2021
DOI: 10.48550/arxiv.2102.06222
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Super-resolving Herschel imaging: a proof of concept using Deep Neural Networks

Lynge Lauritsen,
Hugh Dickinson,
Jane Bromley
et al.

Abstract: Wide-field sub-millimetre surveys have driven many major advances in galaxy evolution in the past decade, but without extensive follow-up observations the coarse angular resolution of these surveys limits the science exploitation. This has driven the development of various analytical deconvolution methods. In the last half a decade Generative Adversarial Networks have been used to attempt deconvolutions on optical data. Here we present an autoencoder with a novel loss function to overcome this problem in the s… Show more

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