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Automated phase unwrapping in digital holography with deep learning
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- Title
- Automated phase unwrapping in digital holography with deep learning
- Issued Date
- 2021-11
- Citation
- Park, Seonghwan. (2021-11). Automated phase unwrapping in digital holography with deep learning. Biomedical Optics Express, 12(11), 7064–7081. doi: 10.1364/BOE.440338
- Type
- Article
- Keywords
- NETWORK ; BRANCH-CUT ALGORITHM ; NUMERICAL RECONSTRUCTION ; ROBUST ; IMAGE ; INTERFEROMETRY ; MICROSCOPY ; CONTRAST
- ISSN
- 2156-7085
- Abstract
-
Digital holography can provide quantitative phase images related to the morphology and content of biological samples. After the numerical image reconstruction, the phase values are limited between −π and π; thus, discontinuity may occur due to the modulo 2π operation. We propose a new deep learning model that can automatically reconstruct unwrapped focused-phase images by combining digital holography and a Pix2Pix generative adversarial network (GAN) for image-to-image translation. Compared with numerical phase unwrapping methods, the proposed GAN model overcomes the difficulty of accurate phase unwrapping due to abrupt phase changes and can perform phase unwrapping at a twice faster rate. We show that the proposed model can generalize well to different types of cell images and has high performance compared to recent U-net models. The proposed method can be useful in observing the morphology and movement of biological cells in real-time applications. © 2021 Optical Society of America
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- Publisher
- The Optical Society
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