GLIMPSE: Accurate 3D weak lensing reconstructions using sparsity
Adrienne Leonard, Fran\c{c}ois Lanusse, Jean-Luc Starck

TL;DR
GLIMPSE introduces a novel sparse reconstruction algorithm for 3D weak lensing data, enabling high-resolution, accurate localization, and characterization of galaxy clusters, outperforming previous methods in bias reduction and resolution.
Contribution
The paper presents a new 3D weak lensing reconstruction method using sparsity and compressive sensing, significantly improving resolution and bias over earlier techniques.
Findings
Achieves 6x finer redshift resolution than shear data.
Accurately localizes galaxy clusters with minimal redshift bias.
Redshift and mass estimators are largely unbiased in simulations.
Abstract
We present GLIMPSE - Gravitational Lensing Inversion and MaPping with Sparse Estimators - a new algorithm to generate density reconstructions in three dimensions from photometric weak lensing measurements. This is an extension of earlier work in one dimension aimed at applying compressive sensing theory to the inversion of gravitational lensing measurements to recover 3D density maps. Using the assumption that the density can be represented sparsely in our chosen basis - 2D transverse wavelets and 1D line of sight dirac functions - we show that clusters of galaxies can be identified and accurately localised and characterised using this method. Throughout, we use simulated data consistent with the quality currently attainable in large surveys. We present a thorough statistical analysis of the errors and biases in both the redshifts of detected structures and their amplitudes. The GLIMPSE…
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