Star cluster classification using deep transfer learning with PHANGS-HST

Author:

Hannon Stephen12ORCID,Whitmore Bradley C3ORCID,Lee Janice C345ORCID,Thilker David A6ORCID,Deger Sinan78ORCID,Huerta E A91011ORCID,Wei Wei11,Mobasher Bahram1ORCID,Klessen Ralf1213ORCID,Boquien Médéric14ORCID,Dale Daniel A15ORCID,Chevance Mélanie1216ORCID,Grasha Kathryn1718ORCID,Sanchez-Blazquez Patricia19ORCID,Williams Thomas2ORCID,Scheuermann Fabian20ORCID,Groves Brent2122ORCID,Kim Hwihyun4ORCID,Kruijssen J M Diederik1623ORCID,

Affiliation:

1. Department of Physics and Astronomy, University of California , Riverside, CA 92507 , USA

2. Max Planck Institut für Astronomie , Königstuhl 17, D-69117 Heidelberg , Germany

3. Space Telescope Science Institute , Baltimore, MD 21218 , USA

4. Gemini Observatory/NSF’s NOIRLab , 950 N Cherry Avenue, Tucson, AZ 85719 , USA

5. Steward Observatory, University of Arizona , Tucson, AZ 85721 , USA

6. Department of Physics and Astronomy, The Johns Hopkins University , Baltimore, MD 21218 , USA

7. TAPIR, California Institute of Technology , Pasadena, CA 91125 , USA

8. The Oskar Klein Centre for Cosmoparticle Physics, Department of Physics, Stockholm University , AlbaNova, SE-106 91 Stockholm , Sweden

9. Data Science and Learning Division, Argonne National Laboratory , Lemont, IL 60439 , USA

10. Department of Computer Science, University of Chicago , Chicago, IL 60637 , USA

11. Department of Physics, University of Illinois at Urbana-Champaign , Urbana, IL 61801 , USA

12. Institut für Theoretische Astrophysik, Zentrum für Astronomie der Universität Heidelberg , D-69120 Heidelberg , Germany

13. Interdiszipliäres Zentrum für Wissenschaftliches Rechnen, Universität Heidelberg , D-69120 Heidelberg , Germany

14. Instituto de Alta Investigación, Universidad de Tarapacá , Casilla 7D, Arica , Chile

15. Department of Physics and Astronomy, University of Wyoming , Laramie, WY 82071 , USA

16. Cosmic Origins Of Life (COOL) Research DAO (coolresearch.io)

17. Research School of Astronomy and Astrophysics, Australian National University , Canberra, ACT 2611 , Australia

18. ARC Centre of Excellence for All Sky Astrophysics in 3 Dimensions (ASTRO 3D) , Stromlo, ACT 2611 , Australia

19. Departamento de Física de la Tierra y Astrofísica, UCM , E-28040 Madrid , Spain

20. Astronomisches Rechen-Institut, Zentrum für Astronomie der Universität Heidelberg , Mönchofstraße 12–14, D-69120 Heidelberg , Germany

21. International Centre for Radio Astronomy Research, The University of Western Australia , 7 Fairway, Crawley, WA 6009 , Australia

22. Research School of Astronomy and Astrophysics, Australian National University, Mount Stromlo Observatory , Weston Creek, ACT 2611 , Australia

23. School of Engineering and Design, Department of Aerospace and Geodesy, Chair of Remote Sensing Technology, Technical University of Munich , Arcisstrße 21, D-80333 Munich , Germany

Abstract

ABSTRACT Currently available star cluster catalogues from the Hubble Space Telescope (HST) imaging of nearby galaxies heavily rely on visual inspection and classification of candidate clusters. The time-consuming nature of this process has limited the production of reliable catalogues and thus also post-observation analysis. To address this problem, deep transfer learning has recently been used to create neural network models that accurately classify star cluster morphologies at production scale for nearby spiral galaxies (D ≲ 20 Mpc). Here, we use HST ultraviolet (UV)–optical imaging of over 20 000 sources in 23 galaxies from the Physics at High Angular resolution in Nearby GalaxieS (PHANGS) survey to train and evaluate two new sets of models: (i) distance-dependent models, based on cluster candidates binned by galaxy distance (9–12, 14–18, and 18–24 Mpc), and (ii) distance-independent models, based on the combined sample of candidates from all galaxies. We find that the overall accuracy of both sets of models is comparable to previous automated star cluster classification studies (∼60–80 per cent) and shows improvement by a factor of 2 in classifying asymmetric and multipeaked clusters from PHANGS-HST. Somewhat surprisingly, while we observe a weak negative correlation between model accuracy and galactic distance, we find that training separate models for the three distance bins does not significantly improve classification accuracy. We also evaluate model accuracy as a function of cluster properties such as brightness, colour, and spectral energy distribution (SED)-fit age. Based on the success of these experiments, our models will provide classifications for the full set of PHANGS-HST candidate clusters (N ∼ 200 000) for public release.

Funder

Space Telescope Science Institute

NASA

ANID

FONDECYT

DFG

European Research Council

Australian Research Council

Australian Government

Horizon 2020 Framework Programme

Publisher

Oxford University Press (OUP)

Subject

Space and Planetary Science,Astronomy and Astrophysics

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