GOODS-$Herschel$: identification of the individual galaxies responsible for the 80-290$\mu$m cosmic infrared background
R. Leiton, D. Elbaz, K. Okumura, H. S. Hwang, G. Magdis, B. Magnelli,, I. Valtchanov, M. Dickinson, M. B\'ethermin, C. Schreiber, V. Charmandaris,, H. Dole, S. Juneau, D. Le Borgne, M. Pannella, A. Pope, and P. Popesso

TL;DR
This paper introduces a new method to push Herschel telescope detection limits, significantly increasing the contribution of individual galaxies to the cosmic infrared background and identifying their properties.
Contribution
The study presents a novel approach using infrared colour trends to detect fainter sources and accurately quantify their contribution to the cosmic infrared background.
Findings
Individually detected sources account for over 50% of the CIRB in key Herschel bands.
Detection limits improved by factors of 3 to 5 over standard confusion limits.
Distant Milky Way-like galaxies at z~0.96 dominate the CIRB contributions.
Abstract
We propose a new method of pushing to its faintest detection limits using universal trends in the redshift evolution of the far infrared over 24m colours in the well-sampled GOODS-North field. An extension to other fields with less multi-wavelength information is presented. This method is applied here to raise the contribution of individually detected sources to the cosmic infrared background (CIRB) by a factor 5 close to its peak at 250m and more than 3 in the 350m and 500m bands. We produce realistic mock images of the deep PACS and SPIRE images of the GOODS-North field from the GOODS- Key Program and use them to quantify the confusion noise at the position of individual sources, i.e., estimate a "local confusion noise". Two methods are used to identify sources with reliable photometric accuracy extracted using 24m…
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