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Rotation and flipping invariant self-organizing maps with astronomical images: A cookbook and application to the VLA Sky Survey QuickLook images

Authors :
Vantyghem, A.N.
Galvin, T.J.
Sebastian, B.
O’Dea, C.P.
Gordon, Y.A.
Boyce, M.
Rudnick, L.
Polsterer, K.
Andernach, H.
Dionyssiou, M.
Venkataraman, P.
Norris, R.
Baum, S.A.
Wang, X.R.
Huynh, M.
Source :
Astronomy and Computing; April 2024, Vol. 47 Issue: 1
Publication Year :
2024

Abstract

Modern wide field radio surveys typically detect millions of objects. Manual determination of the morphologies is impractical for such a large number of radio sources. Techniques based on machine learning are proving to be useful for classifying large numbers of objects. The self-organizing map (SOM) is an unsupervised machine learning algorithm that projects a many-dimensional dataset onto a two- or three-dimensional lattice of neurons. This dimensionality reduction allows the user to visualize common features of the data better and develop algorithms for classifying objects that are not otherwise possible with large datasets. To this aim, we use the PINK implementation of a SOM. PINK incorporates rotation and flipping invariance so that the SOM algorithm may be applied to astronomical images. In this cookbook we provide instructions for working with PINK, including preprocessing the input images, training the model, and offering lessons learned through experimentation. The problem of imbalanced classes can be improved by careful selection of the training sample and increasing the number of neurons in the SOM (chosen by the user). Because PINK is not scale-invariant, structure can be smeared in the neurons. This can also be improved by increasing the number of neurons in the SOM.

Details

Language :
English
ISSN :
22131337 and 22131345
Volume :
47
Issue :
1
Database :
Supplemental Index
Journal :
Astronomy and Computing
Publication Type :
Periodical
Accession number :
ejs65952857
Full Text :
https://doi.org/10.1016/j.ascom.2024.100824