
Statistical Learning and Pattern Analysis for Image and Video Processing
By:Â Nanning Zheng, Jianru Xue
Hardcover | 16 April 2010
At a Glance
384 Pages
24.13 x 16.51 x 2.54
Hardcover
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Industry Reviews
From the reviews:
"The level for which the text was aimed was quite introductory, giving a well executed explanation of not just the technique, but also the supporting techniques. This would serve the book well as a tool to someone learning the technique from new ... . Overall I enjoyed the book ... . I found that the subjects were well discussed and at a level that suited my knowledge. I would recommend it as a general purpose book for image and video analysis ... ." (Gavin Powell, International Association for Pattern Recognition, Vol. 32 (3), July, 2010)| Pattern Analysis and Statistical Learning | p. 1 |
| Introduction | p. 1 |
| Statistical Pattern Recognition | p. 2 |
| Pattern Theory | p. 4 |
| Statistical Classification | p. 6 |
| Feature Extraction and Selection | p. 6 |
| Classifier | p. 7 |
| Visual Pattern Representation | p. 8 |
| The Curse of Dimensionality | p. 9 |
| Dimensionality Reduction Techniques | p. 9 |
| Statistical Learning | p. 10 |
| Prediction Risk | p. 11 |
| Supervised, Unsupervised, and Others | p. 12 |
| Summary | p. 14 |
| References | p. 14 |
| Unsupervised Learning for Visual Pattern Analysis | p. 15 |
| Introduction | p. 1 |
| Unsupervised Learning | p. I5 |
| Visual Pattern Analysis | p. 16 |
| Outline | p. 17 |
| Cluster Analysis | p. 17 |
| Clustering Algorithms | p. 21 |
| Partitional Clustering | p. 21 |
| Hierarchical Clustering | p. 30 |
| Perceptual Grouping | p. 33 |
| Hierarchical Perceptual Grouping | p. 33 |
| Gestalt Grouping Principles | p. 35 |
| Contour Grouping | p. 39 |
| Region Grouping | p. 45 |
| Learning Representational Models for Visual Patterns | p. 47 |
| Summary | p. 48 |
| Appendix | p. 48 |
| References | p. 48 |
| Component Analysis | p. 51 |
| Introduction | p. 51 |
| Overview of Component Analysis | p. 54 |
| Generative Models | p. 55 |
| Principal Component Analysis | p. 55 |
| Nonnegative Matrix Factorization | p. 66 |
| Independent Component Analysis | p. 72 |
| Discriminative Models | p. 16 |
| Linear Discriminative Analysis | p. 76 |
| Oriented Component Analysis | p. 79 |
| Canonical Correlation Analysis | p. 79 |
| Relevant Component Analysis | p. 81 |
| Standard Extensions of the Linear Model | p. 83 |
| Latent Variable Analysis | p. 83 |
| Kernel Method | p. 83 |
| Summary | p. 83 |
| References | p. 84 |
| Manifold Learning | p. 87 |
| Introduction | p. 87 |
| Mathematical Preliminaries | p. 91 |
| Manifold Related Terminologies | p. 91 |
| Graph Related Terminologies | p. 92 |
| Global Methods | p. 94 |
| Multidimensional Scaling | p. 94 |
| Isometric Feature Mapping | p. 95 |
| Variants of the Isomap | p. 96 |
| Local Methods | p. 100 |
| Locally Linear Embedding | p. 100 |
| Laplacian Eigenmaps | p. 103 |
| Hessian Eigenmaps | p. 107 |
| Diffusion Maps | p. 109 |
| Hybrid Methods: Global Alignment of Local Models | p. 113 |
| Global Coordination of Local Linear Models | p. 113 |
| Charting a Manifold | p. 115 |
| Local Tangent Space Alignment | p. 117 |
| Summary | p. 117 |
| Appendix | p. 118 |
| References | p. 118 |
| Functional Approximation | p. 121 |
| Introduction | p. 121 |
| Modeling and Approximating the Visual Data | p. 124 |
| On Statistical Analysis | p. 125 |
| On Harmonic Analysis | p. 126 |
| Issues of Approximation and Compression | p. 127 |
| Wavelet Transform and Lifting Scheme | p. 129 |
| Wavelet Transform | p. 129 |
