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Deep Galaxy V2: Robust Deep Convolutional Neural Networks for Galaxy Morphology Classifications

Authors :
Nour Eldeen Mahmoud Khalifa
I. M. Selim
Aboul Ella Hassanien
Mohamed Hamed N. Taha
Source :
2018 International Conference on Computing Sciences and Engineering (ICCSE).
Publication Year :
2018
Publisher :
IEEE, 2018.

Abstract

This paper is an extended version of "Deep Galaxy: Classification of Galaxies based on Deep Convolutional Neural Networks". In this paper, a robust deep convolutional neural network architecture for galaxy morphology classification is presented. A galaxy can be classified based on its features into one of three categories (Elliptical, Spiral, or Irregular) according to the Hubble galaxy morphology classification from 1926. The proposed convolutional neural network architecture consists of 8 layers, including one main convolutional layer for feature ex-traction with 96 filters and two principle fully connected layers for classification. The architecture is trained over 4238 images and achieved a 97.772% testing accuracy. In this version, "Deep Galaxy V2", an augmentation process is applied to the training data to overcome the overfitting problem and make the proposed architecture more robust and immune to memorizing the training data. A comparative result is present, and the testing accuracy was compared with those of other related works. The proposed architecture outperformed the other related works in terms of its testing accuracy.

Details

Database :
OpenAIRE
Journal :
2018 International Conference on Computing Sciences and Engineering (ICCSE)
Accession number :
edsair.doi...........ffd8b09531a7e6ad04c36425819c6f24
Full Text :
https://doi.org/10.1109/iccse1.2018.8374210