SDSS IV MaNGA: Characterizing Non-Axisymmetric Motions in Galaxy Velocity Fields Using the Radon Transform
David V. Stark, Kevin A. Bundy, Kyle Westfall, Matt Bershady,, Anne-Marie Weijmans, Karen L. Masters, Sandor Kruk, Jarle Brinchmann, Juan, Soler, Roberto Abraham, Edmond Cheung, Dmitry Bizyaev, Niv Drory, Alexandre, Roman Lopes, David R. Law

TL;DR
This paper introduces a fast, non-parametric Radon transform method to analyze galaxy velocity fields, revealing diverse kinematic behaviors and deviations from simple circular motion in thousands of galaxies from the MaNGA survey.
Contribution
It demonstrates the application of the Radon transform to characterize galaxy velocity field asymmetries and variations in a large survey, providing a new tool for kinematic analysis.
Findings
Over half of stellar and two-thirds of gas velocity fields show deviations from circular motion.
Most velocity field variations are symmetric about galaxy centers.
Gas and stellar velocity fields often behave independently, indicating different kinematic influences.
Abstract
We show how the Radon transform (defined as a series of line integrals through an image at different orientations and offsets from the origin) can be used as a simple, non-parametric tool to characterize galaxy velocity fields, specifically their global kinematic position angles (PA_k) and any radial variation or asymmetry in PA_k. This method is fast and easily automated, making it particularly beneficial in an era where IFU and interferometric surveys are yielding samples of thousands of galaxies. We demonstrate the Radon transform by applying it to gas and stellar velocity fields from the first ~2800 galaxies of the SDSS-IV MaNGA IFU survey. We separately classify gas and stellar velocity fields into five categories based on the shape of their radial PA_k profiles. At least half of stellar velocity fields and two-thirds of gas velocity fields are found to show detectable deviations…
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