Deep Learning Enabled Holographic Polarization Microscopy
ORAL
Abstract
Polarization microscopy has long been used in various fields due to its unique capability of highlighting birefringent objects. Traditional polarization microscopy techniques usually require the collection of two or more images from light paths with different polarization states to either enhance the image contrast or retrieve quantitative information of birefringent specimen. Because of this, these methods typically have complex optical designs and require experienced technicians to operate. Here, we present a deep learning-based holographic polarization microscopy framework which transforms the holographic amplitude and phase information of a sample into the birefringent retardance and orientation channels. This framework only requires the addition of one polarizer/analyzer pair to an existing lensfree holographic imaging system, with a compact optical design and a large field of view (~20-30 mm2). We experimentally tested this framework with different types of birefringent samples including monosodium urate (MSU) crystals, showing its capability to accurately reconstruct quantitative birefringence information of specimen.
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Presenters
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Tairan Liu
University of California, Los Angeles
Authors
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Tairan Liu
University of California, Los Angeles
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Kevin de Haan
University of California, Los Angeles
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Bijie Bai
University of California, Los Angeles
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Yair Rivenson
University of California, Los Angeles
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Yi Luo
University of California, Los Angeles
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Hongda Wang
University of California, Los Angeles
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David Karalli
University of California, Los Angeles
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Hongxiang Fu
University of California, Los Angeles
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Yibo Zhang
University of California, Los Angeles
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John FitzGerald
University of California, Los Angeles
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Aydogan Ozcan
University of California, Los Angeles