4.6 Article

HOLISMOKES VI. New galaxy-scale strong lens candidates from the HSC-SSP imaging survey

Journal

ASTRONOMY & ASTROPHYSICS
Volume 653, Issue -, Pages -

Publisher

EDP SCIENCES S A
DOI: 10.1051/0004-6361/202141758

Keywords

gravitational lensing: strong; methods: data analysis

Funding

  1. European Research Council (ERC) under the European Union's Horizon 2020 research and innovation program (LENSNOVA) [771776]
  2. Max Planck Society
  3. Alexander von Humboldt Foundation by the Federal Ministry of Education and Research
  4. Riset ITB 2021
  5. FIRST program from Japanese Cabinet Office
  6. Ministry of Education, Culture, Sports, Science and Technology (MEXT)
  7. Japan Society for the Promotion of Science (JSPS)
  8. Japan Science and Technology Agency (JST)
  9. Toray Science Foundation
  10. NAOJ
  11. Kavli IPMU
  12. KEK
  13. ASIAA
  14. Princeton University

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The study identified 206 new galaxy-scale strong lens candidates using an automated pipeline and recovered 173 known systems. The results demonstrate that deep learning pipelines can be powerful tools for identifying rare strong lenses from large catalogs with low false positive rates.
We have carried out a systematic search for galaxy-scale strong lenses in multiband imaging from the Hyper Suprime-Cam (HSC) survey. Our automated pipeline, based on realistic strong-lens simulations, deep neural network classification, and visual inspection, is aimed at efficiently selecting systems with wide image separations (Einstein radii theta(E) similar to 1.0-3.0 ''), intermediate redshift lenses (z similar to 0.4-0.7), and bright arcs for galaxy evolution and cosmology. We classified gri images of all 62 5 million galaxies in HSC Wide with i-band Kron radius >= 0.8 to avoid strict preselections and to prepare for the upcoming era of deep, wide-scale imaging surveys with Euclid and Rubin Observatory. We obtained 206 newly-discovered candidates classified as definite or probable lenses with either spatially-resolved multiple images or extended, distorted arcs. In addition, we found 88 high-quality candidates that were assigned lower confidence in previous HSC searches, and we recovered 173 known systems in the literature. These results demonstrate that, aided by limited human input, deep learning pipelines with false positive rates as low as-='0.01% can be very powerful tools for identifying the rare strong lenses from large catalogs, and can also largely extend the samples found by traditional algorithms. We provide a ranked list of candidates for future spectroscopic confirmation.

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