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PynPoint: a modular pipeline architecture for processing and analysis of high-contrast imaging data ? ??

机译:PynPoint:用于处理和分析高对比度成像数据的模块化管道体系结构。 ??

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Context. The direct detection and characterization of planetary and substellar companions at small angular separations is a rapidly advancing field. Dedicated high-contrast imaging instruments deliver unprecedented sensitivity, enabling detailed insights into the atmospheres of young low-mass companions. In addition, improvements in data reduction and point spread function (PSF)-subtraction algorithms are equally relevant for maximizing the scientific yield, both from new and archival data sets. Aims. We aim at developing a generic and modular data-reduction pipeline for processing and analysis of high-contrast imaging data obtained with pupil-stabilized observations. The package should be scalable and robust for future implementations and particularly suitable for the 3–5 μ m wavelength range where typically thousands of frames have to be processed and an accurate subtraction of the thermal background emission is critical. Methods. PynPoint is written in Python 2.7 and applies various image-processing techniques, as well as statistical tools for analyzing the data, building on open-source Python packages. The current version of PynPoint has evolved from an earlier version that was developed as a PSF-subtraction tool based on principal component analysis (PCA). Results. The architecture of PynPoint has been redesigned with the core functionalities decoupled from the pipeline modules. Modules have been implemented for dedicated processing and analysis steps, including background subtraction, frame registration, PSF subtraction, photometric and astrometric measurements, and estimation of detection limits. The pipeline package enables end-to-end data reduction of pupil-stabilized data and supports classical dithering and coronagraphic data sets. As an example, we processed archival VLT/NACO L ′ and M ′ data of β Pic b and reassessed the brightness and position of the planet with a Markov chain Monte Carlo analysis; we also provide a derivation of the photometric error budget.
机译:上下文。在小角度间隔处直接探测和表征行星和星际伴星是一个迅速发展的领域。专用的高对比度成像仪器可提供前所未有的灵敏度,使您能够深入了解年轻的低质量同伴的氛围。此外,改进数据缩减和点扩散函数(PSF)减法算法对于从新数据集和档案数据集最大化科学收率同样重要。目的我们旨在开发一种通用的模块化数据缩减管道,用于处理和分析通过瞳孔稳定观测获得的高对比度成像数据。该封装应具有可扩展性和鲁棒性,以适合将来的实现,尤其适合于3–5μm波长范围,在该波长范围内通常必须处理数千个帧,并且准确减去热本底辐射至关重要。方法。 PynPoint是用Python 2.7编写的,并基于开放源代码Python软件包,应用了各种图像处理技术以及用于分析数据的统计工具。 PynPoint的当前版本已从基于主成分分析(PCA)作为PSF减法工具开发的早期版本演变而来。结果。 PynPoint的体系结构已重新设计,其核心功能与管道模块分离。已经为专用处理和分析步骤实现了模块,包括背景扣除,帧配准,PSF扣除,光度和天文测量以及检测极限的估算。流水线程序包可实现光瞳稳定数据的端到端数据缩减,并支持经典的抖动和冠状数据集。例如,我们处理了βPic b的档案VLT / NACO L'和M'数据,并使用马尔可夫链蒙特卡洛分析重新评估了行星的亮度和位置。我们还提供了光度误差预算的推导。

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