On the discovery of stars, quasars, and galaxies in the Southern Hemisphere with S-PLUS DR2
L. Nakazono, C. Mendes de Oliveira, N. S. T. Hirata, S. Jeram, C., Queiroz, Stephen S. Eikenberry, A. H. Gonzalez, R. Abramo, R. Overzier, M., Espadoto, A. Martinazzo, L. Sampedro, F. R. Herpich, F. Almeida-Fernandes, A., Werle, C. E. Barbosa, L. Sodr\'e Jr., E. V. Lima

TL;DR
This paper presents a new catalogue of stars, quasars, and galaxies in the Southern Hemisphere using a 12-band filter system and machine learning classification, achieving high accuracy and robustness, and providing a valuable resource for astronomical research.
Contribution
It introduces a novel classification approach using a 12-band filter system and WISE data, improving object classification performance and robustness against missing data in the S-PLUS DR2 survey.
Findings
Achieved over 95% purity and completeness for quasars, stars, and galaxies.
Demonstrated robustness of classification against missing WISE data.
Provided a large, publicly available catalogue of classified objects.
Abstract
This paper provides a catalogue of stars, quasars, and galaxies for the Southern Photometric Local Universe Survey Data Release 2 (S-PLUS DR2) in the Stripe 82 region. We show that a 12-band filter system (5 Sloan-like and 7 narrow bands) allows better performance for object classification than the usual analysis based solely on broad bands (regardless of infrared information). Moreover, we show that our classification is robust against missing values. Using spectroscopically confirmed sources retrieved from the Sloan Digital Sky Survey DR16 and DR14Q, we train a random forest classifier with the 12 S-PLUS magnitudes + 4 morphological features. A second random forest classifier is trained with the addition of the W1 (3.4 m) and W2 (4.6 m) magnitudes from the Wide-field Infrared Survey Explorer (WISE). Forty-four percent of our catalogue have WISE counterparts and are provided…
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