Computational models for cognitive vision. (2020)
- Record Type:
- Book
- Title:
- Computational models for cognitive vision. (2020)
- Main Title:
- Computational models for cognitive vision
- Further Information:
- Note: Hiranmay Ghosh.
- Authors:
- Ghosh, Hiranmay
- Contents:
- Foreword xi Preface xiii Acknowledgments xv Acronyms xvii 1 Introduction 1 1.1 What is Cognitive Vision 2 1.2 Computational Approaches for Cognitive Vision 3 1.3 A Brief Review of Human Vision 5 1.4 Perception and Cognition 7 1.5 Organization of the Book 9 2 Early Vision 13 2.1 Feature Integration Theory 13 2.2 Structure of Human Eye 14 2.3 Lateral Inhibition 17 2.4 Convolution: Detection of Edges and Orientations 19 2.5 Color and Texture Perception 22 2.6 Motion Perception 26 2.6.1 Intensity-based Approach 26 2.6.2 Token-based Approach 28 2.7 Peripheral Vision 30 2.8 Conclusion 33 3 Bayesian Reasoning for Perception and Cognition 35 3.1 Reasoning Paradigms 36 3.2 Natural Scene Statistics 38 3.3 Bayesian Framework of Reasoning 40 3.4 Bayesian Networks 45 3.5 Dynamic Bayesian Network 49 3.6 Parameter Estimation 51 3.7 On Complexity of Models and Bayesian Inference 54 3.8 Hierarchical Bayesian Models 56 3.9 Inductive Reasoning with Bayesian Framework 59 3.9.1 Inductive Generalization 59 3.9.2 Taxonomy Learning 63 3.9.3 Feature Selection 65 3.10 Conclusion 67 4 Late Vision 71 4.1 Stereopsis and Depth Perception 71 4.2 Perception of Visual Quality 73 4.3 Perceptual Grouping 76 4.4 Foreground-Background Separation 82 4.5 Multi-stability 83 4.6 Object Recognition 85 4.6.1 In-context Object Recognition 86 4.6.2 Synthesis of Bottom-up and Top-down Knowledge 89 4.6.3 Hierarchical Bayesian Network 91 4.6.4 One-shot Learning 93 4.7 Visual Aesthetics 94 4.8 Conclusion 97 5 VisualForeword xi Preface xiii Acknowledgments xv Acronyms xvii 1 Introduction 1 1.1 What is Cognitive Vision 2 1.2 Computational Approaches for Cognitive Vision 3 1.3 A Brief Review of Human Vision 5 1.4 Perception and Cognition 7 1.5 Organization of the Book 9 2 Early Vision 13 2.1 Feature Integration Theory 13 2.2 Structure of Human Eye 14 2.3 Lateral Inhibition 17 2.4 Convolution: Detection of Edges and Orientations 19 2.5 Color and Texture Perception 22 2.6 Motion Perception 26 2.6.1 Intensity-based Approach 26 2.6.2 Token-based Approach 28 2.7 Peripheral Vision 30 2.8 Conclusion 33 3 Bayesian Reasoning for Perception and Cognition 35 3.1 Reasoning Paradigms 36 3.2 Natural Scene Statistics 38 3.3 Bayesian Framework of Reasoning 40 3.4 Bayesian Networks 45 3.5 Dynamic Bayesian Network 49 3.6 Parameter Estimation 51 3.7 On Complexity of Models and Bayesian Inference 54 3.8 Hierarchical Bayesian Models 56 3.9 Inductive Reasoning with Bayesian Framework 59 3.9.1 Inductive Generalization 59 3.9.2 Taxonomy Learning 63 3.9.3 Feature Selection 65 3.10 Conclusion 67 4 Late Vision 71 4.1 Stereopsis and Depth Perception 71 4.2 Perception of Visual Quality 73 4.3 Perceptual Grouping 76 4.4 Foreground-Background Separation 82 4.5 Multi-stability 83 4.6 Object Recognition 85 4.6.1 In-context Object Recognition 86 4.6.2 Synthesis of Bottom-up and Top-down Knowledge 89 4.6.3 Hierarchical Bayesian Network 91 4.6.4 One-shot Learning 93 4.7 Visual Aesthetics 94 4.8 Conclusion 97 5 Visual Attention 99 5.1 Modeling of Visual Attention 101 5.2 Models for Visual Attention 105 5.2.1 Cognitive Models 105 5.2.2 Information-theoretic Models 108 