Please use this identifier to cite or link to this item: http://hdl.handle.net/2248/8141
Title: Photometric identification of compact galaxies, stars, and quasars using multiple neural networks
Authors: Chaini, Siddharth
Bagul, Atharva
Deshpande, Anish
Gondkar, Rishi
Sharma, Kaushal
Vivek, M
Kembhavi, Ajit
Keywords: Methods: data analysis
Techniques: photometric
Software: data analysis
Stars: general
Galaxies: general
Quasars: general
Issue Date: Jan-2023
Publisher: Oxford University Press on behalf of Royal Astronomical Society
Citation: Monthly Notices of the Royal Astronomical Society, Vol. 518, No. 2, pp. 3123–3136
Abstract: We present MargNet, a deep learning-based classifier for identifying stars, quasars, and compact galaxies using photometric parameters and images from the Sloan Digital Sky Survey Data Release 16 catalogue. MargNet consists of a combination of convolutional neural network and artificial neural network architectures. Using a carefully curated data set consisting of 240 000 compact objects and an additional 150 000 faint objects, the machine learns classification directly from the data, minimizing the need for human intervention. MargNet is the first classifier focusing exclusively on compact galaxies and performs better than other methods to classify compact galaxies from stars and quasars, even at fainter magnitudes. This model and feature engineering in such deep learning architectures will provide greater success in identifying objects in the ongoing and upcoming surveys, such as Dark Energy Survey and images from the Vera C. Rubin Observatory.
Description: Restricted Access
URI: http://hdl.handle.net/2248/8141
ISSN: 1365-2966
Appears in Collections:IIAP Publications

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