J-PLUS: Bayesian object classification with a strum of BANNJOS
A. del Pino, C. L\'opez-Sanjuan, A. Hern\'an-Caballero, H., Dom\'inguez-S\'anchez, R. von Marttens, J.A. Fern\'andez-Ontiveros, P.R.T., Coelho, A. Lumbreras-Calle, J. Vega-Ferrero, F. Jimenez-Esteban, P. Cruz, V., Marra, M. Quartin, C.A. Galarza, R.E. Angulo, A.J. Cenarro, D.

TL;DR
This paper introduces BANNJOS, a Bayesian neural network-based classifier for J-PLUS data, providing probabilistic classifications of stars, QSOs, and galaxies with high accuracy and enabling refined object selection.
Contribution
We develop BANNJOS, the first classifier to deliver full probability distribution functions for object classification in J-PLUS data, outperforming previous methods in accuracy and completeness.
Findings
Achieves over 95% accuracy for objects brighter than r=21.5 mag
Classifies around 20 million galaxies, 1 million QSOs, and 26 million stars
Provides full PDFs enabling refined object selection and identification of complex sources
Abstract
With its 12 optical filters, the Javalambre-Photometric Local Universe Survey (J-PLUS) provides an unprecedented multicolor view of the local Universe. The third data release (DR3) covers 3,192 deg and contains 47.4 million objects. However, the classification algorithms currently implemented in its pipeline are deterministic and based solely on the sources morphology. Our goal is classify the sources identified in the J-PLUS DR3 images into stars, quasi-stellar objects (QSOs), and galaxies. For this task, we present BANNJOS, a machine learning pipeline that uses Bayesian neural networks to provide the probability distribution function (PDF) of the classification. BANNJOS is trained on photometric, astrometric, and morphological data from J-PLUS DR3, Gaia DR3, and CatWISE2020, using over 1.2 million objects with spectroscopic classification from SDSS DR18, LAMOST DR9, DESI EDR, and…
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Taxonomy
TopicsTime Series Analysis and Forecasting · Gaussian Processes and Bayesian Inference · Anomaly Detection Techniques and Applications
