum environment cannot be used for another one (e.g., after channel and emitter conditions change). To address these challenges, a generative adversarial network (GAN) with deep learning structures is used to 1)~generate…
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