Scientific Reports (Jul 2023)

Randomness assisted in-line holography with deep learning

  • Manisha,
  • Aditya Chandra Mandal,
  • Mohit Rathor,
  • Zeev Zalevsky,
  • Rakesh Kumar Singh

DOI
https://doi.org/10.1038/s41598-023-37810-w
Journal volume & issue
Vol. 13, no. 1
pp. 1 – 13

Abstract

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Abstract We propose and demonstrate a holographic imaging scheme exploiting random illuminations for recording hologram and then applying numerical reconstruction and twin image removal. We use an in-line holographic geometry to record the hologram in terms of the second-order correlation and apply the numerical approach to reconstruct the recorded hologram. This strategy helps to reconstruct high-quality quantitative images in comparison to the conventional holography where the hologram is recorded in the intensity rather than the second-order intensity correlation. The twin image issue of the in-line holographic scheme is resolved by an unsupervised deep learning based method using an auto-encoder scheme. Proposed learning technique leverages the main characteristic of autoencoders to perform blind single-shot hologram reconstruction, and this does not require a dataset of samples with available ground truth for training and can reconstruct the hologram solely from the captured sample. Experimental results are presented for two objects, and a comparison of the reconstruction quality is given between the conventional inline holography and the one obtained with the proposed technique.