
Guide to Three Dimensional Structure and Motion Factorization
By: Guanghui Wang, Q. M. Jonathan Wu
Hardcover | 20 September 2010
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230 Pages
23.5 x 15.88 x 1.27
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The problem of structure and motion recovery from image sequences is an important theme in computer vision. Considerable progress has been made in this field during the past two decades, resulting in successful applications in robot navigation, augmented reality, industrial inspection, medical image analysis, and digital entertainment, among other areas. However, many of these methods work only for rigid objects and static scenes. The study of non-rigid structure from motion is not only of academic significance, but also has important practical applications in real-world, nonrigid or dynamic scenarios, such as human facial expressions and moving vehicles.
This practical guide/reference provides a comprehensive overview of Euclidean structure and motion recovery, with a specific focus on factorization-based algorithms. The book discusses the latest research in this field, including the extension of the factorization algorithm to recover the structure of non-rigid objects, and presents some new algorithms developed by the authors. Readers require no significant knowledge of computer vision, although some background on projective geometry and matrix computation would be beneficial.
Topics and features: presents the first systematic study of structure and motion recovery of both rigid and non-rigid objects from images sequences; discusses in depth the theory, techniques, and applications of rigid and non-rigid factorization methods in three dimensional computer vision; examines numerous factorization algorithms, covering affine, perspective and quasi-perspective projection models; provides appendices describing the mathematical principles behind projective geometry, matrix decomposition, least squares, and nonlinear estimation techniques; includes chapter-ending review questions, and a glossary of terms used in the book.
This unique text offers practical guidance in real applications and implementations of 3D modeling systems for practitioners in computer vision and pattern recognition, as well as serving as an invaluable source of new algorithms and methodologies for structure and motion recovery for graduate students and researchers.
| Introduction to 3D Computer Vision | p. 1 |
| Introduction | p. 1 |
| Imaging Geometry and Camera Models | p. 2 |
| Camera Models | p. 2 |
| Single View Imaging Geometry | p. 5 |
| Single View Metrology and Reconstruction | p. 7 |
| Measurement on Space Planes | p. 8 |
| Camera Calibration from a Single View | p. 9 |
| Measurement in 3D Space | p. 11 |
| Examples of Single View Reconstruction | p. 14 |
| Two-View Geometry and 3D Reconstruction | p. 17 |
| Epipolar Geometry and Fundamental Matrix | p. 17 |
| Three Dimensional Reconstruction | p. 18 |
| Reconstruction of Structured Scenes from Two Images | p. 20 |
| Plane Detection Strategy | p. 20 |
| Camera Calibration and Reconstruction | p. 24 |
| Closure Remarks | p. 26 |
| Conclusion | p. 26 |
| Review Questions | p. 26 |
| References | p. 27 |
| Simplified Camera Projection Models | p. 29 |
| Introduction | p. 29 |
| Affine Projection Model | p. 30 |
| Quasi-Perspective Projection | p. 33 |
| Quasi-Perspective Projection | p. 33 |
| Error Analysis of Different Models | p. 36 |
| Experimental Evaluations | p. 38 |
| Imaging Errors | p. 39 |
| Influence of Imaging Conditions | p. 39 |
| Closure Remarks | p. 40 |
| Conclusion | p. 40 |
| Review Questions | p. 41 |
| References | p. 41 |
