Machine Learning for Exoplanet Detection in High-Contrast Spectroscopy: Revealing Exoplanets by Leveraging Hidden Molecular Signatures in Cross-Correlated Spectra with Convolutional Neural Networks
Emily O. Garvin, Markus J. Bonse, Jean Hayoz, Gabriele Cugno, Jonas, Spiller, Polychronis A. Patapis, Dominique Petit Dit de la Roche, Rakesh, Nath-Ranga, Olivier Absil, Nicolai F. Meinshausen, Sascha P. Quanz

TL;DR
This paper introduces MLCCS, a machine learning approach using neural networks to enhance exoplanet detection in high-contrast spectroscopy by identifying molecular signatures, significantly outperforming traditional S/N based methods.
Contribution
The paper presents MLCCS, a novel machine learning framework employing perceptrons and CNNs for improved exoplanet detection and characterization in spectroscopic data, surpassing traditional methods.
Findings
MLCCS achieves up to 77 times higher detection rates than S/N metrics.
MLCCS significantly improves detection confidence and sensitivity.
The method is adaptable to various instruments and atmospheric conditions.
Abstract
The new generation of observatories and instruments (VLT/ERIS, JWST, ELT) motivate the development of robust methods to detect and characterise faint and close-in exoplanets. Molecular mapping and cross-correlation for spectroscopy use molecular templates to isolate a planet's spectrum from its host star. However, reliance on signal-to-noise ratio (S/N) metrics can lead to missed discoveries, due to strong assumptions of Gaussian independent and identically distributed noise. We introduce machine learning for cross-correlation spectroscopy (MLCCS); the method aims to leverage weak assumptions on exoplanet characterisation, such as the presence of specific molecules in atmospheres, to improve detection sensitivity for exoplanets. MLCCS methods, including a perceptron and unidimensional convolutional neural networks, operate in the cross-correlated spectral dimension, in which patterns…
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