Advances on the morphological classification of radio galaxies: A review

IF 11.7 2区 物理与天体物理 Q1 ASTRONOMY & ASTROPHYSICS New Astronomy Reviews Pub Date : 2023-10-12 DOI:10.1016/j.newar.2023.101685
Steven Ndung’u , Trienko Grobler , Stefan J. Wijnholds , Dimka Karastoyanova , George Azzopardi
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Abstract

Modern radio telescopes will generate, on a daily basis, data sets on the scale of exabytes for systems like the Square Kilometre Array (SKA). Massive data sets are a source of unknown and rare astrophysical phenomena that lead to discoveries. Nonetheless, this is only plausible with the exploitation of machine learning to complement human-aided and traditional statistical techniques. Recently, there has been a surge in scientific publications focusing on the use of machine/deep learning in radio astronomy, addressing challenges such as source extraction, morphological classification, and anomaly detection. This study provides a comprehensive and concise overview of the use of machine learning techniques for the morphological classification of radio galaxies. It summarizes the recent literature on this topic, highlighting the main challenges, achievements, state-of-the-art methods, and the future research directions in the field. The application of machine learning in radio astronomy has led to a new paradigm shift and a revolution in the automation of complex data processes. However, the optimal exploitation of machine/deep learning in radio astronomy, calls for continued collaborative efforts in the creation of high-resolution annotated data sets. This is especially true in the case of modern telescopes like MeerKAT and the LOw-Frequency ARray (LOFAR). Additionally, it is important to consider the potential benefits of utilizing multi-channel data cubes and algorithms that can leverage massive datasets without relying solely on annotated datasets for radio galaxy classification.

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射电星系形态分类研究进展
现代射电望远镜将每天为平方公里阵列(SKA)等系统生成EB级的数据集。海量数据集是导致发现的未知和罕见天体物理现象的来源。尽管如此,只有利用机器学习来补充人工辅助和传统统计技术,这才是合理的。最近,专注于在射电天文学中使用机器/深度学习的科学出版物激增,解决了源提取、形态分类和异常检测等挑战。这项研究对机器学习技术在射电星系形态分类中的应用提供了全面而简洁的概述。它总结了最近关于这一主题的文献,强调了该领域的主要挑战、成就、最先进的方法和未来的研究方向。机器学习在射电天文学中的应用导致了复杂数据处理自动化的新范式转变和革命。然而,无线电天文学中机器/深度学习的最佳利用要求在创建高分辨率注释数据集方面继续进行合作。这在像MeerKAT和LOw Frequency ARray(LOFAR)这样的现代望远镜的情况下尤其如此。此外,重要的是要考虑利用多通道数据立方体和算法的潜在好处,这些立方体和算法可以利用大量数据集,而不必仅仅依赖注释数据集进行射电星系分类。
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来源期刊
New Astronomy Reviews
New Astronomy Reviews 地学天文-天文与天体物理
CiteScore
18.60
自引率
1.70%
发文量
7
审稿时长
11.3 weeks
期刊介绍: New Astronomy Reviews publishes review articles in all fields of astronomy and astrophysics: theoretical, observational and instrumental. This international review journal is written for a broad audience of professional astronomers and astrophysicists. The journal covers solar physics, planetary systems, stellar, galactic and extra-galactic astronomy and astrophysics, as well as cosmology. New Astronomy Reviews is also open for proposals covering interdisciplinary and emerging topics such as astrobiology, astroparticle physics, and astrochemistry.
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