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      Photometry of high-redshift blended galaxies using deep learning

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          ABSTRACT

          The new generation of deep photometric surveys requires unprecedentedly precise shape and photometry measurements of billions of galaxies to achieve their main science goals. At such depths, one major limiting factor is the blending of galaxies due to line-of-sight projection, with an expected fraction of blended galaxies of up to 50 per cent. This proof-of-concept work explores for the first time the use of deep neural networks to estimate the photometry of blended pairs of galaxies in space-based monochrome images similar to the ones that will be delivered by the Euclidspace telescope under simplified idealized conditions. Using a clean sample of isolated galaxies from the CANDELS survey, we artificially blend them and train two different network models to recover the photometry of the two galaxies. We show that our approach can recover the original photometry of the galaxies before being blended with $\sim 7{{\ \rm per\ cent}}$ mean absolute percentage error on flux estimations without any human intervention and without any assumption on the galaxy shape. This represents an improvement of at least a factor of 4 compared to the classical SExtractor approach. We also show that, forcing the network to simultaneously estimate fractional segmentation maps results in a slightly improved photometry. All data products and codes have been made public to ease the comparison with other approaches on a common data set. See https://github.com/aboucaud/coindeblend.

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          Deep Residual Learning for Image Recognition

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            U-Net: Convolutional Networks for Biomedical Image Segmentation

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              Photo-Realistic Single Image Super-Resolution Using a Generative Adversarial Network

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                Author and article information

                Contributors
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                Journal
                Monthly Notices of the Royal Astronomical Society
                Oxford University Press (OUP)
                0035-8711
                1365-2966
                January 2020
                January 11 2020
                January 2020
                January 11 2020
                December 02 2019
                : 491
                : 2
                : 2481-2495
                Affiliations
                [1 ]APC, Astroparticule et Cosmologie, Université Paris Diderot,CNRS/IN2P3, CEA/Irfu, Observatoire de Paris, Sorbonne Paris Cité, 10 rue Alice Domon et Léonie Duquet, 75205 Paris Cedex 13, France
                [2 ]Instituto de Astrofísica de Canarias (IAC), Departamento de Astrofísica, Universidad de La Laguna (ULL), E-38200, La Laguna, Spain
                [3 ]LERMA, Observatoire de Paris, PSL Research University,CNRS, Sorbonne Universités, Université Paris Diderot, F-75014 Paris, France
                [4 ]Scuola Normale Superiore, Piazza dei Cavalieri 7, I-56126 Pisa, Italy
                [5 ]Université Clermont Auvergne, CNRS/IN2P3, LPC, F-63000 Clermont-Ferrand, France
                [6 ]Department of Computer Science, University of Freiburg, Georges-Koehler-Allee 052, D-79110 Freiburg, Germany
                [7 ]Department of Physics and Astronomy, University of North Carolina at Chapel Hill, NC 27599-3255, USA
                [8 ]Institute for Astronomy, University of Edinburgh, Royal Observatory, Edinburgh EH9 3HJ, UK
                [9 ]Institut d’Astrophysique Spatiale, CNRS, Univ. Paris-Sud, Université Paris-Saclay, F-91400 Orsay, France
                [10 ]INAF – Osservatorio Astronomico di Roma, Via Frascati 33, I-00078, Monte Porzio Catone, Italy
                [11 ]Department of Astronomy, University of Geneva, 24 rue du Général-Dufosur, CH-1211 Genève, Switzerland
                [12 ]Sydney Informatics Hub, The University of Sydney, Sydney, NSW 2008, Australia
                [13 ]Instituto de Astrofśica e Ciências do Espaço, Universidade do Porto, CAUP, Rua das Estrelas, P-4150-762 Porto, Portugal
                Article
                10.1093/mnras/stz3056
                81971b68-f2c5-4b8a-92c7-53791ac310f2
                © 2019

                https://academic.oup.com/journals/pages/open_access/funder_policies/chorus/standard_publication_model

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