Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images

This paper demonstrates a novel and efficient unsupervised clustering method with the combination of a self-organizing map (SOM) and a convolutional autoencoder. The rapidly increasing volume of radio-astronomical data has increased demand for machine-learning methods as solutions to classification...

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Main Authors: Ralph, NO, Norris, RP, Fang, G, Park, LAF, Galvin, TJ, Alger, MJ, Andernach, H, Lintott, CJ, Rudnick, L, Shabala, S, Wong, OI
Format: Journal article
Language:English
Published: IOP Publishing 2019
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author Ralph, NO
Norris, RP
Fang, G
Park, LAF
Galvin, TJ
Alger, MJ
Andernach, H
Lintott, CJ
Rudnick, L
Shabala, S
Wong, OI
author_facet Ralph, NO
Norris, RP
Fang, G
Park, LAF
Galvin, TJ
Alger, MJ
Andernach, H
Lintott, CJ
Rudnick, L
Shabala, S
Wong, OI
author_sort Ralph, NO
collection OXFORD
description This paper demonstrates a novel and efficient unsupervised clustering method with the combination of a self-organizing map (SOM) and a convolutional autoencoder. The rapidly increasing volume of radio-astronomical data has increased demand for machine-learning methods as solutions to classification and outlier detection. Major astronomical discoveries are unplanned and found in the unexpected, making unsupervised machine learning highly desirable by operating without assumptions and labeled training data. Our approach shows SOM training time is drastically reduced and high-level features can be clustered by training on auto-encoded feature vectors instead of raw images. Our results demonstrate this method is capable of accurately separating outliers on a SOM with neighborhood similarity and K-means clustering of radio-astronomical features. We present this method as a powerful new approach to data exploration by providing a detailed understanding of the morphology and relationships of Radio Galaxy Zoo (RGZ) data set image features which can be applied to new radio survey data.
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spelling oxford-uuid:844da649-f25b-40ed-877b-9124152076ae2022-03-26T21:50:19ZRadio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical imagesJournal articlehttp://purl.org/coar/resource_type/c_dcae04bcuuid:844da649-f25b-40ed-877b-9124152076aeEnglishSymplectic ElementsIOP Publishing2019Ralph, NONorris, RPFang, GPark, LAFGalvin, TJAlger, MJAndernach, HLintott, CJRudnick, LShabala, SWong, OIThis paper demonstrates a novel and efficient unsupervised clustering method with the combination of a self-organizing map (SOM) and a convolutional autoencoder. The rapidly increasing volume of radio-astronomical data has increased demand for machine-learning methods as solutions to classification and outlier detection. Major astronomical discoveries are unplanned and found in the unexpected, making unsupervised machine learning highly desirable by operating without assumptions and labeled training data. Our approach shows SOM training time is drastically reduced and high-level features can be clustered by training on auto-encoded feature vectors instead of raw images. Our results demonstrate this method is capable of accurately separating outliers on a SOM with neighborhood similarity and K-means clustering of radio-astronomical features. We present this method as a powerful new approach to data exploration by providing a detailed understanding of the morphology and relationships of Radio Galaxy Zoo (RGZ) data set image features which can be applied to new radio survey data.
spellingShingle Ralph, NO
Norris, RP
Fang, G
Park, LAF
Galvin, TJ
Alger, MJ
Andernach, H
Lintott, CJ
Rudnick, L
Shabala, S
Wong, OI
Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images
title Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images
title_full Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images
title_fullStr Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images
title_full_unstemmed Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images
title_short Radio galaxy zoo: Unsupervised clustering of convolutionally auto-encoded radio-astronomical images
title_sort radio galaxy zoo unsupervised clustering of convolutionally auto encoded radio astronomical images
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