Issue |
A&A
Volume 695, March 2025
|
|
---|---|---|
Article Number | A106 | |
Number of page(s) | 19 | |
Section | Catalogs and data | |
DOI | https://doi.org/10.1051/0004-6361/202452934 | |
Published online | 17 March 2025 |
DES to HSC: Detecting low-surface-brightness galaxies in the Abell 194 cluster using transfer learning
1
National Centre for Nuclear Research,
Pasteura 7,
02-093
Warsaw, Poland
2
Instituto de Astrofísica de Canarias,
Vía Láctea S/N,
38205
La Laguna, Spain
3
Departamento de Astrofísica, Universidad de La Laguna,
38206
La Laguna, Spain
4
Department of Physics and Astronomy, Stony Brook University,
Stony Brook,
NY
11794-3800,
USA
5
Astronomical Observatory of Jagiellonian University,
Orla 171,
30-244
Krakow, Poland
6
National Astronomical Observatory of Japan,
Mitaka, Tokyo
181-8588, Japan
7
Faculty of Science and Technology, Seikei University,
3-3-1 Kichijoji-Kitamachi,
Musashino, Tokyo
180-8633, Japan
8
Department of Advanced Sciences, Faculty of Science and Engineering, Hosei University,
3-7-2 Kajino-cho,
Koganei, Tokyo
184-8584, Japan
9
Graduate University for Advanced Studies (SOKENDAI),
Mitaka, Tokyo
181-8588, Japan
10
Max-Planck-Institut für Radioastronomie,
Auf dem Hügel 69,
53121
Bonn, Germany
11
INAF – Osservatorio Astronomico di Padova,
Vicolo dell’Osservatorio 5,
35122,
Padova, Italy
12
Aix-Marseille Univ., CNRS, CNES, LAM,
Marseille, France
★ Corresponding authors; hareesh.thuruthipilly@ncbj.gov.pl; junais@ncbj.gov.pl; jin.koda@stonybrook.edu
Received:
8
November
2024
Accepted:
3
February
2025
Context. Low-surface-brightness galaxies (LSBGs) are important for understanding galaxy evolution and cosmological models. Nevertheless, the physical properties of these objects remain unknown, as even the detection of LSBGs can be challenging. Upcoming large-scale surveys are expected to uncover a large number of LSBGs, which will require accurate automated or machine learningbased methods for their detection.
Aims. We study the scope of transfer learning for the identification of LSBGs. We used transformer models trained on Dark Energy Survey (DES) data to identify LSBGs from dedicated Hyper Suprime-Cam (HSC) observations of the Abell 194 cluster, which are two magnitudes deeper than DES. A new sample of LSBGs and ultra-diffuse galaxies (UDGs) around Abell 194 was compiled, and their properties were investigated.
Methods. We used eight models, divided into two categories: LSBG Detection Transformer (LSBG DETR) and LSBG Vision Transformer (LSBG ViT). The data from DES and HSC were standardised based on the pixel-level surface brightness. We used an ensemble of four LSBG DETR models and another ensemble of four LSBG ViT models to detect LSBGs. This was followed by a singlecomponent Sérsic model fit and a final visual inspection to filter out potential false positives and improve sample purity.
Results. We present a sample of 171 LSBGs in the Abell 194 cluster using HSC data, including 87 new discoveries. Of these, 159 were identified using transformer models, and 12 additional LSBGs were found through visual inspection. The transformer model achieves a true positive rate of 93% in HSC data without any fine-tuning. Among the LSBGs, 28 were classified as UDGs. The number of UDGs and the radial UDG number density suggests a linear relationship between UDG numbers and cluster mass on a log scale. The UDGs share similar Sérsic parameters with dwarf galaxies and occupy the extended end of the Reff − Mg plane, suggesting they might be an extended sub-population of dwarf galaxies. We also found that LSBGs and UDGs near the cluster centre are brighter and redder than those in outer regions.
Conclusions. We have demonstrated that transformer models trained on shallower surveys can be successfully applied to deeper surveys with appropriate data normalisation. This approach allows us to use existing data and apply the knowledge to upcoming and ongoing surveys, such as the Rubin Observatory Legacy Survey of Space and Time (LSST) and Euclid.
Key words: methods: data analysis / methods: observational / techniques: image processing / catalogs / galaxies: dwarf / galaxies: evolution
© The Authors 2025
Open Access article, published by EDP Sciences, under the terms of the Creative Commons Attribution License (https://creativecommons.org/licenses/by/4.0), which permits unrestricted use, distribution, and reproduction in any medium, provided the original work is properly cited.
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