Digital holographic particle volume reconstruction using a deep neural network

This paper proposes a particle volume reconstruction directly from an in-line hologram using a deep neural network (DNN). Digital holographic volume reconstruction conventionally uses multiple diffraction calculations to obtain sectional reconstructed images from an in-line hologram, followed by det...

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Bibliographic Details
Published inApplied optics. Optical technology and biomedical optics Vol. 58; no. 8; p. 1900
Main Authors Shimobaba, Tomoyoshi, Takahashi, Takayuki, Yamamoto, Yota, Endo, Yutaka, Shiraki, Atsushi, Nishitsuji, Takashi, Hoshikawa, Naoto, Kakue, Takashi, Ito, Tomoyosh
Format Journal Article
LanguageEnglish
Published United States 10.03.2019
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Summary:This paper proposes a particle volume reconstruction directly from an in-line hologram using a deep neural network (DNN). Digital holographic volume reconstruction conventionally uses multiple diffraction calculations to obtain sectional reconstructed images from an in-line hologram, followed by detection of the lateral and axial positions, and the sizes of particles by using focus metrics. However, the axial resolution is limited by the numerical aperture of the optical system, and the processes are time consuming. The method proposed here can simultaneously detect the lateral and axial positions, and the particle sizes via a DNN. We numerically investigated the performance of the DNN in terms of the errors in the detected positions and sizes. The calculation time is faster than conventional diffracted-based approaches.
ISSN:2155-3165
DOI:10.1364/ao.58.001900