No galaxy left behind: accurate measurements with the faintest objects in the Dark Energy Survey
E. Suchyta, E. M. Huff, J. Aleksi\'c, P. Melchior, S. Jouvel, N., MacCrann, M. Crocce, E. Gaztanaga, K. Honscheid, B. Leistedt, H.V. Peiris, A., J. Ross, E. S. Rykoff, E. Sheldon, T. Abbott, F. B. Abdalla, S. Allam, M., Banerji, A. Benoit-L\'evy, E. Bertin, D. Brooks

TL;DR
This paper introduces a new measurement method and software, Balrog, that embeds fake objects into real survey images to accurately characterize biases, enabling precise measurements of faint objects without discarding data.
Contribution
The paper presents a novel technique and software for bias correction in imaging surveys, allowing for accurate statistical measurements of faint objects across survey variations.
Findings
Bias correction reduces survey variation effects by over two orders of magnitude.
Angular clustering measurements agree with deeper space-based data within 10%.
Method improves statistical power in large imaging surveys.
Abstract
Accurate statistical measurement with large imaging surveys has traditionally required throwing away a sizable fraction of the data. This is because most measurements have have relied on selecting nearly complete samples, where variations in the composition of the galaxy population with seeing, depth, or other survey characteristics are small. We introduce a new measurement method that aims to minimize this wastage, allowing precision measurement for any class of stars or galaxies detectable in an imaging survey. We have implemented our proposal in Balrog, a software package which embeds fake objects in real imaging in order to accurately characterize measurement biases. We demonstrate this technique with an angular clustering measurement using Dark Energy Survey (DES) data. We first show that recovery of our injected galaxies depends on a wide variety of survey characteristics in…
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