The FourStar Galaxy Evolution Survey (ZFOURGE): ultraviolet to far-infrared catalogs, medium-bandwidth photometric redshifts with improved accuracy, stellar masses, and confirmation of quiescent galaxies to z~3.5
Caroline M. S. Straatman, Lee R. Spitler, Ryan F. Quadri, Ivo Labbe,, Karl Glazebrook, S. Eric Persson, Casey Papovich, Kim-Vy H. Tran, Gabriel B., Brammer, Michael Cowley, Adam Tomczak, Themiya Nanayakkara, Leo Alcorn,, Rebecca Allen, Adam Broussard, Pieter van Dokkum

TL;DR
The ZFOURGE survey provides deep, multi-band near-infrared photometric data for over 70,000 galaxies, enabling precise photometric redshifts, stellar properties, and confirming quiescent galaxies up to redshift 3.5, significantly advancing galaxy evolution studies.
Contribution
This work introduces medium-bandwidth near-infrared photometry that improves redshift accuracy and galaxy property measurements, and confirms the existence of quiescent galaxies at high redshift.
Findings
Photometric redshift uncertainty is ~0.01, with improvements from medium bands.
Including medium bands halves the redshift error for certain galaxy populations.
Quiescent galaxies are confirmed at z~3 with significantly suppressed star formation.
Abstract
The FourStar galaxy evolution survey (ZFOURGE) is a 45 night legacy program with the FourStar near-infrared camera on Magellan and one of the most sensitive surveys to date. ZFOURGE covers a total of in cosmic fields CDFS, COSMOS and UDS, overlapping CANDELS. We present photometric catalogs comprising galaxies, selected from ultradeep -band detection images ( AB mag, , total), and complete to AB. We use 5 near-IR medium-bandwidth filters () as well as broad-band at to AB at a seeing of ". Each field has ancillary imaging in filters at . We derive photometric redshifts and stellar population properties. Comparing with spectroscopic redshifts indicates a photometric redshift uncertainty , and…
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