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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.

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Hough transform algorithms for mesh-connected SIMD parallel processors

TL;DR: Several methods of Hough transform computation suitable for implementation on a mesh-connected SIMD parallel processor, such as Goddard Space Flight Center's Massively Parallel Processor (MPP) or Martin Marietta Corp.'s Geometric Arithmetic Parallel processor (GAPP), are compared.
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Picture Segmentation by Texture Discrimination

TL;DR: This correspondence describes a method of dividing a picture into differently textured regions by thresholding the values of a suitable local picture property by a generalization to natural textures of a technique recently proposed by Tsuji.
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Some experiments in relaxation image matching using corner features

TL;DR: A relaxation method based on patterns of local features is used to find matches between pairs of images or subimages that differ in position or orientation, yielding good results for TV images of objects such as tools and industrial parts, as well as for aerial images of terrain.
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Image Smoothing and Segmentation by Multiresolution Pixel Linking: Further Experiments and Extensions

TL;DR: This paper investigates several variations on the basic linking process with regard to such factors as initialization, criteria for linking, and iteration scheme used and extends the approach to links based on more than one feature of a pixel, e.g., on color components or local property values.
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Digital Detection of Pits, Peaks, Ridges, and Ravines

TL;DR: A method of detecting pits, peaks, ridges, and ravines on a digital array of terrain elevation data is described, based on algorithms designed to detect bright and dark spots or streaks in pictures.