Low-rank plus sparse decomposition for exoplanet detection in direct-imaging ADI sequences. The LLSG algorithm
C. A. Gomez Gonzalez, O. Absil, P.-A. Absil, M. Van Droogenbroeck, D., Mawet, and J. Surdej

TL;DR
The paper introduces LLSG, a novel low-rank plus sparse decomposition algorithm inspired by robust PCA, to improve exoplanet detection in direct-imaging ADI sequences by better separating planetary signals from noise.
Contribution
It proposes a localized low-rank plus sparse decomposition method using randomized algorithms, surpassing PCA in exoplanet detection performance in ADI data.
Findings
LLSG achieves higher signal-to-noise ratio than PCA.
LLSG outperforms PCA in ROC space.
Effective separation of planetary signals from noise.
Abstract
Data processing constitutes a critical component of high-contrast exoplanet imaging. Its role is almost as important as the choice of a coronagraph or a wavefront control system, and it is intertwined with the chosen observing strategy. Among the data processing techniques for angular differential imaging (ADI), the most recent is the family of principal component analysis (PCA) based algorithms. PCA serves, in this case, as a subspace projection technique for constructing a reference point spread function (PSF) that can be subtracted from the science data for boosting the detectability of potential companions present in the data. Unfortunately, when building this reference PSF from the science data itself, PCA comes with certain limitations such as the sensitivity of the lower dimensional orthogonal subspace to non-Gaussian noise. Inspired by recent advances in machine learning…
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