Optimization of Deep Learning Models for Radio Galaxy Classification
Philipp Denzel, Manuel Weiss, Elena Gavagnin, Frank-Peter Schilling

TL;DR
This paper demonstrates that existing pretrained deep learning models can be effectively adapted for radio galaxy classification, achieving high accuracy without complex modifications, thus aiding future large-scale radio surveys like SKAO.
Contribution
It shows that standard pretrained neural networks can be fine-tuned for radio galaxy classification, matching top models with minimal architectural changes.
Findings
Pretrained models achieve nearly top-tier accuracy.
Ensemble methods boost performance over 90%.
Results are transferable to other radio survey data.
Abstract
Modern radio telescope surveys, capable of detecting billions of galaxies in wide-field surveys, have made manual morphological classification impracticable. This applies in particular when the Square Kilometre Array Observatory (SKAO) becomes operable in 2027, which is expected to close an important gap in our understanding of the Epoch of Reionization (EoR) and other areas of astrophysics. To this end, foreground objects, contaminants of the 21-cm signal, need to be identified and subtracted. Source finding and identification is thus an important albeit challenging task. We investigate the ability of AI and deep learning (DL) methods that have been previously trained on other data domains to localize and classify radio galaxies with minimal changes to their architectures. Various well-known pretrained neural network architectures for image classification and object detection are…
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Taxonomy
TopicsRadio Astronomy Observations and Technology · Galaxies: Formation, Evolution, Phenomena · Electrical and Electromagnetic Research
