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A rules-based and Transfer Learning approach for deriving the Hubble type of a galaxy from the Galaxy Zoo data

机译:基于规则和转移学习的方法,用于从Galaxy Zoo数据推导哈勃星系类型

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The Galaxy Zoo project is a crowd-sourced astronomy galaxy classification endeavour whose results can have significant benefits to astronomers. The project has evolved into using crowd-sourced labelling together with machine learning to automate the classification of galaxies. If this process is to be automated using crowd-sourcing and machine learning, then understanding how these results will hold up against expert classifications on an academically accepted classification such as the Hubble tuning fork is timely. We propose a rules-based approach for deriving the Hubble type using the responses in the Galaxy Zoo as well as a Transfer Learning approach for solving this problem. The dataset we used to get the Hubble type for galaxies is the Revised Shapley-Ames catalogue of bright galaxies. Previous work in this field has mainly revolved around the Galaxy Zoo project with little to no attempt to map the Galaxy Zoo responses to a more robust method of classifying galaxies such as the Hubble tuning fork classification system. Previous research has tried to map the Galaxy Zoo responses to a set of classes like elliptical, spiral and irregular. Their work has shown promising results. Our experiments showed that by using the Galaxy Zoo response vectors, our rules-based approach was able to separate the elliptical and spiral shapes, however, it did not perform particularly well at separating the spiral shapes from one another. Our Transfer Learning model showed better potential for separating not only elliptical and spiral shapes but also for separating spiral shapes into exact Hubble types (e.g Sa, Sb and Sc).
机译:银河动物园项目是一项众包的天文学星系分类工作,其成果可为天文学家带来重大利益。该项目已经演变为使用众包标签以及机器学习来自动对星系进行分类。如果要使用众包和机器学习来自动执行此过程,那么就应该及时了解这些结果将如何与学术认可的分类(例如哈勃音叉)上的专家分类相抵触。我们提出了一种基于规则的方法,用于使用Galaxy Zoo中的响应推导哈勃类型,以及一种用于解决此问题的转移学习方法。我们用于获得星系哈勃类型的数据集是明亮星系的经修订的Shapley-Ames目录。该领域以前的工作主要围绕银河动物园项目,几乎没有尝试将银河动物园的反应映射到诸如哈勃音叉分类系统之类的更强大的星系分类方法。先前的研究试图将Galaxy Zoo的响应映射到一组椭圆,螺旋和不规则类。他们的工作已显示出令人鼓舞的结果。我们的实验表明,通过使用Galaxy Zoo响应向量,我们基于规则的方法能够分离椭圆形和螺旋形,但是,在将螺旋形彼此分离时效果不佳。我们的转移学习模型显示出更好的潜力,不仅可以将椭圆形和螺旋形分离,而且可以将螺旋形分离为精确的哈勃类型(例如Sa,Sb和Sc)。

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