Alejandro Lancho, Amir Weiss, Gary C. F. Lee, Tejas Jayashankar, Binoy Kurien, Yury Polyanskiy, Gregory W. Wornell
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RF Challenge: The Data-Driven Radio Frequency Signal Separation Challenge
This paper addresses the critical problem of interference rejection in
radio-frequency (RF) signals using a novel, data-driven approach that leverages
state-of-the-art AI models. Traditionally, interference rejection algorithms
are manually tailored to specific types of interference. This work introduces a
more scalable data-driven solution and contains the following contributions.
First, we present an insightful signal model that serves as a foundation for
developing and analyzing interference rejection algorithms. Second, we
introduce the RF Challenge, a publicly available dataset featuring diverse RF
signals along with code templates, which facilitates data-driven analysis of RF
signal problems. Third, we propose novel AI-based rejection algorithms,
specifically architectures like UNet and WaveNet, and evaluate their
performance across eight different signal mixture types. These models
demonstrate superior performance exceeding traditional methods like matched
filtering and linear minimum mean square error estimation by up to two orders
of magnitude in bit-error rate. Fourth, we summarize the results from an open
competition hosted at 2024 IEEE International Conference on Acoustics, Speech,
and Signal Processing (ICASSP 2024) based on the RF Challenge, highlighting the
significant potential for continued advancements in this area. Our findings
underscore the promise of deep learning algorithms in mitigating interference,
offering a strong foundation for future research.