Image reconstruction in optical interferometry: Benchmarking the regularization
St\'ephanie Renard, Eric Thi\'ebaut, Fabien Malbet

TL;DR
This paper systematically evaluates regularization techniques in optical interferometry image reconstruction, providing practical guidelines and demonstrating the importance of (u,v) coverage and array sensitivity for reliable imaging.
Contribution
It offers a comprehensive benchmarking of 11 regularization methods using MiRA, establishing minimal data requirements and parameter choices for effective image reconstruction.
Findings
Regularization choice significantly affects image quality.
Adequate (u,v) coverage is essential for reliable reconstruction.
Super-resolution improves with increased (u,v) coverage.
Abstract
With the advent of infrared long-baseline interferometers with more than two telescopes, both the size and the completeness of interferometric data sets have significantly increased, allowing images based on models with no a priori assumptions to be reconstructed. Our main objective is to analyze the multiple parameters of the image reconstruction process with particular attention to the regularization term and the study of their behavior in different situations. The secondary goal is to derive practical rules for the users. Using the Multi-aperture image Reconstruction Algorithm (MiRA), we performed multiple systematic tests, analyzing 11 regularization terms commonly used. The tests are made on different astrophysical objects, different (u,v) plane coverages and several signal-to-noise ratios to determine the minimal configuration needed to reconstruct an image. We establish a…
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