DART-Vetter: A Deep LeARning Tool for automatic triage of exoplanet candidates
Stefano Fiscale (1, 2, 3), Laura Inno (2, 3), Alessandra Rotundi (1, 2), Angelo Ciaramella (2), Alessio Ferone (2), Christian Magliano (3, 4), Luca Cacciapuoti (5), Veselin Kostov (6, 7), Elisa Quintana (6), Giovanni Covone (3, 4, 8), Maria Teresa Muscari Tomajoli (1, 2)

TL;DR
DART-Vetter is a deep learning tool designed to automatically distinguish exoplanet candidates from false positives in transit survey data, improving efficiency and robustness in planetary detection workflows.
Contribution
It introduces a simple, compact convolutional neural network architecture that effectively triages exoplanet candidates across multiple survey datasets, outperforming existing models.
Findings
Achieves 91% recall rate on combined TESS and Kepler data.
Demonstrates high performance despite a simpler architecture.
Shows good generalization to different datasets and conditions.
Abstract
In the identification of new planetary candidates in transit surveys, the employment of Deep Learning models proved to be essential to efficiently analyse a continuously growing volume of photometric observations. To further improve the robustness of these models, it is necessary to exploit the complementarity of data collected from different transit surveys such as NASA's Kepler, Transiting Exoplanet Survey Satellite (TESS), and, in the near future, the ESA PLAnetary Transits and Oscillation of stars (PLATO) mission. In this work, we present a Deep Learning model, named DART-Vetter, able to distinguish planetary candidates (PC) from false positives signals (NPC) detected by any potential transiting survey. DART-Vetter is a Convolutional Neural Network that processes only the light curves folded on the period of the relative signal, featuring a simpler and more compact architecture with…
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