2021
DOI: 10.48550/arxiv.2112.03564
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Radio Galaxy Zoo: Giant Radio Galaxy Classification using Multi-Domain Deep Learning

H. Tang,
A. M. M. Scaife,
O. I. Wong
et al.

Abstract: In this work we explore the potential of multi-domain multi-branch convolutional neural networks (CNNs) for identifying comparatively rare giant radio galaxies from large volumes of survey data, such as those expected for new generation radio telescopes like the SKA and its precursors. The approach presented here allows models to learn jointly from multiple survey inputs, in this case NVSS and FIRST, as well as incorporating numerical redshift information. We find that the inclusion of multi-resolution survey … Show more

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