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Convolutional Radio Modulation Recognition Networks

Tim O'Shea,Johnathan Corgan,T. Clancy

2016 · DOI: 10.1007/978-3-319-44188-7_16
International Conference on Engineering Applications of Neural Networks · 1,198 Citations

TLDR

It is shown that blind temporal learning on large and densely encoded time series using deep convolutional neural networks is viable and a strong candidate approach for this task especially at low signal to noise ratio.

Abstract

We study the adaptation of convolutional neural networks to the complex-valued temporal radio signal domain. We compare the efficacy of radio modulation classification using naively learned features against using expert feature based methods which are widely used today and e show significant performance improvements. We show that blind temporal learning on large and densely encoded time series using deep convolutional neural networks is viable and a strong candidate approach for this task especially at low signal to noise ratio.