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Anat Levin

Researcher at Technion – Israel Institute of Technology

Publications -  107
Citations -  14409

Anat Levin is an academic researcher from Technion – Israel Institute of Technology. The author has contributed to research in topics: Speckle pattern & Scattering. The author has an hindex of 42, co-authored 91 publications receiving 12993 citations. Previous affiliations of Anat Levin include Stanford University & Hebrew University of Jerusalem.

Papers
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Proceedings ArticleDOI

Efficient marginal likelihood optimization in blind deconvolution

TL;DR: This paper derives a simple approximated MAPk algorithm which involves only a modest modification of common MAPx, k algorithms, and shows that MAPk can, in fact, be optimized easily, with no additional computational complexity.
Book ChapterDOI

Seamless Image Stitching in the Gradient Domain

TL;DR: The quality of image stitching is measured by the similarity of the stitched image to each of the input images, and by the visibility of the seam between the stitches.
Proceedings Article

Blind Motion Deblurring Using Image Statistics

TL;DR: This work addresses the problem of blind motion deblurring from a single image, caused by a few moving objects, and relies on the observation that the statistics of derivative filters in images are significantly changed by blur.
Journal ArticleDOI

Understanding Blind Deconvolution Algorithms

TL;DR: The previously reported failure of the naive MAP approach is explained by demonstrating that it mostly favors no-blur explanations and it is shown that, using reasonable image priors, a naive simulations MAP estimation of both latent image and blur kernel is guaranteed to fail even with infinitely large images sampled from the prior.
Proceedings Article

Ranking with Large Margin Principle: Two Approaches

TL;DR: Two main approaches to the problem of ranking k instances with the use of a "large margin" principle are introduced: the "fixed margin" policy in which the margin of the closest neighboring classes is being maximized and a direct generalization of SVM to ranking learning.