Molina-Martel, FranciscoFranciscoMolina-MartelBaena-Gallé, RobertoRobertoBaena-GalléGladysz, SzymonSzymonGladysz2022-03-132022-03-132015https://publica.fraunhofer.de/handle/publica/39025210.1117/12.2194570Correction of atmospheric turbulence effects on images involves mainly mitigation of distortion (""de-warping"") and removal of image blur. One of the approaches for correcting atmospheric blurring involves the use of deconvolution. The ill-posed nature of the problem and the number of unknowns makes this problem hard to solve. This is why methods like blind deconvolution can be too time-consuming for real-time application. Additionally, an optimal parameter input is also often required (which requires interaction from an operator). Our ultimate goal is to perform an autonomous, software-based turbulence correction in real-time. This requires both very fast point-spread function (PSF) estimation and a deconvolution method. In this work we study new efficient ways to describe and estimate the PSF in anisoplanatic conditions.enturbulenceanisoplanatismdeconvolutionNATFast PSF estimation under anisoplanatic conditionsconference paper