DES to HSC: Detecting low surface brightness galaxies in the Abell 194 cluster using transfer learning
H. Thuruthipilly, Junais, J. Koda, A. Pollo, M. Yagi, H. Yamanoi, Y., Komiyama, M. Romano, K. Ma{\l}ek, D. Donevski

TL;DR
This study demonstrates that transfer learning with transformer models trained on shallower survey data can effectively detect low surface brightness galaxies in deeper observations, leading to new discoveries and insights into galaxy populations.
Contribution
The paper introduces a novel application of transfer learning with transformer models for LSBG detection in deeper HSC data, achieving high accuracy without fine-tuning.
Findings
Identified 171 LSBGs in Abell 194, including 87 new discoveries.
Transformer models achieved a 93% true positive rate without fine-tuning.
Found a linear relationship between UDG numbers and cluster mass.
Abstract
Low surface brightness galaxies (LSBGs) are important for understanding galaxy evolution and cosmological models. The upcoming large-scale surveys are expected to uncover a large number of LSBGs, requiring accurate automated or machine learning-based methods for their detection. We study the scope of transfer learning for the identification of LSBGs. We use transformer models divided into two categories: LSBG Detection Transformer (LSBG DETR) and LSBG Vision Transformer (LSBG ViT), 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. The data from DES and HSC were standardized based on pixel-level surface brightness. We used two transformer ensembles to detect LSBGs. This was followed by a single-component S\'ersic model fit and a final visual inspection to…
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Taxonomy
TopicsAstronomy and Astrophysical Research · Astronomical Observations and Instrumentation
