• Advanced Photonics
  • Vol. 2, Issue 2, 026001 (2020)
Joowon Lim*, Ahmed B. Ayoub, and Demetri Psaltis
Author Affiliations
  • École Polytechnique Fédérale de Lausanne, Optics Laboratory, Lausanne, Switzerland
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    DOI: 10.1117/1.AP.2.2.026001 Cite this Article Set citation alerts
    Joowon Lim, Ahmed B. Ayoub, Demetri Psaltis. Three-dimensional tomography of red blood cells using deep learning[J]. Advanced Photonics, 2020, 2(2): 026001 Copy Citation Text show less
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    [1] Chen Bai, Tong Peng, Junwei Min, Runze Li, Yuan Zhou, Baoli Yao. Dual-wavelength in-line digital holography with untrained deep neural networks[J]. Photonics Research, 2021, 9(12): 2501

    [2] Dashan Dong, Kebin Shi. Solving the missing cone problem by deep learning[J]. Advanced Photonics, 2020, 2(2): 020501

    Joowon Lim, Ahmed B. Ayoub, Demetri Psaltis. Three-dimensional tomography of red blood cells using deep learning[J]. Advanced Photonics, 2020, 2(2): 026001
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