| Constructing a Wavelet Filter Bank | p. 130 |
| Lifting Scheme | p. 132 |
| Lifting-Based Integer Wavelet Transform | p. 133 |
| Optimal Integer Wavelet Transform | p. 134 |
| Introducing Adaptability into the Wavelet Transform | p. 136 |
| Curve Singularities in an Image | p. 137 |
| Anisotropic Basis | p. 137 |
| Adaptive Lifting-Based Wavelet | p. 139 |
| Adaptive Lifting Structure | p. 140 |
| Adaptive Prediction Filters | p. 140 |
| Adaptive Update Filters | p. 142 |
| Adaptive Directional Lifting Scheme | p. 143 |
| ADL Framework | p. 144 |
| Implementation of ADL | p. 145 |
| Motion Compensation Temporal Filtering in Video Coding | p. 148 |
| Overview of MCTF | p. 148 |
| MC in MCTF | p. 151 |
| Adaptive Lifting-Based Wavelets in MCTF | p. 152 |
| Summary and Discussions | p. 153 |
| References | p. 154 |
| Supervised Learning for Visual Pattern Classification | p. 159 |
| Introduction | p. 159 |
| An Example of Supervised Learning | p. 160 |
| Support Vector Machine | p. 163 |
| Optimal Separating Hyper-plane | p. 163 |
| Realization of SVM | p. 167 |
| Kernel Function | p. 169 |
| Boosting Algorithm | p. 171 |
| AdaBoost Algorithm | p. 172 |
| Theoretical Analysis of AdaBoost | p. 173 |
| AdaBoost Algorithm as an Additive Model | p. 176 |
| Summary | p. 178 |
| Appendix | p. 178 |
| References | p. 179 |
| Statistical Motion Analysis | p. 181 |
| Introduction | p. 181 |
| Problem Formulation | p. 181 |
| Overview of Computing Techniques | p. 183 |
| Bayesian Estimation of Optical Flow | p. 186 |
| Problem Formulation | p. 186 |
| MAP Estimation | p. 190 |
| Occlusion | p. 192 |
| Model-Based Motion Analysis | p. 193 |
| Motion Models | p. 194 |
| Statistical Model Selection | p. 195 |
| Learning Parameterized Models | p. 196 |
| Motion Segmentation | p. 201 |
| Layered Model: Multiple Motion Models | p. 202 |
| Clustering Optical Flow Field into Layers | p. 204 |
| Mixture Estimation for Layer Extraction | p. 205 |
| Statistics of Optical Flow | p. 208 |
| Statistics of Optical Flow | p. 208 |
| Motion Prior Modeling | p. 210 |
| Contrastive Divergence Learning | p. 211 |
| Summary | p. 212 |
| Appendix | p. 212 |
| References | p. 214 |
| Bayesian Tracking of Visual Objects | p. 217 |
| Introduction | p. 217 |
| Sequential Bayesian Estimation | p. 219 |
| Problem Formulation of Bayesian Tracking | p. 220 |
| Kalman Filter | p. 221 |
| Grid-Based Methods | p. 222 |
| Sub-optimal Filter | p. 222 |
| Monte Carlo Filtering | p. 224 |
| Problem Formulation | p. 224 |
| Sequential Importance Sampling | p. 226 |
| Sequential Monte Carlo Filtering | p. 231 |
| Particle Filter | p. 232 |
| Object Representation Model | p. 235 |
| Visual Learning for Object Representation | p. 236 |
| Active Contour | p. 237 |
| Appearance Model | p. 241 |
| Summary | p. 243 |
| References | p. 244 |
| Probabilistic Data Fusion for Robust Visual Tracking | p. 245 |
| Introduction | p. 245 |
| Earlier Work on Robust Visual Tracking | p. 248 |
| Data Fusion-Based Visual Tracker | p. 251 |
| Sequential Bayesian Estimator | p. 251 |
| The Four-Layer Data Fusion Visual Tracker | p. 253 |
| Layer 1: Visual Cue Fusion | p. 255 |
| Fusion Rules: Product Versus Weighted Sum | p. 255 |
| Adaptive Fusion Rule | p. 257 |
| Online Approach to Determining the Reliability of a Visual cue | p. 258 |
| Layer 2: Model Fusion | p. 260 |
| Pseudo-Measurement-Based Multiple Model Method | p. 261 |
| Likelihood Function | p. 263 |
| Layer 3: Tracker Fusion | p. 264 |
| Problem Formulation | p. 265 |
| Interactive Multiple Trackers | p. 266 |
| Practical Issues | p. 267 |
| Sensor Fusion | p. 269 |
| Implementation Issues and Empirical Results | p. 271 |
