Combining multi-spectral data with statistical and deep-learning models for improved exoplanet detection in direct imaging at high contrast
This work addresses the challenge of exoplanet detection for astronomers, representing an incremental improvement over existing methods.
The authors tackled the problem of detecting faint exoplanet signals in direct imaging by learning a model of nuisance components from observations, which improved the precision-recall trade-off and outperformed a state-of-the-art statistical method.
Exoplanet detection by direct imaging is a difficult task: the faint signals from the objects of interest are buried under a spatially structured nuisance component induced by the host star. The exoplanet signals can only be identified when combining several observations with dedicated detection algorithms. In contrast to most of existing methods, we propose to learn a model of the spatial, temporal and spectral characteristics of the nuisance, directly from the observations. In a pre-processing step, a statistical model of their correlations is built locally, and the data are centered and whitened to improve both their stationarity and signal-to-noise ratio (SNR). A convolutional neural network (CNN) is then trained in a supervised fashion to detect the residual signature of synthetic sources in the pre-processed images. Our method leads to a better trade-off between precision and recall than standard approaches in the field. It also outperforms a state-of-the-art algorithm based solely on a statistical framework. Besides, the exploitation of the spectral diversity improves the performance compared to a similar model built solely from spatio-temporal data.