We introduce phi, a fully Bayesian Markov chain Monte Carlo algorithm designed for the structural decomposition of galaxy images. phi uses a triple layer approach to effectively and efficiently explore the complex parameter space. Combining this with the use of priors to prevent non-physical models, phi offers a number of significant advantages for estimating surface brightness profile parameters over traditional optimization algorithms. We apply phi to a sample of synthetic galaxies with Sloan Digital Sky Survey (SDSS)-like image properties to investigate the effect of galaxy properties on our ability to recover unbiased and well-constrained structural parameters. In two-component bulge+disc galaxies, we find that the bulge structural para...
We introduce a new galaxy image decomposition tool, GALPHAT (GALaxy PHotometric ATtributes), to prov...
Aims. We present a new Bayesian non-parametric deprojection algorithm DOPING (Deprojection of Obser...
In this paper I present a new two-dimensional decomposition technique, which models the surface phot...
Funding: JMA, and VW acknowledge support of the European Research Council via the award of a startin...
In this thesis I develop Bayesian approach to model galaxy surface brightness and apply it to a bulg...
In this thesis I develop Bayesian approach to model galaxy surface brightness and apply it to a bulg...
We introduce a novel image decomposition package, Galphat, that provides robust estimates of galaxy ...
Galaxy structures in the local Universe are the result of an evolution spanning billions of years. ...
The analysis of the light distribution of galaxy is a crucial step in studying their structural comp...
We introduce a new galaxy image decomposition tool, galphat (GALaxy PHotometric ATtributes), which i...
Bulge–disc decomposition is a valuable tool for understanding galaxies. However, achieving robust me...
We propose a two-dimensional galaxy fitting algorithm to extract parameters of the bulge, disk, and ...
We derive single Sérsic fits and bulge-disc decompositions for 13 096 galaxies at redshifts z \u3c 0...
We introduce a new galaxy image decomposition tool, GALPHAT (GALaxy PHotometric ATtributes), to prov...
Aims. We present a new Bayesian non-parametric deprojection algorithm DOPING (Deprojection of Obser...
In this paper I present a new two-dimensional decomposition technique, which models the surface phot...
Funding: JMA, and VW acknowledge support of the European Research Council via the award of a startin...
In this thesis I develop Bayesian approach to model galaxy surface brightness and apply it to a bulg...
In this thesis I develop Bayesian approach to model galaxy surface brightness and apply it to a bulg...
We introduce a novel image decomposition package, Galphat, that provides robust estimates of galaxy ...
Galaxy structures in the local Universe are the result of an evolution spanning billions of years. ...
The analysis of the light distribution of galaxy is a crucial step in studying their structural comp...
We introduce a new galaxy image decomposition tool, galphat (GALaxy PHotometric ATtributes), which i...
Bulge–disc decomposition is a valuable tool for understanding galaxies. However, achieving robust me...
We propose a two-dimensional galaxy fitting algorithm to extract parameters of the bulge, disk, and ...
We derive single Sérsic fits and bulge-disc decompositions for 13 096 galaxies at redshifts z \u3c 0...
We introduce a new galaxy image decomposition tool, GALPHAT (GALaxy PHotometric ATtributes), to prov...
Aims. We present a new Bayesian non-parametric deprojection algorithm DOPING (Deprojection of Obser...
In this paper I present a new two-dimensional decomposition technique, which models the surface phot...