TL;DR
This paper introduces a deep learning-based method for mapping exoplanet surfaces and clouds using spin-orbit tomography, enabling the detection of habitability indicators like persistent clouds and liquid water on exo-Earths.
Contribution
It proposes a novel neural network approach with learned regularization from mock surfaces, improving surface and cloud mapping accuracy from limited observational data.
Findings
Reliable surface mapping with single passband observations.
Potential to map persistent and non-persistent clouds on exoplanets.
First method to detect active climate systems on exoplanets.
Abstract
Finding potential life harboring exo-Earths is one of the aims of exoplanetary science. Detecting signatures of life in exoplanets will likely first be accomplished by determining the bulk composition of the planetary atmosphere via reflected/transmitted spectroscopy. However, a complete understanding of the habitability conditions will surely require mapping the presence of liquid water, continents and/or clouds. Spin-orbit tomography is a technique that allows us to obtain maps of the surface of exoplanets around other stars using the light scattered by the planetary surface. We leverage the potential of deep learning and propose a mapping technique for exo-Earths in which the regularization is learned from mock surfaces. The solution of the inverse mapping problem is posed as a deep neural network that can be trained end-to-end with suitable training data. We propose in this work to…
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