Cross-modality deep learning brings bright-field microscopy contrast to holography

11/17/2018
by   Yichen Wu, et al.
0

Deep learning brings bright-field microscopy contrast to holographic images of a sample volume, bridging the volumetric imaging capability of holography with the speckle- and artifact-free image contrast of bright-field incoherent microscopy.

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