2020
DOI: 10.48550/arxiv.2011.03525
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SigNet: A Novel Deep Learning Framework for Radio Signal Classification

Abstract: Deep learning methods achieve great success in many areas due to their powerful feature extraction capabilities and end-to-end training mechanism, and recently they are also introduced for radio signal modulation classification. In this paper, we propose a novel deep learning framework called SigNet, where a signal-to-matrix (S2M) operator is adopted to convert the original signal into a square matrix first and is co-trained with a follow-up CNN architecture for classification. This model is further accelerate… Show more

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“…The experiments are conducted on three publicly available datasets [21], including RML2016.10A, RML2016.04C, and RML2018.01A. However, in our experiments, only 10 categories of signals in each dataset are used.…”
Section: A Datasetsmentioning
confidence: 99%
“…The experiments are conducted on three publicly available datasets [21], including RML2016.10A, RML2016.04C, and RML2018.01A. However, in our experiments, only 10 categories of signals in each dataset are used.…”
Section: A Datasetsmentioning
confidence: 99%