Automatic detection of low surface brightness galaxies from SDSS images
Zhenping Yi, Jia Li, Wei Du, Meng Liu, Zengxu Liang, Yongguang Xing,, Jingchang Pan, Yude Bu, Xiaoming Kong, Hong Wu

TL;DR
This paper presents LSBG-AD, a deep learning-based model for automatic detection of low surface brightness galaxies in SDSS images, successfully identifying known and new candidates efficiently.
Contribution
The study introduces an end-to-end deep learning model for detecting LSB galaxies directly from survey images without relying on photometric parameters.
Findings
Detected 1197 LSB galaxy candidates from 1120 SDSS images.
116 new LSB galaxy candidates were identified.
Model's candidate properties match known LSB galaxy distributions.
Abstract
Low surface brightness (LSB) galaxies are galaxies with central surface brightness fainter than the night sky. Due to the faint nature of LSB galaxies and the comparable sky background, it is difficult to search LSB galaxies automatically and efficiently from large sky survey. In this study, we established the Low Surface Brightness Galaxies Auto Detect model (LSBG-AD), which is a data-driven model for end-to-end detection of LSB galaxies from Sloan Digital Sky Survey (SDSS) images. Object detection techniques based on deep learning are applied to the SDSS field images to identify LSB galaxies and estimate their coordinates at the same time. Applying LSBG-AD to 1120 SDSS images, we detected 1197 LSB galaxy candidates, of which 1081 samples are already known and 116 samples are newly found candidates. The B-band central surface brightness of the candidates searched by the model ranges…
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Taxonomy
TopicsGalaxies: Formation, Evolution, Phenomena · Astronomy and Astrophysical Research · Gaussian Processes and Bayesian Inference
