Can You Fix My Neural Network? Real-Time Adaptive Waveform Synthesis for Resilient Wireless Signal Classification
Salvatore D'Oro, Francesco Restuccia, Tommaso Melodia

TL;DR
This paper introduces Chares, a DRL-based framework that adaptively synthesizes waveforms in real-time to improve wireless signal classification resilience against dynamic channel disruptions, outperforming existing methods.
Contribution
Chares is the first DRL-based system for real-time adaptive waveform synthesis that enhances wireless classification in highly dynamic environments.
Findings
Increases classification accuracy up to 4.1x without waveform synthesis.
Achieves 1.9x better accuracy than previous methods.
Computes FIRs within 41 microseconds on FPGA.
Abstract
Thanks to its capability of classifying complex phenomena without explicit modeling, deep learning (DL) has been demonstrated to be a key enabler of Wireless Signal Classification (WSC). Although DL can achieve a very high accuracy under certain conditions, recent research has unveiled that the wireless channel can disrupt the features learned by the DL model during training, thus drastically reducing the classification performance in real-world live settings. Since retraining classifiers is cumbersome after deployment, existing work has leveraged the usage of carefully-tailored Finite Impulse Response (FIR) filters that, when applied at the transmitter's side, can restore the features that are lost because of the the channel actions, i.e., waveform synthesis. However, these approaches compute FIRs using offline optimization strategies, which limits their efficacy in highly-dynamic…
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