| Geometrical Properties of Quasi-Perspective Projection | p. 43 |
| Introduction | p. 43 |
| One-View Geometrical Property | p. 44 |
| Two-View Geometrical Property | p. 46 |
| Fundamental Matrix | p. 47 |
| Plane Induced Homography | p. 50 |
| Computation with Outliers | p. 51 |
| 3D Structure Reconstruction | p. 52 |
| Evaluations on Synthetic Data | p. 53 |
| Fundamental Matrix and Homography | p. 54 |
| Outlier Removal | p. 55 |
| Reconstruction Result | p. 55 |
| Evaluations on Real Images | p. 57 |
| Test on Stone Dragon Images | p. 57 |
| Test on Medusa Head Images | p. 59 |
| Closure Remarks | p. 60 |
| Conclusion | p. 60 |
| Review Questions | p. 60 |
| References | p. 61 |
| Introduction to Structure and Motion Factorization | p. 63 |
| Introduction | p. 63 |
| Problem Definition | p. 65 |
| Structure and Motion Factorization of Rigid Objects | p. 68 |
| Rigid Factorization Under Orthographic Projection | p. 68 |
| Rigid Factorization Under Perspective Projection | p. 71 |
| Structure and Motion Factorization of Nonrigid Objects | p. 72 |
| Bregler's Deformation Model | p. 73 |
| Nonrigid Factorization Under Affine Models | p. 74 |
| Nonrigid Factorization Under Perspective Projection | p. 77 |
| Factorization of Multi-Body and Articulated Objects | p. 79 |
| Multi-Body Factorization | p. 79 |
| Articulated Factorization | p. 82 |
| Closure Remarks | p. 83 |
| Conclusion | p. 83 |
| Review Questions | p. 83 |
| References | p. 84 |
| Perspective 3D Reconstruction of Rigid Objects | p. 87 |
| Introduction | p. 87 |
| Previous Works on Projective Depths Recovery | p. 89 |
| Epipolar Geometry Based Algorithm | p. 89 |
| Iteration Based Algorithm | p. 90 |
| Hybrid Projective Depths Recovery | p. 91 |
| Initialization and Optimization | p. 91 |
| Selection of Reference Frames | p. 93 |
| Camera Calibration and Euclidean Reconstruction | p. 94 |
| Camera Self-calibration | p. 94 |
| Euclidean Reconstruction | p. 96 |
| Outline of the Algorithm | p. 97 |
| Evaluations on Synthetic Data | p. 98 |
| Projective Depths Recovery | p. 98 |
| Calibration and Reconstruction | p. 99 |
| Evaluations on Real Sequences | p. 101 |
| Test on Model House Sequence | p. 102 |
| Test on Stone Post Sequence | p. 103 |
| Test on Medusa Head Sequence | p. 104 |
| Closure Remarks | p. 105 |
| Conclusion | p. 105 |
| Review Questions | p. 106 |
| References | p. 106 |
| Perspective 3D Reconstruction of Nonrigid Objects | p. 109 |
| Introduction | p. 109 |
| Perspective Depth Scales and Nonrigid Factorization | p. 110 |
| Perspective Depth Scales | p. 110 |
| Nonrigid Affine Factorization | p. 111 |
| Perspective Stratification | p. 112 |
| Linear Recursive Estimation | p. 112 |
| Nonlinear Optimization Algorithm | p. 114 |
| Evaluations on Synthetic Data | p. 115 |
| Reconstruction Results | p. 116 |
| Convergence and Performance Comparisons | p. 116 |
| Experiments with Real Sequences | p. 118 |
| Test on Franck Sequence | p. 118 |
| Test on Scarf Sequence | p. 120 |
| Closure Remarks | p. 121 |
| Conclusion | p. 121 |
| Review Questions | p. 122 |
| References | p. 122 |
| Rotation Constrained Power Factorization | p. 125 |
| Introduction | p. 125 |
| Power Factorization for Rigid Objects | p. 126 |
| Power Factorization for Nonrigid Objects | p. 127 |
| Rotation Constrained Power Factorization | p. 128 |
| Initialization and Convergence Determination | p. 130 |
| Sequential Factorization | p. 131 |
| Evaluations on Synthetic Data | p. 132 |
| Reconstruction Results and Evaluations | p. 132 |
| Convergence Property | p. 133 |
| Influence of Imaging Conditions | p. 135 |
| Evaluations on Real Sequences | p. 135 |
| Test on Grid Sequence | p. 135 |
