SIMBAD references

2024PASP..136a4501V - Publ. Astron. Soc. Pac., 136, part no 1, 4501 (2024/January-0)

Optimal Photometry of Point Sources: Joint Source Flux and Background Determination on Array Detectors-from Theory to Practical Implementation.

VICUNA M.L., SILVA J.F., MENDEZ R.A., ORCHARD M.E., ESPINOSA S. and TREGLOAN-REED J.

Abstract (from CDS):

In this paper we study the joint determination of source and background flux for point sources as observed by digital array detectors. We explicitly compute the two-dimensional Cramér-Rao absolute lower bound (CRLB) as well as the performance bounds for high-dimensional implicit estimators from a generalized Taylor expansion. This later approach allows us to obtain computable prescriptions for the bias and variance of the joint estimators. We compare these prescriptions with empirical results from numerical simulations in the case of the weighted least squares estimator (introducing an improved version, denoted stochastic weighted least-squares) as well as with the maximum likelihood estimator, finding excellent agreement. We demonstrate that these estimators provide quasi-unbiased joint estimations of the flux and background, with a variance that approaches the CRLB very tightly and are, hence, optimal, unlike the case of sequential estimation used commonly in astronomical photometry which is sub-optimal. We compare our predictions with numerical simulations of realistic observations, as well as with observations of a bona fide non-variable stellar source observed with TESS, and compare it to the results from the sequential estimation of background and flux, confirming our theoretical expectations. Our practical estimators can be used as benchmarks for general photometric pipelines, or for applications that require maximum precision and accuracy in absolute photometry.

Abstract Copyright: © 2024. The Astronomical Society of the Pacific. All rights reserved.

Journal keyword(s): Photometry - CCD photometry - Maximum likelihood estimation - Minimum chi-squared - Bayesian statistics

Simbad objects: 1

goto Full paper

goto View the references in ADS

To bookmark this query, right click on this link: simbad:2024PASP..136a4501V and select 'bookmark this link' or equivalent in the popup menu