Bayesian Lensing Shear Measurement
Gary M. Bernstein, Robert Armstrong

TL;DR
This paper introduces a Bayesian approach to weak gravitational lensing shear measurement that eliminates noise biases and provides highly accurate, model-free shear estimates suitable for large-scale surveys.
Contribution
It develops two novel Bayesian shear estimation methods, BMF and BFD, that are unbiased, model-free, and effectively handle noise and PSF effects in galaxy images.
Findings
Shear estimates are unbiased to less than 1 part in 10^3.
BFD requires no assumptions or approximations for PSF and noise correction.
Methods are suitable for large-scale weak lensing surveys.
Abstract
We derive an estimator of weak gravitational lensing shear from background galaxy images that avoids noise-induced biases through a rigorous Bayesian treatment of the measurement. The derived shear estimator disposes with the assignment of ellipticities to individual galaxies that is typical of previous approaches to galaxy lensing. Shear estimates from the mean of the Bayesian posterior are unbiased in the limit of large number of background galaxies, regardless of the noise level on individual galaxies. The Bayesian formalism requires a prior describing the (noiseless) distribution of the target galaxy population over some parameter space; this prior can be constructed from low-noise images of a subsample of the target population, attainable from long integrations of a fraction of the survey field. We find two ways to combine this exact treatment of noise with rigorous treatment of…
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