Radio astronomical images object detection and segmentation: a benchmark on deep learning methods

被引:0
|
作者
Renato Sortino
Daniel Magro
Giuseppe Fiameni
Eva Sciacca
Simone Riggi
Andrea DeMarco
Concetto Spampinato
Andrew M. Hopkins
Filomena Bufano
Francesco Schillirò
Cristobal Bordiu
Carmelo Pino
机构
[1] INAF,Osservatorio Astrofisico di Catania
[2] University of Catania,Department of Electrical, Electronic and Computer Engineering
[3] University of Malta,Institute of Space Sciences and Astronomy
[4] NVIDIA AI Technology Centre,Australian Astronomical Optics
[5] Macquarie University,undefined
来源
Experimental Astronomy | 2023年 / 56卷
关键词
Deep learning; Source finding; Object detection; Transformers; Astrophysics;
D O I
暂无
中图分类号
学科分类号
摘要
In recent years, deep learning has been successfully applied in various scientific domains. Following these promising results and performances, it has recently also started being evaluated in the domain of radio astronomy. In particular, since radio astronomy is entering the Big Data era, with the advent of the largest telescope in the world - the Square Kilometre Array (SKA), the task of automatic object detection and instance segmentation is crucial for source finding and analysis. In this work, we explore the performance of the most affirmed deep learning approaches, applied to astronomical images obtained by radio interferometric instrumentation, to solve the task of automatic source detection. This is carried out by applying models designed to accomplish two different kinds of tasks: object detection and semantic segmentation. The goal is to provide an overview of existing techniques, in terms of prediction performance and computational efficiency, to scientists in the astrophysics community who would like to employ machine learning in their research.
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页码:293 / 331
页数:38
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