A new tool for image analysis based on Chebyshev rational functions: CHEF functions
Y. Jim\'enez-Teja, N. Ben\'itez

TL;DR
The paper introduces CHEF functions, a novel orthonormal basis combining Chebyshev rational functions and Fourier polynomials, enabling accurate, efficient, and artifact-free modeling of diverse galaxy shapes for astrophysical analysis.
Contribution
It presents a new orthonormal polar basis called CHEF functions, developed for improved galaxy image modeling with fewer components and higher accuracy than existing methods.
Findings
Accurately fits all galaxy shapes including irregulars and spirals
Uses fewer components than shapelets for similar accuracy
Provides high-quality flux and ellipticity estimates
Abstract
We introduce a new approach to the modelling of the light distribution of galaxies, an orthonormal polar base formed by a combination of Chebyshev rational functions and Fourier polynomials that we call CHEF functions, or CHEFs. We have developed an orthonormalization process to apply this basis to pixelized images, and implemented the method as a Python pipeline. The new basis displays remarkable flexibility, being able to accurately fit all kinds of galaxy shapes, including irregulars, spirals, ellipticals, highly compact and highly elongated galaxies. It does this while using fewer components that similar methods, as shapelets, and without producing artifacts, due to the efficiency of the rational Chebyshev polynomials to fit quickly decaying functions like galaxy profiles. The method is lineal and very stable, and therefore capable of processing large numbers of galaxies in a fast…
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