2022
DOI: 10.48550/arxiv.2207.00351
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Learning to detect RFI in radio astronomy without seeing it

Michael Mesarcik,
Albert-Jan Boonstra,
Elena Ranguelova
et al.

Abstract: Radio Frequency Interference (RFI) corrupts astronomical measurements, thus affecting the performance of radio telescopes. To address this problem, supervised segmentation models have been proposed as candidate solutions to RFI detection. However, the unavailability of large labelled datasets, due to the prohibitive cost of annotating, makes these solutions unusable. To solve these shortcomings, we focus on the inverse problem; training models on only uncontaminated emissions thereby learning to discriminate R… Show more

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