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首页> 外文期刊>Astronomy and astrophysics >Low-rank plus sparse decomposition for exoplanet detection in direct-imaging ADI sequences - The LLSG algorithm
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Low-rank plus sparse decomposition for exoplanet detection in direct-imaging ADI sequences - The LLSG algorithm

机译:低秩加稀疏分解用于直接成像ADI序列中系外行星的检测-LLSG算法

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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 β 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.
机译:上下文。数据处理是高对比度系外行星成像的关键组成部分。它的作用几乎与选择日冕仪或波前控制系统一样重要,并且与所选择的观测策略交织在一起。在用于角差分成像(ADI)的数据处理技术中,最新的是基于主成分分析(PCA)的算法家族。它是上个世纪上半叶开发的一种广泛使用的统计工具。在这种情况下,PCA用作子空间投影技术,用于构建参考点扩展函数(PSF),可以从科学数据中减去该参考点扩展函数,以增强数据中存在的潜在同伴的可检测性。不幸的是,当从科学数据本身构建参考PSF时,PCA受到某些限制,例如低维正交子空间对非高斯噪声的敏感性。目的受机器学习算法(例如健壮的PCA)的最新进展的启发,我们旨在提出一种局部子空间投影技术,该技术在伴随者近乎实时的可检测性方面要超越当前基于PCA的后处理算法。对于将来的直接成像调查很有用。方法。我们使用了机器学习文献中最近提出的随机低秩逼近方法,结合入门阈值技术将ADI图像序列局部分解为低秩,稀疏和高斯噪声分量(LLSG)。这种局部三项分解将星光和相关的斑点噪声与行星信号分离开来,而行星信号主要保留在稀疏项中。我们使用VLT / NACO在βPictoris上获得的长ADI序列上测试了新算法的性能。结果。与标准PCA方法相比,LLSG分解达到更高的信噪比,并且在接收机工作特性空间中总体上具有更好的性能。与全帧标准PCA方法相比,这种三项分解带来了可检测性的提高,尤其是在内部工作角度较小的区域,在该区域内散斑噪声使PCA无法从噪声中识别出真正的同伴。

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