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Data augmentation based morphological classification of galaxies using deep convolutional neural network

机译:基于数据增强基于银河系的形态分类,使用深卷积神经网络

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From the early stages of Astronomy, the classification of galaxies has been a conundrum that has left astrophysicists in a situation of quandary. Although, previous methods did a phenomenal job in classifying galaxies but while analysing them, certain inefficiencies had been revealed which cannot be overlooked. The objective had been to conduct an analysis of different types of machine learning techniques that have been used to classify galaxies. This analysis had been conducted on the basis of different attributes taken for different types of classification of galaxies. A method had been proposed to classify galaxies with higher accuracy than previous methods. The configuration for the literature analysis used datasets such as ESO-LV and SDSS and discussed the antecedent techniques for classifying galaxies. It had been inferred that a Convolutional Neural Network with certain data augmentation for irregular Galaxies (Irr) gives the best result of all the algorithms that have been discussed in the literature and its analysis. Owing to the aforementioned, an implementation accentuating the use of deep learning algorithms with certain Data Augmentation techniques and certain different activation functions, named daMCOGCNN (data augmentation-based MOrphological Classifier Galaxy Using Convolutional Neural Networks) had been proposed for morphological classification of galaxies. The dataset comprises of 4614 images from SDSS Image Gallery, Galaxy Zoo challenge and Hubble Image Gallery. The efficient implementation of this method gave a testing accuracy of approximately 98% and 97.92% accuracy had been achieved on a dataset taken from different websites such as AstroBin and other such sources. The model introduced here outperforms its earlier contemporaries.
机译:从天文学的早期阶段,星系的分类一直是一个难题,令人讨厌的是窘境的常规物理学家。虽然之前的方法在分类星系的同时做出了惊人的工作,但在分析它们的同时,揭示了某些低效率,这不能被忽视。目标是对用于分类星系的不同类型的机器学习技术进行分析。该分析是根据不同类型的星系分类所采取的不同属性进行。已经提出了一种方法来分类基于前一个方法的准确性更高的星系。文献分析的配置使用了DataSet,例如ESO-LV和SDSS,并讨论了用于对星系进行分类的前进技术。已经推断出一种卷积神经网络,具有某些数据增强用于不规则星系(IRR),提供了在文献中讨论的所有算法的最佳结果及其分析。由于上述了,已经提出了一种以具有某些数据增强技术和某些不同的激活函数的使用深度学习算法,命名为DAMCOGCNN(使用卷积神经网络的数据增强的形态学分类器星系),以进行星系的形态学分类。数据集包括来自SDSS图像库,Galaxy动物园挑战和哈勃图像库的4614个图像。该方法的有效实现产生了大约98%和97.92%的测试精度,从不同网站(如Astrobin和其他这些来源)拍摄的数据集上已经实现了约97.92%的准确性。这里介绍的模型优于其前面的同时代。

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