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[ascl:2506.008] DART-Vetter: Convolutional Neural Network to distinguish planetary transits from false positives

DART-Vetter distinguishes planetary candidates from false positives detected in any transiting survey, and is tailored for photometric data collected from space-based missions. The Convolutional Neural Network is trained on Kepler and TESS Threshold Crossing Events (TCEs), and processes only light curves folded on the period of the relative signal. DART-Vetter has a simple and compact architecture; it is lightweight enough to be executed on personal laptops.

Code site:
https://github.com/stefanofisc/dartvetter_apj https://github.com/stefanofisc/dartvetter
Described in:
https://ui.adsabs.harvard.edu/abs/2025arXiv250605556F
Bibcode:
2025ascl.soft06008F

Views: 13

ascl:2506.008
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