TL;DR
ProFit is a new Bayesian galaxy profile fitting software with fast, accurate integration and high-level interfaces in R and Python, validated on SDSS and KiDS data, promising improved automated galaxy analysis.
Contribution
ProFit introduces a comprehensive Bayesian galaxy profile fitting tool with a C++ core, high-level interfaces, and validated performance improvements over GALFIT.
Findings
libprofit is faster and more accurate than GALFIT for Sersic profiles.
ProFit achieves consistent parameter estimates across different imaging sources.
Moving from SDSS to KiDS data significantly improves fit quality.
Abstract
We present ProFit, a new code for Bayesian two-dimensional photometric galaxy profile modelling. ProFit consists of a low-level C++ library (libprofit), accessible via a command-line interface and documented API, along with high-level R (ProFit) and Python (PyProFit) interfaces (available at github.com/ICRAR/ libprofit, github.com/ICRAR/ProFit, and github.com/ICRAR/pyprofit respectively). R ProFit is also available pre-built from CRAN, however this version will be slightly behind the latest GitHub version. libprofit offers fast and accurate two- dimensional integration for a useful number of profiles, including Sersic, Core-Sersic, broken-exponential, Ferrer, Moffat, empirical King, point-source and sky, with a simple mechanism for adding new profiles. We show detailed comparisons between libprofit and GALFIT. libprofit is both faster and more accurate than GALFIT at integrating the…
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