The VVV Templates Project. Towards an Automated Classification of VVV Light-Curves. I. Building a database of stellar variability in the near-infrared
R. Angeloni, R. Contreras Ramos, M. Catelan, I. D\'ek\'any, F. Gran,, J. Alonso-Garc\'ia, M. Hempel, C. Navarrete, H. Andrews, A. Aparicio, J. C., Beam\'in, C. Berger, J. Borissova, C. Contreras Pe\~na, A. Cunial, R. de, Grijs, N. Espinoza, S. Eyheramendy, C. E. Ferreira Lopes

TL;DR
This paper introduces the VVV Templates Project, which creates a comprehensive infrared stellar variability database to enable machine learning-based automated classification of VVV survey light-curves in the near-infrared.
Contribution
It constructs the first extensive database of infrared stellar variability templates, facilitating automated classification of VVV survey data.
Findings
Collected hundreds of high-quality infrared light-curves
Developed a database for training machine learning algorithms
Laid groundwork for future automated classification results
Abstract
Context. The Vista Variables in the V\'ia L\'actea (VVV) ESO Public Survey is a variability survey of the Milky Way bulge and an adjacent section of the disk carried out from 2010 on ESO Visible and Infrared Survey Telescope for Astronomy (VISTA). VVV will eventually deliver a deep near-IR atlas with photometry and positions in five passbands (ZYJHK_S) and a catalogue of 1-10 million variable point sources - mostly unknown - which require classifications. Aims. The main goal of the VVV Templates Project, that we introduce in this work, is to develop and test the machine-learning algorithms for the automated classification of the VVV light-curves. As VVV is the first massive, multi-epoch survey of stellar variability in the near-infrared, the template light-curves that are required for training the classification algorithms are not available. In the first paper of the series we describe…
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Taxonomy
TopicsStellar, planetary, and galactic studies · Astronomy and Astrophysical Research
