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Automatic Detection and Classification of Radio Galaxy Images by Deep Learning

Journal Article · · Publications of the Astronomical Society of the Pacific

Abstract Surveys conducted by radio astronomy observatories, such as SKA, MeerKAT, Very Large Array, and ASKAP, have generated massive astronomical images containing radio galaxies (RGs). This generation of massive RG images has imposed strict requirements on the detection and classification of RGs and makes manual classification and detection increasingly difficult, even impossible. Rapid classification and detection of images of different types of RGs help astronomers make full use of the observed astronomical image data for further processing and analysis. The classification of FRI and FRII is relatively easy, and there are more studies and literature on them at present, but FR0 and FRI are similar, so it is difficult to distinguish them. It poses a greater challenge to image processing. At present, deep learning has made breakthrough progress in the field of image analysis and processing and has preliminary applications in astronomical data processing. Compared with classification algorithms that can only classify galaxies, object detection algorithms that can locate and classify RGs simultaneously are preferred. In target detection algorithms, YOLOv5 has outstanding advantages in the classification and positioning of small targets. Therefore, we propose a deep-learning method based on an improved YOLOv5 object detection model that makes full use of multisource data, combining FIRST radio with SDSS optical image data, and realizes the automatic detection of FR0, FRI, and FRII RGs. The innovation of our work is that on the basis of the original YOLOv5 object detection model, we introduce the SE Net attention mechanism, increase the number of preset anchors, adjust the network structure of the feature pyramid, and modify the network structure, thereby allowing our model to demonstrate galaxy classification and position detection effects. Our improved model produces satisfactory results, as evidenced by experiments. Overall, the mean average precision (mAP@0.5) of our improved model on the test set reaches 89.4%, which can determine the position (R.A. and decl.) and automatically detect and classify FR0s, FRIs, and FRIIs. Our work contributes to astronomy because it allows astronomers to locate FR0, FRI, and FRII galaxies in a relatively short time and can be further combined with other astronomically generated data to study the properties of these galaxies. The target detection model can also help astronomers find FR0s, FRIs, and FRIIs in future surveys and build a large-scale star RG catalog. Moreover, our work is also useful for the detection of other types of galaxies.

Research Organization:
US Department of Energy (USDOE), Washington, DC (United States). Office of Science, Sloan Digital Sky Survey (SDSS)
Sponsoring Organization:
USDOE
OSTI ID:
1982459
Journal Information:
Publications of the Astronomical Society of the Pacific, Vol. 134, Issue 1036; ISSN 0004-6280
Publisher:
Astronomical Society of the Pacific (ASP)
Country of Publication:
United States
Language:
English

References (21)

The FIRST Classifier: compact and extended radio galaxy classification using deep Convolutional Neural Networks journal July 2018
Classifying Radio Galaxies with the Convolutional Neural Network journal June 2017
FR0 CAT : a FIRST catalog of FR 0 radio galaxies journal December 2017
Pilot study of the radio-emitting AGN population: the emerging new class of FR 0 radio-galaxies journal March 2015
The FIRST Survey: Faint Images of the Radio Sky at Twenty Centimeters journal September 1995
FRII CAT : A FIRST catalog of FR II radio galaxies journal May 2017
FRI CAT : A FIRST catalog of FR I radio galaxies journal January 2017
The Pascal Visual Object Classes Challenge: A Retrospective journal June 2014
The Morphology of Extragalactic Radio Sources of High and Low Luminosity journal April 1974
THE LAST OF FIRST : THE FINAL CATALOG AND SOURCE IDENTIFICATIONS journal February 2015
Measuring photometric redshifts using galaxy images and Deep Neural Networks journal July 2016
Science with ASKAP: The Australian square-kilometre-array pathfinder journal October 2008
Star–galaxy classification using deep convolutional neural networks journal October 2016
Artificial intelligence for celestial object census: the latest technology meets the oldest science journal November 2021
Morphological classification of compact and extended radio galaxies using convolutional neural networks and data augmentation techniques journal May 2021
The role of context in object recognition journal December 2007
Small-Object Detection Based on YOLO and Dense Block via Image Super-Resolution journal January 2021
Radio Galaxy Zoo: Claran – a deep learning classifier for radio morphologies journal October 2018
Using convolutional neural networks to predict galaxy metallicity from three-colour images journal February 2019
The Sloan Digital Sky Survey: Technical Summary journal September 2000
A Small Target Detection Method Based on Deep Learning With Considerate Feature and Effectively Expanded Sample Size journal January 2021

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