The Astrophysical Journal (Jan 2023)

A Recipe for Unbiased Background Modeling in Deep Wide-field Astronomical Images

  • Qing Liu,
  • Roberto Abraham,
  • Peter G. Martin,
  • William P. Bowman,
  • Pieter van Dokkum,
  • Steven R. Janssens,
  • Seery Chen,
  • Michael A. Keim,
  • Deborah Lokhorst,
  • Imad Pasha,
  • Zili Shen,
  • Jielai Zhang

DOI
https://doi.org/10.3847/1538-4357/acdee3
Journal volume & issue
Vol. 953, no. 1
p. 7

Abstract

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Unbiased sky background modeling is crucial for the analysis of deep wide-field images, but it remains a major challenge in low surface brightness astronomy. Traditional image processing algorithms are often designed to produce artificially flat backgrounds, erasing astrophysically meaningful structures. In this paper, we present three ideas that can be combined to produce wide-field astronomical data that preserve accurate representations of the background sky: (1) Use of all-sky infrared/submillimeter data to remove the large-scale time-varying components while leaving the scattered light from Galactic cirrus intact, with the assumptions of (a) the underlying background has little power on small scales, and (b) the Galactic cirrus in the field is optically thin on large scales; (2) Censoring of frames contaminated by anomalously prominent wings in the wide-angle point-spread function; and (3) Incorporation of spatial covariance in image stacking that controls the local background consistency. We demonstrate these methods using example data sets obtained with the Dragonfly Telephoto Array, but these general techniques are prospective to be applied to improve sky models in data obtained from other wide-field imaging surveys, including those from the upcoming Vera Rubin Telescope.

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