Spectroscopy of luminous z>7 galaxy candidates and sources of contamination in z>7 galaxy searches
P. Capak, B. Mobasher, N.Z. Scoville, H. McCracken, O. Ilbert, M., Salvato, K. Menendez-Delmestre, H. Aussel, C. Carilli, F. Civano, M. Elvis,, M. Giavalisco, E. Jullo, J. Kartaltepe, A. Leauthaud, A.M. Koekemoer, J.-P., Kneib, E. LeFloch, D.B. Sanders, E. Schinnerer, Y. Shioya

TL;DR
This study presents bright z>7 galaxy candidates, analyzes their spectral properties, and discusses potential contamination sources, highlighting challenges in high-redshift galaxy identification and implications for luminosity function evolution.
Contribution
It introduces three bright z>7 galaxy candidates with spectroscopic follow-up and investigates contamination sources affecting high-redshift galaxy searches.
Findings
Two candidates show tentative Ly-alpha emission at z~7.
One candidate is likely a low-redshift interloper at z~1.6.
Contamination from unknown low-redshift populations can mimic high-z galaxy colors.
Abstract
We present three bright z+ dropout candidates selected from deep Near-Infrared (NIR) imaging of the COSMOS 2 square degree field. All three objects match the 0.8-8um colors of other published z>7 candidates but are three magnitudes brighter, facilitating further study. Deep spectroscopy of two of the candidates covering 0.64-1.02um with Keck-DEIMOS and all three covering 0.94-1.10um and 1.52-1.80um with Keck-NIRSPEC detects weak spectral features tentatively identified as Ly-alpha at z=6.95 and z=7.69 in two of the objects. The third object is placed at z~1.6 based on a 24um and weak optical detection. A comparison with the spectral energy distributions of known z<7 galaxies, including objects with strong spectral lines, large extinction, and large systematic uncertainties in the photometry yields no objects with similar colors. However, the lambda>1um properties of all three objects…
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