Literature DB >> 35991913

HoloPhaseNet: fully automated deep-learning-based hologram reconstruction using a conditional generative adversarial model.

Keyvan Jaferzadeh1, Thomas Fevens1.   

Abstract

Quantitative phase imaging with off-axis digital holography in a microscopic configuration provides insight into the cells' intracellular content and morphology. This imaging is conventionally achieved by numerical reconstruction of the recorded hologram, which requires the precise setting of the reconstruction parameters, including reconstruction distance, a proper phase unwrapping algorithm, and component of wave vectors. This paper shows that deep learning can perform the complex light propagation task independent of the reconstruction parameters. We also show that the super-imposed twin-image elimination technique is not required to retrieve the quantitative phase image. The hologram at the single-cell level is fed into a trained image generator (part of a conditional generative adversarial network model), which produces the phase image. Also, the model's generalization is demonstrated by training it with holograms of size 512×512 pixels, and the resulting quantitative analysis is shown.
© 2022 Optica Publishing Group under the terms of the Optica Open Access Publishing Agreement.

Entities:  

Year:  2022        PMID: 35991913      PMCID: PMC9352290          DOI: 10.1364/BOE.452645

Source DB:  PubMed          Journal:  Biomed Opt Express        ISSN: 2156-7085            Impact factor:   3.562


  29 in total

1.  Reconstruction of in-line digital holograms from two intensity measurements.

Authors:  Yan Zhang; Giancarlo Pedrini; Wolfgang Osten; Hans J Tiziani
Journal:  Opt Lett       Date:  2004-08-01       Impact factor: 3.776

2.  Solution to the twin image problem in holography.

Authors:  Tatiana Latychevskaia; Hans-Werner Fink
Journal:  Phys Rev Lett       Date:  2007-06-04       Impact factor: 9.161

3.  Reconstruction of a complex object from two in-line holograms.

Authors:  Yuxuan Zhang; Xinyi Zhang
Journal:  Opt Express       Date:  2003-03-24       Impact factor: 3.894

4.  A new microscopic principle.

Authors:  D GABOR
Journal:  Nature       Date:  1948-05-15       Impact factor: 49.962

5.  Deep Adversarial Training for Multi-Organ Nuclei Segmentation in Histopathology Images.

Authors:  Faisal Mahmood; Daniel Borders; Richard J Chen; Gregory N Mckay; Kevan J Salimian; Alexander Baras; Nicholas J Durr
Journal:  IEEE Trans Med Imaging       Date:  2020-10-28       Impact factor: 10.048

6.  Fast phase retrieval in off-axis digital holographic microscopy through deep learning.

Authors:  Gong Zhang; Tian Guan; Zhiyuan Shen; Xiangnan Wang; Tao Hu; Delai Wang; Yonghong He; Ni Xie
Journal:  Opt Express       Date:  2018-07-23       Impact factor: 3.894

7.  Cell nuclei have lower refractive index and mass density than cytoplasm.

Authors:  Mirjam Schürmann; Jana Scholze; Paul Müller; Jochen Guck; Chii J Chan
Journal:  J Biophotonics       Date:  2016-03-24       Impact factor: 3.207

8.  Parallel phase-shifting digital holographic microscopy.

Authors:  Tatsuki Tahara; Kenichi Ito; Takashi Kakue; Motofumi Fujii; Yuki Shimozato; Yasuhiro Awatsuji; Kenzo Nishio; Shogo Ura; Toshihiro Kubota; Osamu Matoba
Journal:  Biomed Opt Express       Date:  2010-08-18       Impact factor: 3.732

9.  PhaseStain: the digital staining of label-free quantitative phase microscopy images using deep learning.

Authors:  Yair Rivenson; Tairan Liu; Zhensong Wei; Yibo Zhang; Kevin de Haan; Aydogan Ozcan
Journal:  Light Sci Appl       Date:  2019-02-06       Impact factor: 17.782

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