期刊文献+

Automated Separation of Stars and Normal Galaxies Based on Statistical Mixture Modeling with RBF Neural Networks 被引量:1

Automated Separation of Stars and Normal Galaxies Based on Statistical Mixture Modeling with RBF Neural Networks
下载PDF
导出
摘要 For LAMOST, the largest sky survey program in China, the solution of the problem of automatic discrimination of stars from galaxies by spectra has shown that the results of the PSF test can be significantly refined. However, the problem is made worse when the redshifts of galaxies are not available. We present a new automatic method of star/(normal) galaxy separation, which is based on Statistical Mixture Modeling with Radial Basis Function Neural Networks (SMM-RBFNN). This work is a continuation of our previous one, where active and non-active celestial objects were successfully segregated. By combining the method in this paper and the previous one, stars can now be effectively separated from galaxies and AGNs by their spectra-a major goal of LAMOST, and an indispensable step in any automatic spectrum classification system. In our work, the training set includes standard stellar spectra from Jacoby's spectrum library and simulated galaxy spectra of EO, SO, Sa, Sb types with redshift ranging from 0 to 1.2, and the test set of stellar spectra from Pickles' atlas and SDSS spectra of normal galaxies with SNR of 13. Experiments show that our SMM-RBFNN is more efficient in both the training and testing stages than the BPNN (back propagation neural networks), and more importantly, it can achieve a good classification accuracy of 99.22% and 96.52%, respectively for stars and normal galaxies. For LAMOST, the largest sky survey program in China, the solution of the problem of automatic discrimination of stars from galaxies by spectra has shown that the results of the PSF test can be significantly refined. However, the problem is made worse when the redshifts of galaxies are not available. We present a new automatic method of star/(normal) galaxy separation, which is based on Statistical Mixture Modeling with Radial Basis Function Neural Networks (SMM-RBFNN). This work is a continuation of our previous one, where active and non-active celestial objects were successfully segregated. By combining the method in this paper and the previous one, stars can now be effectively separated from galaxies and AGNs by their spectra-a major goal of LAMOST, and an indispensable step in any automatic spectrum classification system. In our work, the training set includes standard stellar spectra from Jacoby's spectrum library and simulated galaxy spectra of EO, SO, Sa, Sb types with redshift ranging from 0 to 1.2, and the test set of stellar spectra from Pickles' atlas and SDSS spectra of normal galaxies with SNR of 13. Experiments show that our SMM-RBFNN is more efficient in both the training and testing stages than the BPNN (back propagation neural networks), and more importantly, it can achieve a good classification accuracy of 99.22% and 96.52%, respectively for stars and normal galaxies.
出处 《Chinese Journal of Astronomy and Astrophysics》 CSCD 北大核心 2003年第3期277-286,共10页 中国天文和天体物理学报(英文版)
基金 Supported by "863" National High Technology R&D program.
关键词 methods: data analysis - techniques: spectroscopic - stars: general - galaxies: stellar content methods: data analysis - techniques: spectroscopic - stars: general - galaxies: stellar content
  • 相关文献

参考文献17

  • 1Connolly A. J., Szalay A. S., Bershady M. A., Kinney A. L., Calzetti D.,1995, AJ, 110, 1071.
  • 2Galaz G., Lappaxent V., 1998, A&A, 332, 459.
  • 3Zaritsky D., Zabludoff A. I., Jeffrey A. W., 1995, AJ, 110, 1602.
  • 4Jacoby G. H., Hunter D. A., Christian C. A., 1984, ApJS, 56, 257.
  • 5Pickles A. J., 1998, PASP, 110, 863.
  • 6Pickles A. J., 1985, ApJS, 59, 33.
  • 7Kinney A. L., Calzetti D., Bohlin R. C., McQuade K., Storchi-Bergmann T., 1996, A J, 467, 38.
  • 8Calzetti D., Kinney A. L., Storchi-Bergmann T., 1994, AJ, 429, 582.
  • 9Kent S. M., 1994, Ap&SS, 217, 27.
  • 10Bian Z. Q., .Zhang X. G., 1999, Pattern Recognition, 2nd ed., Beijing: Tsing Hua University Press.

同被引文献6

引证文献1

二级引证文献2

相关作者

内容加载中请稍等...

相关机构

内容加载中请稍等...

相关主题

内容加载中请稍等...

浏览历史

内容加载中请稍等...
;
使用帮助 返回顶部