Journal article
Photometric Completeness Modelled with Neural Networks
Abstract
In almost any study involving optical/near-infrared photometry, understanding the completeness of detection and recovery is an essential part of the work. The recovery fraction is, in general, a function of several variables including magnitude, color, background sky noise, and crowding. We explore how completeness can be modeled, with the use of artificial-star tests, in a way that includes all of these parameters simultaneously within a …
Authors
Harris WE; Speagle JS
Journal
The Astronomical Journal, Vol. 168, No. 1,
Publisher
American Astronomical Society
Publication Date
July 1, 2024
DOI
10.3847/1538-3881/ad4a76
ISSN
0004-6256