A robust morphological classification of high-redshift galaxies using support vector machines on seeing limited images. II. Quantifying morphological k-correction in the COSMOS field at 1<z<2: Ks band vs. I band
M. Huertas-Company, L. Tasca, D. Rouan, D. Pelat, J.P. Kneib, O. Le, Fevre, P. Capak, J. Kartaltepe, A. Koekemoer, H.J. McCracken, M. Salvato,, D.B. Sanders, C. Willott

TL;DR
This study uses support vector machines to classify high-redshift galaxies in the COSMOS field, comparing K-band and I-band morphologies to quantify the effects of morphological k-correction up to redshift 2.
Contribution
It introduces a non-parametric SVM-based method for reliable galaxy classification on seeing-limited images and assesses the impact of morphological k-correction on galaxy type estimates at high redshift.
Findings
Classification remains reliable up to z~2 with high probability scores.
I-band classifications underestimate early-type galaxies above z~1.
Morphological k-correction causes differences in galaxy type counts between K and I bands.
Abstract
We quantify the effects of \emph{morphological k-correction} at by comparing morphologies measured in the K and I-bands in the COSMOS area. Ks-band data have indeed the advantage of probing old stellar populations for , enabling a determination of galaxy morphological types unaffected by recent star formation. In paper I we presented a new non-parametric method to quantify morphologies of galaxies on seeing limited images based on support vector machines. Here we use this method to classify selected galaxies in the COSMOS area observed with WIRCam at CFHT. The obtained classification is used to investigate the redshift distributions and number counts per morphological type up to and to compare to the results obtained with HST/ACS in the I-band on the same objects from other works. We associate to every galaxy with and a…
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