Morphological Classification of Galaxies Using SpinalNet

Dim Shaiakhmetov, R. R. Mekuria, R. Isaev, Fatma Unsal
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引用次数: 1

Abstract

Deep neural networks (DNNs) with a step-by-step introduction of inputs, which is constructed by imitating the somatosensory system in human body, known as SpinalNet have been implemented in this work on a Galaxy Zoo dataset. The input segmentation in SpinalNet has enabled the intermediate layers to take some of the inputs as well as output of preceding layers thereby reducing the amount of the collected weights in the intermediate layers. As a result of these, the authors of SpinalNet reported to have achieved in most of the DNNs they tested, not only a remarkable cut in the error but also in the large reduction of the computational costs. Having applied it to the Galaxy Zoo dataset, we are able to classify the different classes and/or sub-classes of the galaxies. Thus, we have obtained higher classification accuracies of 98.2, 95 and 82 percents between elliptical and spirals, between these two and irregulars, and between 10 sub-classes of galaxies, respectively.
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基于SpinalNet的星系形态分类
深度神经网络(dnn)通过模仿人体体感系统逐步引入输入,称为SpinalNet,已在Galaxy Zoo数据集上实现。SpinalNet中的输入分割使中间层能够获取前一层的一些输入和输出,从而减少中间层中收集的权重量。因此,SpinalNet的作者报告说,他们在测试的大多数深度神经网络中都取得了成功,不仅显著减少了错误,而且大大降低了计算成本。将其应用到星系动物园数据集后,我们能够对星系的不同类别和/或子类别进行分类。因此,我们在椭圆星系和螺旋星系、椭圆星系和不规则星系以及10个亚类星系之间分别获得了98.2%、95%和82%的较高分类精度。
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