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Experimental wavefront sensing techniques based on deep learning models using a Hartmann-Shack sensor for visual

Juan Sebastián Ramírez-Quintero1, Andres Osorno-Quiroz2, Walter Torres-Sepúlveda3,4

  • 1Grupo de Óptica y Fotónica, Instituto de Física, Facultad de Ciencias Exactas y Naturales, Universidad de Antioquia UdeA, Calle 70 No. 52-21, Medellín, Colombia. juan.ramirez114@udea.edu.co.

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Summary
This summary is machine-generated.

A new deep learning method using a modified ResNet convolutional neural network (CNN) significantly improves wavefront sensing. This AI approach enhances accuracy and speed for optical quality evaluation in visual optics.

Keywords:
Convolutional neural networkDeep learningHartmann-Shack wavefront sensorOptical aberrationsVisual opticsWavefront sensing

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Area of Science:

  • Visual Optics
  • Optical Engineering
  • Artificial Intelligence in Optics

Background:

  • Wavefront sensing is critical for assessing optical quality in systems like the human eye.
  • Traditional Hartmann-Shack wavefront sensors (HSS) have limitations in precision, dynamic range, and speed.
  • Deep learning offers potential solutions to overcome existing wavefront sensing challenges.

Purpose of the Study:

  • To develop a novel approach to enhance Hartmann-Shack wavefront sensor (HSS) performance using deep learning.
  • To investigate the efficacy of a modified ResNet convolutional neural network (CNN) for wavefront aberration reconstruction.
  • To evaluate the impact of the proposed CNN model on accuracy, speed, and dynamic range compared to traditional methods.

Main Methods:

  • A modified ResNet convolutional neural network (CNN) architecture was developed for wavefront sensing.
  • Experimental datasets were generated using a custom monocular visual simulator, including noise-free and speckle noise conditions.
  • The CNN model was trained and tested on images from the Hartmann-Shack wavefront sensor (HSS).

Main Results:

  • The proposed CNN model demonstrated superior accuracy in processing HSS images.
  • Wavefront aberration reconstruction time was reduced by 300% to 400% compared to traditional methods.
  • The dynamic range of wavefront sensing was increased by 315.6% using the CNN approach.

Conclusions:

  • The modified ResNet CNN model significantly enhances wavefront sensing capabilities.
  • This deep learning approach offers a practical and efficient solution for improving optical quality evaluation.
  • The findings have implications for advancing applications in visual optics and related fields.