Motion deblurring using spatiotemporal phase aperture coding
Author(s) -
Shay Elmalem,
Raja Giryes,
Emanuel Marom
Publication year - 2020
Publication title -
optica
Language(s) - English
Resource type - Journals
SCImago Journal Rank - 5.074
H-Index - 107
ISSN - 2334-2536
DOI - 10.1364/optica.399533
Subject(s) - deblurring , computer vision , artificial intelligence , computer science , motion blur , coding (social sciences) , image restoration , convolutional neural network , image processing , mathematics , image (mathematics) , statistics
Motion blur is a known issue in photography, as it limits the exposure time while capturing moving objects. Extensive research has been carried to compensate for it. In this work, a computational imaging approach for motion deblurring is proposed and demonstrated. Using dynamic phase-coding in the lens aperture during the image acquisition, the trajectory of the motion is encoded in an intermediate optical image. This encoding embeds both the motion direction and extent by coloring the spatial blur of each object. The color cues serve as prior information for a blind deblurring process, implemented using a convolutional neural network (CNN) trained to utilize such coding for image restoration. We demonstrate the advantage of the proposed approach over blind-deblurring with no coding and other solutions that use coded acquisition, both in simulation and real-world experiments.
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