The ATLAS3D project - XVII. Linking photometric and kinematic signatures of stellar discs in early-type galaxies
Davor Krajnovic, Katherine Alatalo, Leo Blitz, Maxime Bois, Frederic, Bournaud, Martin Bureau, Michele Cappellari, Roger L. Davies, Timothy A., Davis, P. T. de Zeeuw, Pierre-Alain Duc, Eric Emsellem, Sadegh Khochfar,, Harald Kuntschner, Richard M. McDermid, Raffaella Morganti

TL;DR
This study links photometric structures with kinematic properties in early-type galaxies, revealing that many host discs and that light profile decomposition offers insights but is less reliable than kinematic data for classifying galaxy rotation types.
Contribution
It demonstrates that photometric decomposition can identify disc components in early-type galaxies, but kinematic analysis remains superior for classifying galaxy rotation states.
Findings
83% of early-type galaxies host discs or disc-like structures.
Median disk-to-total light ratio is 0.41 for fast rotators.
Light profile decomposition is less accurate than kinematic analysis for classifying rotation.
Abstract
[Abridged] We analyse the morphological structures in galaxies of the ATLAS3D sample by fitting a single Sersic profile and decomposing all non-barred objects (180 of 260 objects) in two components parameterised by an exponential and a general Sersic function. The aim of this analysis is to look for signatures of discs in light distributions of nearby early-type galaxies and compare them to kinematic properties. Using Sersic index from single component fits for a distinction between slow and fast rotators, or even late- and early-type galaxies, is not recommended. Assuming that objects with n>3 are slow rotators (or ellipticals), there is only a 22 per cent probability to correctly classify objects as slow rotators (or 37 per cent of previously classified as ellipticals). We show that exponential sub-components, as well as light profiles fitted with only a single component of a low…
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