Fr. 179.00

Accurate Visual Metrology from Single and Multiple Uncalibrated Images

English · Hardback

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Description

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"Accurate Visual Metrology from Single and Multiple Uncalibrated Images presents novel techniques for constructing three-dimensional models from bi-dimensional images using virtual reality tools. Antonio Criminisi develops the mathematical theory of computing world measurements from single images, and builds up a hierarchy of novel, flexible techniques to make measurements and reconstruct three-dimensional scenes from uncalibrated images, paying particular attention to the accuracy of the reconstruction.
This book includes examples of interesting viable applications (eg. Forensic Science, History of Art, Virtual Reality, Architectural and indoor measurements), presented in a simple way, accompanied by pictures, diagrams and plenty of worked examples to help the reader understand and implement the algorithms."

List of contents

"Introduction:
Accurate Measurements from Images.
Why use Vision?
Why is Visual Metrology Hard?
Applications and Examples.
Summary.-
Related Work:
Introduction.
Using Images for Measuring and Reconstruction.-
Background Geometry and Notation:
Introduction.
Notation.
Camera Models and Perspective Mappings.
Radial Distortion Correction.
Vanishing Points and Vanishing Lines.
Uncertainty Analysis.-
Metrology on Planes:
Estimating the Homography.
Uncertainty Analysis.
Application - A Plane Measuring Device.
Duality and Homologies.
Single View Metrology:
Introduction.
Geometry.
Algebraic Representation.
Uncertainty Analysis.
Three-Dimensional Metrology from a Single View.
Applications.
Missing Base Point.-
Metrology from Planar Parallax:
Introduction.
Background.
Geometry and Duality.
Scene Reconstruction.
Uncertainty Analysis.-
Gallery of Examples:
Introduction.
Reconstruction from Photographs.
Reconstruction from Paintings.
Discussion.-
Conclusion:
Summary.
Discussion.
Future Work.-
Metrology on Planes, Computing Homography Uncertainty.-
Maximum Likelehood Estimation of End Points for Isotropic Uncertainties.-
Single View Metrology, Variance of Distance Between Planes.- Single View Metrology, Variance of the Affine Parameter alpha.-
Metrology form Planar Parallax, Derivations.-
Metrology form Planar Parallax, Variance of Distances.-
Index. "

Summary

Accurate Visual Metrology from Single and Multiple Uncalibrated Images presents novel techniques for constructing three-dimensional models from bi-dimensional images using virtual reality tools. Antonio Criminisi develops the mathematical theory of computing world measurements from single images, and builds up a hierarchy of novel, flexible techniques to make measurements and reconstruct three-dimensional scenes from uncalibrated images, paying particular attention to the accuracy of the reconstruction.
This book includes examples of interesting viable applications (eg. Forensic Science, History of Art, Virtual Reality, Architectural and indoor measurements), presented in a simple way, accompanied by pictures, diagrams and plenty of worked examples to help the reader understand and implement the algorithms.

Product details

Authors Antonio Criminisi
Publisher Springer, Berlin
 
Languages English
Product format Hardback
Released 01.01.2001
 
EAN 9781852334680
ISBN 978-1-85233-468-0
No. of pages 184
Weight 480 g
Illustrations XIII, 184 p.
Series Distinguished Dissertations
Distinguished Dissertations
Subjects Natural sciences, medicine, IT, technology > IT, data processing > IT

B, computer science, geometry, Computer Vision, Image Processing and Computer Vision, Computer Graphics, Optical data processing, Computer simulation, Computer modelling & simulation, Simulation and Modeling, Image processing

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