Optimality of the Maximum Likelihood estimator in Astrometry
Sebastian Espinosa, Jorge F. Silva, Rene A. Mendez, Rodrigo Lobos and, Marcos Orchard

TL;DR
This paper analyzes the performance limits of maximum likelihood and weighted least squares estimators in astrometry, providing analytical bounds and confirming their effectiveness through simulations under realistic conditions.
Contribution
It introduces new analytical bounds on bias and variance for astrometric estimators and demonstrates the optimality of the maximum likelihood estimator across various conditions.
Findings
Maximum likelihood estimator achieves near-optimal performance.
Weighted least squares estimator is sub-optimal at medium to high SNR.
Analytical bounds enable formal assessment of estimator precision.
Abstract
The problem of astrometry is revisited from the perspective of analyzing the attainability of well-known performance limits (the Cramer-Rao bound) for the estimation of the relative position of light-emitting (usually point-like) sources on a CCD-like detector using commonly adopted estimators such as the weighted least squares and the maximum likelihood. Novel technical results are presented to determine the performance of an estimator that corresponds to the solution of an optimization problem in the context of astrometry. Using these results we are able to place stringent bounds on the bias and the variance of the estimators in close form as a function of the data. We confirm these results through comparisons to numerical simulations under a broad range of realistic observing conditions. The maximum likelihood and the weighted least square estimators are analyzed. We confirm the…
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