Bibcode
Angeloni, R.; Contreras Ramos, R.; Catelan, M.; Dékány, I.; Gran, F.; Alonso-García, J.; Hempel, M.; Navarrete, C.; Andrews, H.; Aparicio, A.; Beamín, J. C.; Berger, C.; Borissova, J.; Contreras Peña, C.; Cunial, A.; de Grijs, R.; Espinoza, N.; Eyheramendy, S.; Ferreira Lopes, C. E.; Fiaschi, M.; Hajdu, G.; Han, J.; Hełminiak, K. G.; Hempel, A.; Hidalgo, S. L.; Ita, Y.; Jeon, Y.-B.; Jordán, A.; Kwon, J.; Lee, J. T.; Martín, E. L.; Masetti, N.; Matsunaga, N.; Milone, A. P.; Minniti, D.; Morelli, L.; Murgas, F.; Nagayama, T.; Navarro, C.; Ochner, P.; Pérez, P.; Pichara, K.; Rojas-Arriagada, A.; Roquette, J.; Saito, R. K.; Siviero, A.; Sohn, J.; Sung, H.-I.; Tamura, M.; Tata, R.; Tomasella, L.; Townsend, B.; Whitelock, P.
Bibliographical reference
Astronomy and Astrophysics, Volume 567, id.A100, 11 pp.
Advertised on:
7
2014
Journal
Citations
33
Refereed citations
30
Description
Context. The Vista Variables in the Vía Láctea (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). The VVV survey will
eventually deliver a deep near-IR atlas with photometry and positions in
five passbands (ZYJHKS) and a catalogue of 1-10 million
variable point sources - mostly unknown - that require classifications.
Aims: The main goal of the VVV Templates Project, which 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-IR, the template light-curves that are required for training
the classification algorithms are not available. In the first paper of
the series we describe the construction of this comprehensive database
of infrared stellar variability. Methods: First, we performed a
systematic search in the literature and public data archives; second, we
coordinated a worldwide observational campaign; and third, we exploited
the VVV variability database itself on (optically) well-known stars to
gather high-quality infrared light-curves of several hundreds of
variable stars. Results: We have now collected a significant (and
still increasing) number of infrared template light-curves. This
database will be used as a training-set for the machine-learning
algorithms that will automatically classify the light-curves produced by
VVV. The results of such an automated classification will be covered in
forthcoming papers of the series.
Related projects
Milky Way and Nearby Galaxies
The general aim of the project is to research the structure, evolutionary history and formation of galaxies through the study of their resolved stellar populations, both from photometry and spectroscopy. The group research concentrates in the most nearby objects, namely the Local Group galaxies including the Milky Way and M33 under the hypothesis
Martín
López Corredoira