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A package for the automated classification of images containing supernova light echoes

Authors :
A. Bhullar
R. A. Ali
Douglas L. Welch
School of Graduate Studies
Source :
Astronomy & Astrophysics. 655:A82
Publication Year :
2021
Publisher :
EDP Sciences, 2021.

Abstract

Context. The so-called "light echoes" of supernovae - the apparent motion of outburst-illuminated interstellar dust - can be detected in astronomical difference images; however, light echoes are extremely rare which makes manual detection an arduous task. Surveys for centuries-old supernova light echoes can involve hundreds of pointings of wide-field imagers wherein the subimages from each CCD amplifier require examination. Aims. We introduce ALED, a Python package that implements (i) a capsule network trained to automatically identify images with a high probability of containing at least one supernova light echo, and (ii) routing path visualization to localize light echoes and/or light echo-like features in the identified images. Methods. We compare the performance of the capsule network implemented in ALED (ALED-m) to several capsule and convolutional neural networks of different architectures. We also apply ALED to a large catalogue of astronomical difference images and manually inspect candidate light echo images for human verification. Results. ALED-m, was found to achieve 90% classification accuracy on the test set, and to precisely localize the identified light echoes via routing path visualization. From a set of 13,000+ astronomical images, ALED identified a set of light echoes that had been overlooked in manual classification. ALED is available via github.com/LightEchoDetection/ALED.<br />11 pages, 7 figures, 4 tables, 3 appendices (1 appendix table, 1 appendix figure)

Details

ISSN :
14320746 and 00046361
Volume :
655
Database :
OpenAIRE
Journal :
Astronomy & Astrophysics
Accession number :
edsair.doi.dedup.....e9190f7f9add036094dd8daf063d2952
Full Text :
https://doi.org/10.1051/0004-6361/202039755