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Azriel Rosenfeld

Researcher at University of Maryland, College Park

Publications -  613
Citations -  50771

Azriel Rosenfeld is an academic researcher from University of Maryland, College Park. The author has contributed to research in topics: Image processing & Feature detection (computer vision). The author has an hindex of 94, co-authored 595 publications receiving 49426 citations. Previous affiliations of Azriel Rosenfeld include Meiji University.

Papers
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Journal ArticleDOI

A simplified method of detecting structure in Glass patterns

TL;DR: A simplified approach based on the responses of line detectors, rather than on joining dots, is described, which shows that structure can be detected even in sparse Glass patterns by using a ‘pyramid’ technique.
Journal ArticleDOI

Recovering a polygon from noisy data

TL;DR: A vertex elimination process is defined that accomplishes the recovery of an unknown polygon from noisy digital data obtained by digitizing either an image of the (solid) polygon or a sequence of points on its boundary by selecting a subset of the data points as vertices.
Book ChapterDOI

Partial Path Groups and Parallel Graph Contractions

TL;DR: An algebraic structure on the paths in a graph based on a coloring of the arcs is defined, which provides a framework for defining parallel contraction operations on a graph, in which many pairs of nodes are simultaneously collapsed into single nodes, but the degree of the graph does not increase.
Proceedings ArticleDOI

Two-frame multi-scale optical flow estimation using wavelet decomposition

TL;DR: A multi-scale algorithm using wavelet decomposition is proposed to estimate dense optical flow using only two frames and overcome the “flattening-out” problem in traditional pyramid methods, which produce high errors when low-texture regions become flat at coarse levels due to blurring.
Journal ArticleDOI

On Models for Line Detection

TL;DR: Several models for line detection in noise are discussed, based on models for the ``simple'' and ``complex'' cells that have been found in the visual cortex.