Calibration of residual aberrations in exoplanet imagers with large numbers of degrees of freedom
Rapha\"el Pourcelot, Arthur Vigan, Kjetil Dohlen, Bastien Rouz\'e,, Jean-Fran\c{c}ois Sauvage, Mona El Morsy, Maxime Lopez, Mamadou N'Diaye,, Amandine Caillat, \'Elodie Choquet, Gilles P. P. L. Otten, Alain Abbinanti,, Philippe Balard, Marcel Carbillet, Philippe Blanchard

TL;DR
This paper demonstrates a high-precision wavefront correction method using a secondary adaptive optics system with ZELDA and SLM to improve exoplanet imaging, especially for rocky planets, by compensating residual aberrations.
Contribution
It introduces a second-stage adaptive optics correction using ZELDA and SLM to control over 137 modes, enhancing wavefront correction for high-contrast exoplanet imaging.
Findings
Achieved nanometric wavefront correction up to 137 cycles per pupil.
Validated the correction method with classical Lyot coronagraph images.
Demonstrated potential for observing rocky exoplanets with improved image quality.
Abstract
Imaging faint objects, such as exoplanets or disks, around nearby stars is extremely challenging because host star images are dominated by the telescope diffraction pattern. Using a coronagraph is an efficient solution for removing diffraction but requires an incoming wavefront with good quality to maximize starlight rejection. On the ground, the most advanced exoplanet imagers use extreme adaptive optics (ExAO) systems that are based on a deformable mirror (DM) with a large number of actuators to efficiently compensate for high-order aberrations and provide diffraction-limited images. While several exoplanet imagers with DMs using around 1500 actuators are now routinely operating on large telescopes to observe gas giant planets, future systems may require a tenfold increase in the number of degrees of freedom to look for rocky planets. In this paper, we explore wavefront correction…
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