Ultra High-Redshift or Closer-by, Dust-Obscured Galaxies? Deciphering the Nature of Faint, Previously Missed F200W-Dropouts in CEERS
G. Gandolfi, G. Rodighiero, L. Bisigello, A. Grazian, S. L. Finkelstein, M. Dickinson, M. Castellano, E. Merlin, A. Calabr\`o, C. Papovich, A. Bianchetti, E. Ba\~nados, P. Benotto, M. Catone, F. Buitrago, E. Daddi, G. Girardi, M. Giulietti, M. Hirschmann, B. W. Holwerda

TL;DR
This study uses JWST data to identify faint, dust-obscured, and ultra-high-redshift galaxy candidates, revealing new low-mass, dusty, and potential early universe objects with implications for galaxy evolution.
Contribution
The paper introduces a novel selection method and analysis pipeline for identifying faint, dust-obscured, and ultra-high-redshift galaxies in JWST CEERS data, including new candidate objects.
Findings
Identified three $2<z<3$ dusty dwarf galaxies with larger masses than typical.
Discovered five faint sources with high probability of $z>15$, compatible with $ m extLambda$CDM.
Found a galaxy at $z \\sim 5$ mimicking a $z \\sim 13$ galaxy's emission.
Abstract
The James Webb Space Telescope (JWST) is revolutionizing our understanding of the Universe by unveiling faint, near-infrared dropouts previously beyond our reach, ranging from exceptionally dusty sources to galaxies up to redshift . In this paper, we identify F200W-dropout objects in the Cosmic Evolution Early Release Science (CEERS) survey which are absent from existing catalogs. Our selection method can effectively identify obscured low-mass () objects at , massive dust-rich sources up to , and ultra-high-redshift () candidates. Primarily relying on NIRCam photometry from the latest CEERS data release and supplementing with Mid-Infrared/(sub-)mm data when available, our analysis pipeline combines multiple SED-fitting codes, star formation histories, and CosMix - a novel tool for astronomical stacking. Our work highlights…
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