4.7 Article

Deep Learning assessment of galaxy morphology in S-PLUS Data Release 1

Journal

MONTHLY NOTICES OF THE ROYAL ASTRONOMICAL SOCIETY
Volume 507, Issue 2, Pages 1937-1955

Publisher

OXFORD UNIV PRESS
DOI: 10.1093/mnras/stab1981

Keywords

methods: miscellaneous; techniques: image processing; surveys; galaxies: fundamental parameters; galaxies: structure

Funding

  1. Sao Paulo Research Foundation (FAPESP)
  2. Brazilian National Research Council (CNPq)
  3. Coordination for the Improvement of Higher Education Personnel (CAPES)
  4. Carlos Chagas Filho Rio de Janeiro State Research Foundation (FAPERJ)
  5. Brazilian Innovation Agency (FINEP)
  6. CNPq [309209/2019-6, 115795/2020-0, 304819/201794]
  7. University of Sao Paulo PUB grant of 2020 [83-183-1]
  8. FAPESP [2019/26492-3, 2019/11910-4, 2019/10923-5, 2009/54202-8]
  9. CAPES
  10. Brazil, Chile (Universidad de La Serena)
  11. Spain (Centro de Estudios de Fisica del Cosmos de Aragon, CEFCA)
  12. Fundacao de Amparo a Pesquisa do Estado de Sao Paulo (FAPESP) [09/54202-8] Funding Source: FAPESP

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The study utilizes data from the S-PLUS survey to classify galaxies based on morphology, finding that using more bands can improve performance with neural networks, but optimal results are achieved with pre-trained network weights from the ImageNet dataset. The research provides a publicly available morphological catalogue and offers a new approach for classification using data from other surveys.
The morphological diversity of galaxies is a relevant probe of galaxy evolution and cosmological structure formation, but the classification of galaxies in large sky surveys is becoming a significant challenge. We use data from the Stripe-82 area observed by the Southern Photometric Local Universe Survey (S-PLUS) in 12 optical bands, and present a catalogue of the morphologies of galaxies brighter than r = 17 mag determined both using a novel multiband morphometric fitting technique and Convolutional Neural Networks (CNNs) for computer vision. Using the CNNs, we find that, compared to our baseline results with three bands, the performance increases when using 5 broad and 3 narrow bands, but is poorer when using the full 12 band S-PLUS image set. However, the best result is still achieved with just three optical bands when using pre-trained network weights from an ImageNet data set. These results demonstrate the importance of using prior knowledge about neural network weights based on training in unrelated, extensive data sets, when available. Our catalogue contains 3274 galaxies in Stripe-82 that are not present in Galaxy Zoo 1 (GZ1), and we also provide our classifications for 4686 galaxies that were considered ambiguous in GZ1. Finally, we present a prospect of a novel way to take advantage of 12 band information for morphological classification using morphometric features, and we release a model that has been pre-trained on several bands that could be adapted for classifications using data from other surveys. The morphological catalogues are publicly available.

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