Modeling lens potentials with continuous neural fields in galaxy-scale strong lenses
Luca Biggio, Georgios Vernardos, Aymeric Galan, Austin Peel

TL;DR
This paper introduces a continuous neural field approach for modeling galaxy-scale strong lensing potentials, enabling flexible, nearly model-independent mass reconstructions directly from imaging data without pre-training.
Contribution
It presents a novel neural network-based method that explicitly incorporates lensing physics to accurately recover mass distributions and perturbations from single observed images.
Findings
Successfully models simulated lensing data with substructures.
Accurately recovers properties of smooth and perturbed potentials.
Operates without pre-training on large datasets.
Abstract
Strong gravitational lensing is a unique observational tool for studying the dark and luminous mass distribution both within and between galaxies. Given the presence of substructures, current strong lensing observations demand more complex mass models than smooth analytical profiles, such as power-law ellipsoids. In this work, we introduce a continuous neural field to predict the lensing potential at any position throughout the image plane, allowing for a nearly model-independent description of the lensing mass. We apply our method on simulated Hubble Space Telescope imaging data containing different types of perturbations to a smooth mass distribution: a localized dark subhalo, a population of subhalos, and an external shear perturbation. Assuming knowledge of the source surface brightness, we use the continuous neural field to model either the perturbations alone or the full lensing…
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Taxonomy
TopicsAdaptive optics and wavefront sensing · Galaxies: Formation, Evolution, Phenomena · Stellar, planetary, and galactic studies
