Publication | Open Access
Aberration correction based on a pre-correction convolutional neural network for light-field displays
32
Citations
17
References
2021
Year
Optical DesignLight Field ImagingAdaptive OpticLight-field DisplaysEngineeringOphthalmologyMicroscopyAberration CorrectionElemental Image ArrayOptic DesignComputational ImagingComputational IlluminationGeometrical AberrationComputational PhotographyLens AberrationsMedicineImage QualityComputer Vision
Lens aberrations degrade the image quality and limit the viewing angle of light-field displays. In the present study, an approach to aberration reduction based on a pre-correction convolutional neural network (CNN) is demonstrated. The pre-correction CNN is employed to transform the elemental image array (EIA) generated by a virtual camera array into a pre-corrected EIA (PEIA). The pre-correction CNN is built and trained based on the aberrations of the lens array. The resulting PEIA, rather than the EIA, is presented on the liquid crystal display. Via the optical transformation of the lens array, higher quality 3D images are obtained. The validity of the proposed method is confirmed through simulations and optical experiments. A 70-degree viewing angle light field display with the improved image quality is demonstrated.
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