The impact from survey depth and resolution on the morphological classification of galaxies
M. Povi\'c, I. M\'arquez, J. Masegosa, J. Perea, A. del Olmo, C., Simpson, J. A. L. Aguerri, B. Ascaso, Y. Jim\'enez-Teja, C. L\'opez-Sanjuan,, A. Molino, A. M. P\'erez-Garc\'ia, K. Viironen, C. Husillos, D., Crist\'obal-Hornillos, C. Caldwell, N. Ben\'itez, E. Alfaro, T.

TL;DR
This study evaluates how survey depth and resolution influence the reliability of non-parametric galaxy morphological parameters and classification diagrams across different survey types.
Contribution
It provides a comprehensive analysis of the biases introduced by survey depth and resolution on common morphological parameters and offers guidelines for their use in various survey conditions.
Findings
All parameters are affected by resolution and depth biases.
Asymmetry and smoothness require careful noise consideration in ground-based surveys.
Diagnostic diagrams should be used cautiously, especially for ground-based data.
Abstract
We consistently analyse for the first time the impact of survey depth and spatial resolution on the most used morphological parameters for classifying galaxies through non-parametric methods: Abraham and Conselice-Bershady concentration indices, Gini, M20 moment of light, asymmetry, and smoothness. Three different non-local datasets are used, ALHAMBRA and SXDS (examples of deep ground-based surveys), and COSMOS (deep space-based survey). We used a sample of 3000 local, visually classified galaxies, measuring their morphological parameters at their real redshifts (z ~ 0). Then we simulated them to match the redshift and magnitude distributions of galaxies in the non-local surveys. The comparisons of the two sets allow to put constraints on the use of each parameter for morphological classification and evaluate the effectiveness of the commonly used morphological diagnostic diagrams. All…
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