Publication

RFSynth: Data generation and testing platform for spectrum information systems

Hari Prasad Sankar* , Raghav Subbaraman* , Tianyi Hu , Dinesh Bharadia

IEEE DySPAN 2024 2024

Spectrum Sensing Communications
RFSynth visual

Section 1

Abstract

The paper presents a scalable RF data generation framework which aims to address the challenges of limited data generation/testing platforms for spectrum sensing systems. The proposed framework combines simulation and real-world data generation methods to enable large and diverse data sets for training and testing RF ML models and spectrum sensing systems. The framework includes modules for metadata generation which allows for easy experimentation. The effectiveness of the proposed framework is demonstrated through experiments including signal detection and modulation classification. This paper contributes to the development of a comprehensive framework for generating RF IQ data with ease that can significantly reduce the development and deployment time of complex wireless systems.

Abstract figure

Media

Video

Citation

Reference

Sankar, H. P., Subbaraman, R., Hu, T., & Bharadia, D. (2024). RFSynth: Data generation and testing platform for spectrum information systems. In 21st USENIX Symposium on Networked Systems Design and Implementation (IEEE DySPAN 24).