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Nathan S. Netanyahu

Researcher at Bar-Ilan University

Publications -  150
Citations -  12080

Nathan S. Netanyahu is an academic researcher from Bar-Ilan University. The author has contributed to research in topics: Image registration & Deep learning. The author has an hindex of 27, co-authored 144 publications receiving 11131 citations. Previous affiliations of Nathan S. Netanyahu include Universities Space Research Association & University of Maryland, College Park.

Papers
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Proceedings ArticleDOI

Enhancement of tropical land cover mapping with wavelet-based fusion and unsupervised clustering of SAR and Landsat image data

TL;DR: In this article, a wavelet-based fusion method is proposed to provide a new image data set which contains more detailed texture features and preserves the large homogeneous regions observed by the Thematic Mapper sensor, followed by unsupervised clustering and providing a vegetation map of the area.
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Robust detection of road segments in noisy aerial images

TL;DR: This paper first uses a local nonlinear operator to detect pixels whose neighborhoods are line-like, and then applies (robust) estimation techniques to find sets of such pixels that lie on, or near straight or circular loci.
Proceedings ArticleDOI

Earth science imagery registration

TL;DR: This paper surveys all the registration methods which may be applicable to Earth and space science problems and to evaluate their performances on a large variety of existing remote sensing data as well as on simulated data of soon-to-be-flown instruments.
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Stealing Knowledge from Protected Deep Neural Networks Using Composite Unlabeled Data

TL;DR: All current neural networks are vulnerable to mimicking attacks, even if they do not divulge anything but the most basic required output, and that the student model which mimics them cannot be easily detected and singled out as a stolen copy using currently available techniques.
Proceedings ArticleDOI

Mean shift-based clustering of remotely sensed data

TL;DR: This paper investigates how to further exploit the various characteristics of mean shift, in an attempt to achieve a robust and efficient clustering module for remotely sensed data.