Combining statistical learning with deep learning for improved exoplanet detection and characterization
Olivier Flasseur, Th\'eo Bodrito, Julien Mairal, Jean Ponce, Maud, Langlois, Anne-Marie Lagrange

TL;DR
This paper introduces a combined statistical and deep learning approach for improved detection and characterization of exoplanets in high-contrast direct imaging, demonstrating superior performance on VLT/SPHERE datasets.
Contribution
It presents a novel three-step algorithm integrating PACO-based preprocessing with CNNs for detection and photometry inference, trained with a custom data augmentation strategy.
Findings
Achieves better precision-recall trade-off than existing methods
Effective joint processing of ADI and ASDI datasets
Demonstrates improved detection in VLT/SPHERE data
Abstract
In direct imaging at high contrast, the bright glare produced by the host star makes the detection and the characterization of sub-stellar companions particularly challenging. In spite of the use of an extreme adaptive optics system combined with a coronagraphic mask to strongly attenuate the starlight contamination, dedicated post-processing methods combining several images recorded with the pupil tracking mode of the telescope are needed to reach the required contrast. In that context, we recently proposed to combine the statistics-based model of PACO with a deep learning approach in a three-step algorithm. First, the data are centered and whitened locally using the PACO framework to improve the stationarity and the contrast in a preprocessing step. Second, a convolutional neural network (CNN) is trained in a supervised fashion to detect the signature of synthetic sources in the…
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