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πŸ“

Computer Vision: Theory and Industrial Applications

✍ Scribed by Josep Amat, Alícia Casals (auth.), Prof. Carme Torras (eds.)


Publisher
Springer-Verlag Berlin Heidelberg
Year
1992
Tongue
English
Leaves
457
Edition
1
Category
Library

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✦ Synopsis


This book is the fruit of a very long and elaborate process. It was conceived as a comprehensive solution to several deficiencies encountered while trying to teach the essentials of Computer Vision in different contexts: to technicians from industry looking for technological solutions to some of their problems, to students in search of a good subject for a PhD thesis, and to researchers in other fields who believe that Computer Vision techniques may help them to analyse their results. The book was carefully planned with all these people in mind. Thus, it covers the fundamentals of both 2D and 3D Computer Vision and their most widespread industrial applications, such as automated inspection, robot guidance and workpiece acquisition. The level of explanation is that of an expanded introductory text, in the sense that, besides the basic material, some special advanced topics are included in each chapter, together with an extensive bibliography for experts to follow up. Well-known researchers on each of the topics were appointed to write a chapter following several guidelines to ensure a consistent presentation throughout. I would like to thank the authors for their patience, because some of them had to go through several revisions of their chapters in order to avoid repetition and to improve the homogeneity and coherence of the book. I hope they will find that the final result has been worth their efforts.

✦ Table of Contents


Front Matter....Pages i-vii
Image Obtention and Preprocessing....Pages 1-58
Segmentation....Pages 59-95
Active Methods for Obtaining Depth Maps....Pages 97-134
Motion and Stereopsis....Pages 135-183
Shape from Shading, Occlusion and Texture....Pages 185-214
Statistical and Syntactic Models and Pattern Recognition Techniques....Pages 215-266
Geometric Object Models....Pages 267-292
A Methodology for the Development of General Knowledge-Based Vision Systems....Pages 293-336
Bin-Picking Techniques....Pages 337-375
Automated Visual Inspection Algorithms....Pages 377-404
Commercial Vision Systems....Pages 405-452
Back Matter....Pages 453-455

✦ Subjects


Computer-Aided Engineering (CAD, CAE) and Design; Artificial Intelligence (incl. Robotics); Computer Graphics; Image Processing and Computer Vision; Control, Robotics, Mechatronics; Engineering Economics, Organization, Logistics, Marketi


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