Photometric Completeness Modelled With Neural Networks
Abstract
In almost any study involving optical/NIR 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 modelled, {with the use of artificial-star tests,} in a way
that includes all of these parameters \emph{simultaneously} within a neural
network (NN) framework. The method is able to manage common issues including
asymmetric completeness functions and the bilinear dependence of the detection
limit on color index. We test the method with two sample HST (Hubble Space
Telescope) datasets: the first involves photometry of the star cluster
population around the giant Perseus galaxy NGC 1275, and the second involves
the halo-star population in the nearby elliptical galaxy NGC 3377. The NN-based
method achieves a classification accuracy of $>$\,94\%, and produces results
entirely consistent with more traditional techniques for determining
completeness. Additional advantages of the method are that none of the issues
arising from binning of the data are present, and that a recovery probability
can be assigned to every individual star in the real photometry. Our data,
models, and code (called COINTOSS) can be found online on Zenodo at the
following link: https://doi.org/10.5281/zenodo.8306488.