SigCLR: A contrastive learning approach to unsupervised modulation recognition and novelty detection
N. Bruce*,
B. Moa,
S. Harrison and
P.F. Driessen*: corresponding author
Pre-published on:
March 26, 2025
Published on:
—
Abstract
We introduce a contrastive learning architecture for radio datasets called SigCLR. We show how this method of unsupervised machine learning can be applied for a variety of tasks including but not limited to modulation recognition and novelty detection. We show results for a functioning modulation class detector, where an unknown signal can be passed into the trained network and it can be compared to a number of known modulations.
DOI: https://doi.org/10.22323/1.471.0025
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