Morphologies of High Redshift, Dust Obscured Galaxies from Keck Laser Guide Star Adaptive Optics
J. Melbourne (1), V. Desai (2), Lee Armus (2), Arjun Dey (3), K. Brand, (4), D. Thompson (5), B. T. Soifer (1,2), K. Matthews (1), B. T. Jannuzi (3),, J. R. Houck (6) ((1) California Institute of Technology, (2) Spitzer Science, Center, (3) National Optical Astronomy Observatory

TL;DR
This study uses Keck Laser Guide Star Adaptive Optics imaging to analyze the morphologies of dust-obscured galaxies at z~2, revealing their compact, smooth structures and ruling out major mergers as the primary trigger for their high infrared luminosity.
Contribution
First high-resolution AO imaging of z~2 dust-obscured galaxies, showing their compact, smooth morphologies and challenging merger-driven models for their luminosity.
Findings
DOGs are compact and smooth with no evidence of major mergers.
They have smaller sizes and higher concentrations compared to z=1 LIRGs.
AO images rule out double nuclei with separations >0.1''.
Abstract
Spitzer MIPS images in the Bootes field of the NOAO Deep Wide-Field Survey have revealed a class of extremely dust obscured galaxy (DOG) at z~2. The DOGs are defined by very red optical to mid-IR (observed-frame) colors, R - [24 um] > 14 mag, i.e. f_v (24 um) / f_v (R) > 1000. They are Ultra-Luminous Infrared Galaxies with L_8-1000 um > 10^12 -10^14 L_sun, but typically have very faint optical (rest-frame UV) fluxes. We imaged three DOGs with the Keck Laser Guide Star Adaptive Optics (LGSAO) system, obtaining ~0.06'' resolution in the K'-band. One system was dominated by a point source, while the other two were clearly resolved. Of the resolved sources, one can be modeled as a exponential disk system. The other is consistent with a de Vaucouleurs profile typical of elliptical galaxies. The non-parametric measures of their concentration and asymmetry, show the DOGs to be both compact and…
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