From DES to KiDS: Domain adaptation for cross-survey detection of low-surface-brightness galaxies
Hareesh Thuruthipilly, Krzysztof Lisiecki, Junais, Katarzyna Ma{\l}ek, Agnieszka Pollo, William J. Pearson, Antonio Vanzanella, Saptarshi Pal, Miguel Figueira, Pratik Dabhade, Anna Durkalec, Aidan P. Cotter, Unnikrishnan Sureshkumar, Nandini Hazra, Patryk Matera, Subhrata Dey

TL;DR
This study demonstrates that domain adaptation with deep learning models effectively identifies low-surface-brightness galaxies across different surveys, facilitating large-scale, homogeneous catalogues for upcoming astronomical projects.
Contribution
It introduces a domain adaptation approach using CNNs and transformers trained on DES data to detect LSBGs in KiDS DR5, enabling robust cross-survey identification.
Findings
Identified 20,180 LSBGs and 434 UDGs in KiDS DR5.
LSBG properties are consistent with previous surveys and follow a size-luminosity relation.
Environmental effects influence LSBG colours and star formation activity.
Abstract
Low-surface-brightness galaxies (LSBGs) are vital for understanding galaxy formation, but their diffuse nature makes them challenging to detect. Upcoming large-scale surveys are expected to uncover large numbers of LSBGs, requiring robust automated methods to identify them across heterogeneous datasets. As a precursor to the Legacy Survey of Space and Time (LSST) and Euclid, we explore domain adaptation techniques for cross-survey LSBG identification. Using models trained on the Dark Energy Survey (DES), we search for LSBGs in the Kilo-Degree Survey Data Release 5 (KiDS DR5). We used an ensemble consisting of one convolutional neural network (CNN) and two transformer models trained on DES cutouts and applied to KiDS DR5 imaging data. Structural parameters were estimated with galfitm, and photometric redshifts and stellar population properties were estimated through spectral energy…
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