Advances in Computer Vision: Volume 1
First published in 1988. The series Advances in Computer Vision has the goal of presenting current approaches to basic problems that arise in the construction of a computer vision system, written by leading researchers and practitioners in the field. The first two volumes in the series comprise seven chapters, which together cover much of the scope of computer vision. This is Volume I.
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Advances in Computer Vision: Volume 1
First published in 1988. The series Advances in Computer Vision has the goal of presenting current approaches to basic problems that arise in the construction of a computer vision system, written by leading researchers and practitioners in the field. The first two volumes in the series comprise seven chapters, which together cover much of the scope of computer vision. This is Volume I.
190.0 In Stock
Advances in Computer Vision: Volume 1

Advances in Computer Vision: Volume 1

Advances in Computer Vision: Volume 1

Advances in Computer Vision: Volume 1

Hardcover

$190.00 
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Overview

First published in 1988. The series Advances in Computer Vision has the goal of presenting current approaches to basic problems that arise in the construction of a computer vision system, written by leading researchers and practitioners in the field. The first two volumes in the series comprise seven chapters, which together cover much of the scope of computer vision. This is Volume I.

Product Details

ISBN-13: 9780898596489
Publisher: Taylor & Francis
Publication date: 01/01/1988
Pages: 248
Product dimensions: 6.00(w) x 9.00(h) x (d)

About the Author

Christopher Brown Department of Computer Science, University of Rochester, NY.

Table of Contents

Contents: A. Hanson, E. Riseman, The Visions Image Understanding System. J. Aloimonos, C. Brown, Robust Computation of Intrinsic Images from Multiple Cues. A. Waxman, K. Wohn, Image Flow Theory: A Framework for 3-D Inference From Time-Varying Imagery.
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