4.7 Article

Transfer learning for galaxy morphology from one survey to another

期刊

出版社

OXFORD UNIV PRESS
DOI: 10.1093/mnras/sty3497

关键词

methods: observational; methods: photometric; surveys; galaxies: structure

资金

  1. NSF [AST-1138766, AST-1536171, AST-1816330]
  2. DOE
  3. NSF(USA)
  4. MEC/MICINN/MINECO(Spain)
  5. STFC(UK)
  6. HEFCE(UK)
  7. NCSA(UIUC)
  8. KICP(U. Chicago)
  9. CCAPP(Ohio State)
  10. MIFPA(Texas AM)
  11. CNPQ
  12. FAPERJ
  13. FINEP (Brazil)
  14. DFG(Germany)
  15. Dark Energy Survey
  16. MINECO [AYA2015-71825, ESP2015-66861, FPA2015-68048, SEV-2016-0588, SEV-2016-0597, MDM-2015-0509]
  17. European Union
  18. CERCA program of the Generalitat de Catalunya
  19. European Research Council under the European Union's Seventh Framework Program (FP7/2007-2013) including ERC grant [240672, 291329, 306478]
  20. Australian Research Council Centre of Excellence for All-sky Astrophysics (CAAS-TRO) [CE110001020]
  21. Brazilian Instituto Nacional de Ciencia e Tecnologia (INCT) e-Universe (CNPq) [465376/2014-2]
  22. Fermi Research Alliance, LLC [DE-AC02-07CH11359]
  23. STFC [ST/N000668/1, ST/M001334/1] Funding Source: UKRI

向作者/读者索取更多资源

Deep learning (DL) algorithms for morphological classification of galaxies have proven very successful, mimicking (or even improving) visual classifications. However, these algorithms rely on large training samples of labelled galaxies (typically thousands of them). A key question for using DL classifications in future Big Data surveys is how much of the knowledge acquired from an existing survey can be exported to a new data set, i.e. if the features learned by the machines are meaningful for different data. We test the performance of DL models, trained with Sloan Digital Sky Survey (SDSS) data, on Dark Energy Survey (DES) using images for a sample of similar to 5000 galaxies with a similar redshift distribution to SDSS. Applying the models directly to DES data provides a reasonable global accuracy (similar to 90 per cent), but small completeness and purity values. A fast domain adaptation step, consisting of a further training with a small DES sample of galaxies (similar to 500-300), is enough for obtaining an accuracy >95 per cent and a significant improvement in the completeness and purity values. This demonstrates that, once trained with a particular data set, machines can quickly adapt to new instrument characteristics (e.g. PSF, seeing, depth), reducing by almost one order of magnitude the necessary training sample for morphological classification. Redshift evolution effects or significant depth differences are not taken into account in this study.

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