Multiwavelength classification of X-ray selected galaxy cluster candidates using convolutional neural networks
Matej Kosiba, Maggie Lieu, Bruno Altieri, Nicolas Clerc, Lorenzo, Faccioli, Sarah Kendrew, Ivan Valtchanov, Tatyana Sadibekova, Marguerite, Pierre, Filip Hroch, Norbert Werner, Luk\'a\v{s} Burget, Christian Garrel,, Elias Koulouridis, Evelina Gaynullina, Mona Molham

TL;DR
This paper develops a convolutional neural network approach to automatically classify galaxy cluster candidates using combined X-ray and optical data, reducing reliance on slow visual inspections and improving accuracy.
Contribution
The study introduces a novel CNN-based method trained on expert and citizen science data for efficient galaxy cluster candidate classification.
Findings
Achieved 90% accuracy in binary classification of clusters and non-clusters.
Demonstrated the effectiveness of CNNs on combined X-ray and optical data.
Showed potential for future improvements in automated galaxy cluster identification.
Abstract
Galaxy clusters appear as extended sources in XMM-Newton images, but not all extended sources are clusters. So, their proper classification requires visual inspection with optical images, which is a slow process with biases that are almost impossible to model. We tackle this problem with a novel approach, using convolutional neural networks (CNNs), a state-of-the-art image classification tool, for automatic classification of galaxy cluster candidates. We train the networks on combined XMM-Newton X-ray observations with their optical counterparts from the all-sky Digitized Sky Survey. Our data set originates from the X-CLASS survey sample of galaxy cluster candidates, selected by a specially developed pipeline, the XAmin, tailored for extended source detection and characterisation. Our data set contains 1 707 galaxy cluster candidates classified by experts. Additionally, we create an…
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