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Optica Publishing Group
  • Imaging and Applied Optics 2018 (3D, AO, AIO, COSI, DH, IS, LACSEA, LS&C, MATH, pcAOP)
  • OSA Technical Digest (Optica Publishing Group, 2018),
  • paper JTu4A.24
  • https://doi.org/10.1364/3D.2018.JTu4A.24

Analysis of 3D Image Reconstruction for Spherical Object Using Convolutional Neural Network in Digital Holography

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Abstract

3D depth measurement of object using digital holography is difficult to be realized because of the wavelength shorter than the depth of the object. In this paper, 3D image reconstruction of spherical object for digital holography is analyzed using convolutional neural network.

© 2018 The Author(s)

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