Bayesian and convolutional networks for hierarchical morphological classification of galaxies

IF 2.7 3区 物理与天体物理 Q2 ASTRONOMY & ASTROPHYSICS Experimental Astronomy Pub Date : 2024-08-31 DOI:10.1007/s10686-024-09950-y
Jonathan Serrano-Pérez, Raquel Díaz Hernández, L. Enrique Sucar
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Abstract

In the universe, there are up to 2 trillion galaxies with different features ranging from the number of stars, light spectrum, age, or visual appearance. Consequently, automatic classifiers are required to perform this task; furthermore, as shown by some related works, while greater the number of classes considered, the performance of the classifiers tends to decrease. This work is focused on the morphological classification of galaxies. They can be associated with a subset of 10 classes arranged in a hierarchy derived from the Hubble sequence. The proposed method, Bayesian and Convolutional Neural Networks (BCNN), is composed of two main modules. The first module is a convolutional neural network trained with the images of galaxies, and its predictions feed the second module. The second module is a Bayesian network that evaluates the hierarchy and helps to improve the prediction accuracy by combining the predictions of the first module through probabilistic inference over the Bayesian network. A collection of galaxies sourced from the Principal Galaxies Catalog and the APM Equatorial Catalogue of Galaxies are used to perform the experiments. The results show that BCNN performed better than five CNNs in multiple evaluation measures, reaching the scores 83% in hierarchical F-measure, 78% in accuracy, and 67% in exact match evaluation.

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用于星系分层形态分类的贝叶斯和卷积网络
宇宙中有多达 2 万亿个星系,它们具有不同的特征,包括恒星数量、光谱、年龄或视觉外观。因此,需要自动分类器来完成这项任务;此外,正如一些相关工作所显示的,考虑的类别数量越多,分类器的性能就越低。这项工作的重点是星系的形态分类。这些星系可以与根据哈勃序列分级排列的 10 个等级子集相关联。所提出的贝叶斯和卷积神经网络(BCNN)方法由两个主要模块组成。第一个模块是用星系图像训练的卷积神经网络,它的预测结果为第二个模块提供信息。第二个模块是贝叶斯网络,负责评估层次结构,并通过贝叶斯网络上的概率推理将第一个模块的预测结合起来,帮助提高预测精度。实验使用的星系集合来自《主要星系目录》和《APM 星系赤道目录》。结果表明,BCNN 在多个评估指标中的表现优于五种 CNN,在分层 F 指标中达到 83%,在准确度评估中达到 78%,在精确匹配评估中达到 67%。
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来源期刊
Experimental Astronomy
Experimental Astronomy 地学天文-天文与天体物理
CiteScore
5.30
自引率
3.30%
发文量
57
审稿时长
6-12 weeks
期刊介绍: Many new instruments for observing astronomical objects at a variety of wavelengths have been and are continually being developed. Furthermore, a vast amount of effort is being put into the development of new techniques for data analysis in order to cope with great streams of data collected by these instruments. Experimental Astronomy acts as a medium for the publication of papers of contemporary scientific interest on astrophysical instrumentation and methods necessary for the conduct of astronomy at all wavelength fields. Experimental Astronomy publishes full-length articles, research letters and reviews on developments in detection techniques, instruments, and data analysis and image processing techniques. Occasional special issues are published, giving an in-depth presentation of the instrumentation and/or analysis connected with specific projects, such as satellite experiments or ground-based telescopes, or of specialized techniques.
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