5.2.3 Bayesian Models 109 5.2.4 Context-based Models 111 5.2.5 Object-based Models 114 5.3 Evaluation 116 5.4 Conclusion 118 6 Cognitive Architectures 121 6.1 Cognitive Modeling 122 6.1.1 Paradigms for Modeling Cognition 123 6.1.2 Levels of Abstraction 128 6.2 Desiderata for Cognitive Architectures 130 6.3 Memory Architecture 133 6.4 Taxonomies of Cognitive Architectures 137 6.5 Review of Cognitive Architectures 139 6.5.1 STAR: Selective Tuning Attentive Reference 140 6.5.2 LIDA: Learning Intelligent Distribution Agent 143 6.6 Biologically Inspired Cognitive Architectures 147 6.7 Conclusions 148 7 Knowledge Representation for Cognitive Vision 151 7.1 Classicist Approach to Knowledge Representation 152 7.1.1 First Order Logic 154 7.1.2 Semantic Networks 157 7.1.3 Frame-based Representation 159 7.2 Symbol Grounding Problem 162 7.3 Perceptual Knowledge 164 7.3.1 Representing Perceptual Knowledge 166 7.3.2 Structural Description of Scenes 167 7.3.3 Qualitative Spatial and Temporal Relations 169 7.3.4 Inexact Spatio-temporal Relations 172 7.4 Unifying Conceptual and Perceptual Knowledge 177 7.5 Knowledge-based visual data processing 179 7.6 Conclusion 180 8 Deep Learning for visual cognition 183 8.1 A Brief Introduction to Deep Neural Networks 185 8.1.1 Fully Connected Networks 185 8.1.2 Convolutional Neural Networks 188 8.1.3 Recurrent Neural Networks (RNN) 192 8.1.4 Siamese Networks 196 8.1.5 Graph Neural Networks 196 8.2 Modes of Learning with DNN 199 8.2.1 Supervised Learning 199 8.2.2 Unsupervised Learning with Generative Networks 203 8.2.3 Meta-learning: Learning to Learn 205 8.2.4 Multi-task Learning 215 8.3 Visual Attention 218 8.3.1 Recurrent Attention Models 219 8.3.2 Recurrent Attention Model for Video 223 8.4 Bayesian inferencing with Neural Networks 225 8.5 Conclusion 227 9 Applications of Visual Cognition 229 9.1 Computational Photography 230 9.1.1 Color Enhancement 230 9.1.2 Intelligent Cropping 234 9.1.3 Face Beautification 235 9.2 Digital Heritage 236 9.2.1 Digital Restoration of Images 237 9.2.2 Curating Dance Archives 240 9.3 Social Robots 243 9.3.1 Dynamic and Shared Spaces 244 9.3.2 Recognition of Visual Cues 246 9.3.3 Attention to Socially Relevant Signals 247 9.4 Content Re-purposing 251 9.5 Conclusion 253 10 Conclusion 257 10.1 “What is Cognitive Vision” Revisited 258 10.2 Divergence of approaches 259 10.3 Convergence on the Anvil? 262 Bibliography 265 Index 317 … (more)
- Edition:
- 1st
- Publisher Details:
- Hoboken : Wiley-IEEE Press
- Publication Date:
- 2020
- Extent:
- 1 online resource
- Subjects:
- 006.37
Computer vision
Cognitive science
Visual perception
Bayesian statistical decision theory - Languages:
- English
- ISBNs:
- 9781119527893
- Related ISBNs:
- 9781119527855
- Notes:
- Note: Includes bibliographical references and index.
Note: Description based on CIP data; resource not viewed. - Access Rights:
- Legal Deposit; Only available on premises controlled by the deposit library and to one user at any one time; The Legal Deposit Libraries (Non-Print Works) Regulations (UK).
- Access Usage:
- Restricted: Printing from this resource is governed by The Legal Deposit Libraries (Non-Print Works) Regulations (UK) and UK copyright law currently in force.
- View Content:
- Available online (eLD content is only available in our Reading Rooms) ↗
- Physical Locations:
- British Library HMNTS - ELD.DS.514829
- Ingest File:
- 03_097.xml