| Visual Cue Fusion Layer | p. 271 |
| Model Fusion Layer | p. 274 |
| Tracker Fusion Layer | p. 276 |
| Bottom-Up Fusion with a Three-Layer Structure | p. 281 |
| Multi-Censor Fusion Tracking System Validation | p. 281 |
| Summary | p. 283 |
| References | p. 284 |
| Multitarget Tracking in Video-Part I | p. I287 |
| Introduction | p. 287 |
| Overview of MTTV Methods | p. 290 |
| Static Model for Multitarget | p. 292 |
| Problem formulation | p. 292 |
| Observation Likelihood Function | p. 294 |
| Prior Model | p. 295 |
| Approximate Inference | p. 296 |
| Model Approximation | p. 296 |
| Algorithm Approximation | p. 299 |
| Fusing Information from Temporal and Bottom-Up Detectors | p. 302 |
| Experiments and Discussions | p. 304 |
| Proof-of-Concept | p. 305 |
| Comparison with Other Trackers | p. 308 |
| The Efficiency of the Gibbs Sampler | p. 315 |
| Summary | p. 315 |
| References | p. 315 |
| Multi-Target Tracking in Video - Part II | p. 319 |
| Introduction | p. 319 |
| Overview of the MTTV Data Association Mechanism | p. 322 |
| Handing Data Association Explicitly | p. 322 |
| Handing Data Association Implicitly | p. 324 |
| Detection and Tracking | p. 325 |
| The Generative Model for MTT | p. 326 |
| Problem Formulation | p. 326 |
| The Generative Model | p. 327 |
| Approximating The Marginal Term | p. 329 |
| The State Prediction | p. 330 |
| Existence and Association Posterior | p. 332 |
| Approximating the Interactive Term | p. 334 |
| Hybrid Measurement Process | p. 335 |
| Experiments and Discussion | p. 335 |
| Tracking Soccer Players | p. 336 |
| Tracking Pedestrians in a Dynamic Scene | p. 337 |
| Discussion | p. 337 |
| Summary | p. 340 |
| References | p. 340 |
| Information Processing in Cognition Process and New Artificial Intelligent Systems | p. 343 |
| Introduction | p. 343 |
| Cognitive Model: A Prototype of Intelligent System | p. 345 |
| Issues in Theories and Methodologies of Current Brain Research and Vision Science | p. 347 |
| Interactive Behaviors and Selective Attention in the Process of Visual Cognition | p. 351 |
| Intelligent Information Processing and Modeling Based on Cognitive Mechanisms | p. 353 |
| Cognitive Modeling and Behavioral Control in Complex Systems in an Information Environment | p. 353 |
| Distributed Cognition | p. 356 |
| Neurophysiological Mechanism of Learning and Memory and Information Processing Model | p. 358 |
| Cognitive Neurosciences and Computational Neuroscience | p. 359 |
| Consciousness and Intention Reading | p. 360 |
| The Core of Computational Neuroscience is to Compute and Interpret the States of Nervous System | p. 360 |
| Soft Computing Method | p. 360 |
| Summary | p. 361 |
| References | p. 362 |
| Index | p. 363 |
| Table of Contents provided by Ingram. All Rights Reserved. |
ISBN: 9781848823112
ISBN-10: 1848823118
Series: Advances in Computer Vision and Pattern Recognition
Published: 16th April 2010
Format: Hardcover
Language: English
Number of Pages: 384
Audience: Professional and Scholarly
Publisher: Springer Nature B.V.
Country of Publication: GB
Dimensions (cm): 24.13 x 16.51 x 2.54
Weight (kg): 0.7
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This product is categorised by
- Non-FictionComputing & I.T.Computer ScienceImage Processing
- Non-FictionComputing & I.T.Business ApplicationsMathematical & Statistical Software
- Non-FictionComputing & I.T.Graphical & Digital Media Applications
- Non-FictionComputing & I.T.Computer ScienceArtificial IntelligenceComputer Vision
- Non-FictionComputing & I.T.Computer ScienceArtificial IntelligencePattern Recognition





















