Spectral Feature Extraction Using Partial and General Method

Author:

Jiang Bin1ORCID,Fang Xi1ORCID,Liu Yang1ORCID,Wang Xingzhu1ORCID,Liu Jie1ORCID

Affiliation:

1. School of Mechanical, Electrical & Information Engineering, Shandong University, Weihai, Shandong 264209, China

Abstract

With the rapid growth in astronomical spectra produced by large sky survey telescopes, traditional manual classification processes can no longer fulfill the requirements of precision and efficiency of spectral classification. There is an urgent need to employ machine learning approaches to conduct automated spectral classification tasks. Feature extraction is a critical step which has a great impact on any classification result. In this paper, a novel gradient-based method together with principal component analysis is proposed for the extraction of partial features of stellar spectra, that is, a feature vector indicating obvious local changes in data, which corresponds to the element line positions in the spectra. Furthermore, a general feature vector is utilized as an additional characteristic centering on the overall tendency of spectra, which can indicate stellar effective temperature. The two feature vectors and raw data are input into three neural networks, respectively, for training and each network votes for a predicted category of spectra. By selecting the class having the maximum votes, different types of spectra can be classified with high accuracy. The experimental results prove that a better performance can be achieved using the partial and general methods in this paper. The method could also be applied to other similar one-dimensional spectra, and the concepts proposed could ultimately expand the scope of machine learning application in astronomical spectral processing.

Funder

National Natural Science Foundation of China

Publisher

Hindawi Limited

Subject

Space and Planetary Science,Astronomy and Astrophysics

Reference23 articles.

1. Contemporary optical spectral classification of the OB stars : a digital atlas;N. R. Walborn;Publications of the Astronomical Society of the Pacific,1990

2. Revised spectral types for 64 B-supergiants in the Small Magellanic Cloud: metallicity effects[J];D. J. Lennon;Astronomy and Astrophysics,1997

3. Characteristics and classification of A-type supergiants in the Small Magellanic Cloud

4. The Araucaria Project: VLT Spectra of Blue Supergiants in WLM— Classification and First Abundances

5. A spectroscopic survey of 240,000 stars with g = 14–20;B. Yanny;The Astronomical Journal,2009

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