Publication | Open Access
Fast phase retrieval in off-axis digital holographic microscopy through deep learning
102
Citations
29
References
2018
Year
HolographyEngineeringMicroscopyHolographic MethodDigital HolographyImage AnalysisDefocused ImageBiophysicsPhysicsMedical ImagingDeep LearningFast Digital FocusPhase RetrievalFast Phase RetrievalPhase CompensationMicroscope Image ProcessingBiomedical ImagingQuantitative Phase ImagingMedicine
Traditional digital holographic imaging algorithms need multiple iterations to obtain focused reconstructed image, which is time-consuming. In terms of phase retrieval, there is also the problem of phase compensation in addition to focusing task. Here, a new method is proposed for fast digital focus, where we use U-type convolutional neural network (U-net) to recover the original phase of microscopic samples. Generated data sets are used to simulate different degrees of defocused image, and verify that the U-net can restore the original phase to a great extent and realize phase compensation at the same time. We apply this method in the construction of real-time off-axis digital holographic microscope and obtain great breakthroughs in imaging speed.
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