Low-rank plus sparse decomposition for exoplanet detection in direct-imaging ADI sequences The LLSG algorithm

被引:51
|
作者
Gonzalez, C. A. Gomez [1 ]
Absil, O. [1 ]
Absil, P. -A. [2 ]
Van Droogenbroeck, M. [3 ]
Mawet, D. [4 ]
Surdej, J. [1 ]
机构
[1] Univ Liege, Inst Astrophys & Geophys, Allee Six Aout 19c, B-4000 Liege, Belgium
[2] Catholic Univ Louvain, Dept Math Engn, B-1348 Louvain La Neuve, Belgium
[3] Univ Liege, Inst Montefiore, B-4000 Liege, Belgium
[4] CALTECH, Dept Astron, Pasadena, CA 91125 USA
来源
ASTRONOMY & ASTROPHYSICS | 2016年 / 589卷
基金
欧洲研究理事会;
关键词
methods: data analysis; techniques: high angular resolution; techniques: image processing; planetary systems; planets and satellites: detection; POINT-SPREAD FUNCTION; CONTRAST; STATISTICS; DISKS;
D O I
10.1051/0004-6361/201527387
中图分类号
P1 [天文学];
学科分类号
0704 ;
摘要
Context. 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. It is a widely used statistical tool developed during the first half of the past century. 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. Aims. Inspired by recent advances in machine learning algorithms such as robust PCA, we aim to propose a localized subspace projection technique that surpasses current PCA-based post-processing algorithms in terms of the detectability of companions at near real-time speed, a quality that will be useful for future direct imaging surveys. Methods. We used randomized low-rank approximation methods recently proposed in the machine learning literature, coupled with entry-wise thresholding to decompose an ADI image sequence locally into low-rank, sparse, and Gaussian noise components (LLSG). This local three-term decomposition separates the starlight and the associated speckle noise from the planetary signal, which mostly remains in the sparse term. We tested the performance of our new algorithm on a long ADI sequence obtained on beta Pictoris with VLT/NACO. Results. Compared to a standard PCA approach, LLSG decomposition reaches a higher signal-to-noise ratio and has an overall better performance in the receiver operating characteristic space. This three-term decomposition brings a detectability boost compared to the full-frame standard PCA approach, especially in the small inner working angle region where complex speckle noise prevents PCA from discerning true companions from noise.
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页数:9
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