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出版时间:2014年11月

出版社:世界图书出版公司

以下为《图像分析中的模型和逆问题(英文版)》的配套数字资源,这些资源在您购买图书后将免费附送给您:
  • 世界图书出版公司
  • 9787510070198
  • 45077
  • 2014年11月
  • 未分类
  • 未分类
  • O2
内容简介

  查蒙德编著的《图像分析中的模型和逆问题》内容介绍:This book fulfills a need in the field of computer science research and education. It is not intended for professional mathematicians, but it undoubtedly deals with applied mathematics. Most of the expectations of the topic are fulfilled: precision, exactness, completeness, and excellent references to the original historical works. However, for the sake of read-ability, many demonstrations are omitted. It is not a book on practical image processing, of which so many abound, although all that it teaches is directly concerned with image analysis and image restoration. It is the perfect resource for any advanced scientist concerned with a better un-derstanding of the theoretical models underlying the methods that have efficiently solved numerous issues in robot vision and picture processing.

目录

Foreword by Henri Maitre


Acknowledgments


List of Figures


Notation and Symbols


1 Introduction


 1.1  About Modeling


  1.1.1 Bayesian Approach


  1.1.2 Inverse Problem


  1.1.3 Energy-Based Formulation


  1.1.4 Models


 1.2  Structure of the Book


 Spline Models


2 Nonparametrie Spline Models


 2.1  Definition


 2.2  Optimization


  2.2.1 Bending Spline


  2.2.2 Spline Under Tension


  2.2.3 Robustness


 2.3  Bayesian Interpretation


 2.4  Choice of Regularization Parameter


 2.5  Approximation Using a Surface


  2.5.1 L-Spline Surface


  2.5.2 Quadratic Energy


  2.5.3 Finite Element Optimization


3 Parametric Spline Models


 3.1  Representation on a Basis of B-Splines


  3.1.1 Approximation Spline


  3.1.2 Construction of B-Splines


 3.2  Extensions


  3.2.1 Multidimensional Case


  3.2.2 Heteroscedasticity


 3.3  High-Dimensional Splines


  3.3.1 Revealing Directions


  3.3.2 Projection Pursuit Regression


4 Auto-Associative Models


 4.1  Analysis of Multidimensional Data


  4.1.1 A Classical Approach


  4.1.2 Toward an Alternative Approach


 4.2  Auto-Associative Composite Models


  4.2.1 Model and Algorithm


  4.2.2 Properties


 4.3  Projection Pursuit and Spline Smoothing


  4.3.1 Projection Index


  4.3.2 Spline Smoothing


 4.4  Illustration


Ⅱ Markov Models


5 Fundamental Aspects


 5.1  Definitions


  5.1.1 Finite Markov Fields


  5.1.2 Gibbs Fields


 5.2  Markov-Gibbs Equivalence


 5.3  Examples


  5.3.1 Bending Energy


  5.3.2 Bernoulli Energy


  5.3.3 Gaussian Energy


 5.4  Consistency Problem


6 Bayesian Estimation


 6.1  Principle


 6.2  Cost Functions


  6.2.1 Cost b-hnction Examples


  6.2.2 Calculation Problems


7 Simulation and Optimization


 7.1  Simulation


  7.1.1 Homogeneous Markov Chain


  7.1.2 Metropolis Dynamic


  7.1.3 Simulated Gibbs Distribution


 7.2  Stochastic Optimization


 7.3  Probabilistic Aspects


 7.4  Deterministic Optimization


  7.4.1 ICM Algorithm


  7.4.2 Relaxation Algorithms


8 Parameter Estimation


 8.1  Complete Data


  8.1.1 Maximum Likelihood


  8.1.2 Maximum Pseudolikelihood


  8.1.3 Logistic Estimation


 8.2  Incomplete Data


  8.2.1 Maximum Likelihood


  8.2.2 Gibbsian EM Algorithm


  8.2.3 Bayesian Calibration


 Ⅲ Modeling in Action


9 Model-Building


 9.1  Multiple Spline Approximation


  9.1.1 Choice of Data and Image Characteristics


  9.1.2 Definition of the Hidden Field


  9.1.3 Building an Energy


 9.2  Markov Modeling Methodology


  9.2.1 Details for Implementation


10 Degradation in Imaging


  10.1 Denoising


  10.1.1 Models with Explicit Discontinuities


  10.1.2 Models with Implicit Discontinuities


  10.2 Deblurring


  10.2.1 A Particularly Ill-Posed Problem


  10.2.2 Model with Implicit Discontinuities


  10.3 Scatter


  10.3.1 Direct Problem


  10.3.2 Inverse Problem


 10.4 Sensitivity Functions and Image Fusion


  10.4.1 A Restoration Problem


  10.4.2 Transfer Function Estimation


  10.4.3 Estimation of Stained Transfer Function


11 Detection of Filamentary Entities


 11.1 Valley Detection Principle


  11.1.1 Definitions


  11.1.2 Bayes-Markov Formulation


 11.2 Building the Prior Energy


  11.2.1 Detection Term


  11.2.2 Regularization Term


 11.3 Optimization


 11.4 Extension to the Case of an Image Pair


12 Reconstruction and Projections


 12.1 Projection Model


  12.1.1 Transmission Tomography


  12.1.2 Emission Tomography


 12.2 Regularized Reconstruction


  12.2.1 Regularization with Explicit Discontinuities


  12.2.2 Three-Dimensional Reconstruction


 12.3 Reconstruction with a Single View


  12.3.1 Generalized Cylinder


  12.3.2 Training the Deformations


  12.3.3 Reconstruction in the Presence of Occlusion


13 Matching


 13.1 Template and Hidden Outline


  13.1.1 Rigid Transformations


  13.1.2 Spline Model of a Template


 13.2 Elastic Deformations


  13.2.1 Continuous Random Fields


  13.2.2 Probabilistie Aspects


References


Author Index


Subject Index