| Test on Franck Sequence | p. 136 |
| Test on Quilt Sequence | p. 137 |
| Closure Remarks | p. 137 |
| Conclusion | p. 137 |
| Review Questions | p. 138 |
| References | p. 139 |
| Stratified Euclidean Reconstruction | p. 141 |
| Introduction | p. 141 |
| Deformation Weight Constraint | p. 142 |
| Nonrigid Factorization | p. 142 |
| Deformation Weight Constraint | p. 143 |
| Geometrical Explanation | p. 145 |
| Affine Structure and Motion Recovery | p. 147 |
| Constrained Power Factorization | p. 147 |
| Initalization and Convergence Determination | p. 148 |
| Segmentation and Stratification | p. 149 |
| Deformation Detection Strategy | p. 149 |
| Stratification to Euclidean Space | p. 151 |
| Implementation Outline | p. 151 |
| Evaluations on Synthetic Data | p. 152 |
| Reconstruction Results and Evaluations | p. 152 |
| Convergence Property and Segmentation | p. 153 |
| Evaluations on Real Sequences | p. 156 |
| Test on Grid Sequence | p. 156 |
| Test on Toy Sequence | p. 157 |
| Closure Remarks | p. 158 |
| Conclusion | p. 158 |
| Review Questions | p. 159 |
| References | p. 159 |
| Quasi-Perspective Factorization | p. 161 |
| Introduction | p. 161 |
| Background on Factorization | p. 162 |
| Quasi-Perspective Rigid Factorization | p. 164 |
| Euclidean Upgrading Matrix | p. 164 |
| Algorithm Outline | p. 169 |
| Quasi-Perspective Nonrigid Factorization | p. 170 |
| Problem Formulation | p. 170 |
| Euclidean Upgrading Matrix | p. 171 |
| Evaluations on Synthetic Data | p. 173 |
| Evaluation on Rigid Factorization | p. 173 |
| Evaluation on Nonrigid Factorization | p. 175 |
| Evaluations on Real Image Sequences | p. 176 |
| Test on Fountain Base Sequence | p. 177 |
| Test on Franck Sequence | p. 178 |
| Closure Remarks | p. 179 |
| Conclusion | p. 179 |
| Review Questions | p. 180 |
| References | p. 180 |
| Projective Geometry for Computer Vision | p. 183 |
| 2D Projective Geometry | p. 183 |
| Points and Lines | p. 183 |
| Conics and Duel Conics | p. 184 |
| 2D Projective Transformation | p. 186 |
| 3D Projective Geometry | p. 187 |
| Points, Lines, and Planes | p. 187 |
| Projective Transformation and Quadrics | p. 189 |
| Matrix Decomposition | p. 191 |
| Singular Value Decomposition | p. 191 |
| Properties of SVD Decomposition | p. 192 |
| Low-Rank Matrix Approximation | p. 193 |
| QR and RQ Decompositions | p. 194 |
| Symmetric and Skew-Symmetric Matrix | p. 195 |
| Cross Product | p. 196 |
| Cholesky Decomposition | p. 196 |
| Extended Cholesky Decomposition | p. 197 |
| Numerical Computation Method | p. 199 |
| Linear Least Squares | p. 199 |
| Full Rank System | p. 200 |
| Deficient Rank System | p. 201 |
| Nonlinear Estimation Methods | p. 202 |
| Bundle Adjustment | p. 202 |
| Newton Iteration | p. 203 |
| Levenberg-Marquardt Algorithm | p. 204 |
| References | p. 207 |
| Glossary | p. 209 |
| Index | p. 211 |
| Table of Contents provided by Ingram. All Rights Reserved. |
ISBN: 9780857290458
ISBN-10: 0857290452
Series: Advances in Computer Vision and Pattern Recognition
Published: 20th September 2010
Format: Hardcover
Language: English
Number of Pages: 230
Audience: Professional and Scholarly
Publisher: Springer Nature B.V.
Country of Publication: GB
Dimensions (cm): 23.5 x 15.88 x 1.27
Weight (kg): 0.48
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- Non-FictionEngineering & TechnologyOther Technologies & Applied SciencesApplied OpticsImaging Systems & Technology
- Non-FictionComputing & I.T.Computer ScienceArtificial IntelligenceComputer Vision
- Non-FictionComputing & I.T.Graphical & Digital Media Applications
- Non-FictionComputing & I.T.Computer ScienceImage Processing
























