Produktbild: Optimisation in Signal and Image Processing

Optimisation in Signal and Image Processing

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Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

01.10.2009

Herausgeber

Patrick Siarry

Verlag

Wiley

Seitenzahl

352

Maße (L/B/H)

23.4/16/2.5 cm

Gewicht

699 g

Sprache

Englisch

ISBN

978-1-84821-044-8

Beschreibung

Produktdetails

Einband

Gebundene Ausgabe

Erscheinungsdatum

01.10.2009

Herausgeber

Patrick Siarry

Verlag

Wiley

Seitenzahl

352

Maße (L/B/H)

23.4/16/2.5 cm

Gewicht

699 g

Sprache

Englisch

ISBN

978-1-84821-044-8

Herstelleradresse

Libri GmbH
Europaallee 1
36244 Bad Hersfeld
DE

Email: gpsr@libri.de

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  • Produktbild: Optimisation in Signal and Image Processing
  • Introduction xiii

    Chapter 1. Modeling and Optimization in Image Analysis 1
    Jean Louchet

    1.1. Modeling at the source of image analysis and synthesis 1

    1.2. From image synthesis to analysis 2

    1.3. Scene geometric modeling and image synthesis 3

    1.4. Direct model inversion and the Hough transform 4

    1.5. Optimization and physical modeling 9

    1.6. Conclusion 12

    1.7. Acknowledgements 13

    1.8. Bibliography 13

    Chapter 2. Artificial Evolution and the Parisian Approach. Applications in the Processing of Signals and Images 15
    Pierre Collet and Jean Louchet

    2.1. Introduction 15

    2.2. The Parisian approach for evolutionary algorithms 15

    2.3. Applying the Parisian approach to inverse IFS problems 17

    2.4. Results obtained on the inverse problems of IFS 20

    2.5. Conclusion on the usage of the Parisian approach for inverse IFS problems 22

    2.6. Collective representation: the Parisian approach and the Fly algorithm 23

    2.7. Conclusion 40

    2.8. Acknowledgements 41

    2.9.Bibliography 41

    Chapter 3. Wavelets and Fractals for Signal and Image Analysis 45
    Abdeldjalil Ouahabi and Djedjiga Ait Aouit

    3.1. Introduction 45

    3.2. Some general points on fractals 46

    3.3. Multifractal analysis of signals 54

    3.4. Distribution of singularities based on wavelets 60

    3.5. Experiments 70

    3.6. Conclusion 76

    3.7. Bibliography 76

    Chapter 4. Information Criteria: Examples of Applications in Signal and Image Processing 79
    Christian Oliver and Olivier Alata

    4.1. Introduction and context 79

    4.2. Overview of the different criteria 81

    4.3. The case of auto-regressive (AR) models 83

    4.4. Applying the process to unsupervised clustering 95

    4.5. Law approximation with the help of histograms 98

    4.6. Other applications 103

    4.7. Conclusion 106

    4.8. Appendix 106

    4.9. Bibliography 107

    Chapter 5. Quadratic Programming and Machine Learning - Large Scale Problems and Sparsity 111
    Gaëlle Looslil, Stéphane Canu

    5.1. Introduction 111

    5.2. Learning processes and optimization 112

    5.3. From learning methods to quadratic programming 117

    5.4. Methods and resolution 119

    5.5. Experiments 128

    5.6. Conclusion 132

    5.7. Bibliography 133

    Chapter 6. Probabilistic Modeling of Policies and Application to Optimal Sensor Management 137
    Frédéric Dambreville, Francis Celeste and Cécile Simonin

    6.1. Continuum, a path toward oblivion 137

    6.2. The cross-entropy (CE) method 138

    6.3. Examples of implementation of CE for surveillance 146

    6.4. Example of implementation of CE for exploration 153

    6.5. Optimal control under partial observation 158

    6.6. Conclusion 166

    6.7. Bibliography 166

    Chapter 7. Optimizing Emissions for Tracking and Pursuit of Mobile Targets 169
    Jean-Pierre Le Cadre

    7.1. Introduction 169

    7.2. Elementary modeling of the problem (deterministic case) 170

    7.3. Application to the optimization of emissions (deterministic case) 175

    7.4. The case of a target with a Markov trajectory 181

    7.5. Conclusion 189

    7.6. Appendix: monotonous functional matrices 189

    7.7. Bibliography 192

    Chapter 8. Bayesian Inference and Markov Models 195
    Christophe Collet

    8.1. Introduction and application framework 195

    8.2. Detection, segmentation and classification 196

    8.3. General modeling 199

    8.4. Segmentation using the causal-in-scale Markov model 201

    8.5. Segmentation into three classes 203

    8.6. The classification of objects 206

    8.7. The classification of seabeds 212

    8.8. Conclusion and perspectives 214

    8.9. Bibliography 215

    Chapter 9. The Use of Hidden Markov Models for Image Recognition: Learning with Artificial Ants, Genetic Algorithms and Particle Swarm Optimization 219
    Sébastien Aupetit, Nicolas Monmarchè and Mohamed Slimane

    9.1. Introduction 219

    9.2. Hidden Markov models (HMMs) 220

    9.3. Using metaheuristics to learn HMMs 223

    9.4. Description, parameter setting and evaluation of the six approaches that are used to train HMMs 226

    9.5. Conclusion 240

    9.6. Bibliography 240

    Chapter 10. Biological Metaheuristics for Road Sign Detection 245
    Guillaume Dutilleux and Pierre Charbonnier

    10.1. Introduction 245

    10.2. Relationship to existing works 246

    10.3. Template and deformations 248

    10.4. Estimation problem 248

    10.5. Three biological metaheuristics 252

    10.6. Experimental results 259

    10.7. Conclusion 265

    10.8. Bibliography 266

    Chapter 11. Metaheuristics for Continuous Variables. The Registration of Retinal Angiogram Images 269
    Johann Drèo, Jean-Claude Nunes and Patrick Siarry

    11.1. Introduction 269

    11.2. Metaheuristics for difficult optimization problems 270

    11.3. Image registration of retinal angiograms 275

    11.4. Optimizing the image registration process 279

    11.5. Results 288

    11.6. Analysis of the results 295

    11.7. Conclusion 296

    11.8. Acknowledgements 296

    11.9. Bibliography 296

    Chapter 12. Joint Estimation of the Dynamics and Shape of Physiological Signals through Genetic Algorithms 301
    Amine Naït-Ali and Patrick Siarry

    12.1. Introduction 301

    12.2. Brainstem Auditory Evoked Potentials (BAEPs) 302

    12.3. Processing BAEPs 303

    12.4. Genetic algorithms 305

    12.5. BAEP dynamics 307

    12.6. The non-stationarity of the shape of the BAEPs 324

    12.7. Conclusion 327

    12.8. Bibliography 327

    Chapter 13. Using Interactive Evolutionary Algorithms to Help Fit Cochlear Implants 329
    Pierre Collet, Pierrick Legrand, Claire Bourgeois-République, Vincent Péan and Bruno Frachet

    13.1. Introduction 329

    13.2. Choosing an optimization algorithm 333

    13.3. Adapting an evolutionary algorithm to the interactive fitting of cochlear implants 335

    13.4. Evaluation 338

    13.5. Experiments 339

    13.6. Medical issues which were raised during the experiments 350

    13.7. Algorithmic conclusions for patient A 352

    13.8. Conclusion 354

    13.9. Bibliography 354

    List of Authors 357

    Index 359