Morphological classification of galaxies using Conv-nets

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RESEARCH ARTICLE

Morphological classification of galaxies using Conv-nets Lalit Mohan Goyal 1 & Maanak Arora 2 & Tushar Pandey 2

&

Mamta Mittal 2

Received: 16 June 2020 / Accepted: 14 September 2020 # Springer-Verlag GmbH Germany, part of Springer Nature 2020

Abstract Since the beginning of space exploration, the galaxy classification has been a vexing problem that has always muddled the astrophysicists. A number of techniques have proven their remarkable utility in the classification of galaxies, however, upon analysis, these methods revealed certain inefficiencies that cannot be overlooked. The traditional classification of galaxies in the universe contains a significant part of their history in the authority of government agencies where the classifications in the previous years were performed primarily by experts manually. Today’s astronomical research produces large amounts of data and manually labelling the galaxy images based on morphological features can be time-consuming and error-prone. The objective of this paper is to study and analyze the different types of machine learning methodologies used for classifying galaxies. An inference drawn from this study is that using deep learning algorithms in conjunction with some data augmentation techniques provide excellent classification results of galaxies. Considering the aforementioned fact, the authors have proposed a layered CNN based classification model along with certain data augmentation techniques to classify galaxies morphological. “The Galaxy Zoo” dataset has been used from Kaggle which is further handcrafted for ease of classification. The galaxies are classified into three classes: spiral, elliptical, and lenticular (somewhere in-between). It has been observed from the experimental work that the proposed model outperform than its earlier contemporaries and can be used effectively to classify the galaxies. Keywords Galaxy classification . Galaxy morphology . Deep convolutional neural networks . Elliptical galaxy . Spiral galaxy . Lenticular galaxy

Introduction A galaxy coasting freely in the interstellar space in the modern day is a substance of enthusiasm for pretty much every astronomer and researcher who wishes to retaliate for the limits of

Communicated by: H. Babaie * Tushar Pandey [email protected] * Mamta Mittal [email protected] Lalit Mohan Goyal [email protected] Maanak Arora [email protected] 1

Department of Computer Engineering, J. C. Bose University of Science & Technology, YMCA, Faridabad, India

2

Department of Computer Science and Engineering, G. B. Pant Government Engineering College, New Delhi, Okhla, India

human comprehension of the observable universe. These structures, called galaxies unlike viewed as from the earth, scale to tremendous measurements going up to a few hundred and even thousands of light-years. A galaxy is a cluster, a system of huge counts of stars, planets, asteroids, and a seemingly humungous quantity of gases, space dust, and other forms of matter. Studying the structure and chara