| Introduction | p. 1 |
| References | p. 10 |
| Introductory Background | p. 15 |
| Euler-Lagrange equations | p. 15 |
| Definite integrals | p. 15 |
| Variable domain of integration | p. 17 |
| Descent methods for unconstrained optimization | p. 20 |
| Real functions | p. 20 |
| Integral functional | p. 20 |
| Level sets | p. 22 |
| Optical flow | p. 25 |
| The gradient equation | p. 25 |
| The Horn and Schunck formulation | p. 26 |
| The Aubert, Kornprobst, and Deriche formulation | p. 28 |
| Optical flow of rigid body motion | p. 28 |
| References | p. 31 |
| Basic Methods | p. 33 |
| The Mumford and Shah model | p. 33 |
| Bayesian interpretation | p. 34 |
| Graduated non convexity implementation | p. 35 |
| The minimum description length method of Leclerc | p. 36 |
| MDL and MAP | p. 36 |
| The piecewise constant image model | p. 37 |
| Numerical implementation | p. 39 |
| The region competition algorithm | p. 40 |
| Optimization | p. 41 |
| A level set formulation of the piecewise constant Mumford-Shah model | p. 45 |
| Curve evolution minimization of the Chan-Vese functional | p. 46 |
| Level set representation of curve evolution | p. 48 |
| Algorithm summary | p. 49 |
| Numerical implementation details of the level set evolution equation | p. 50 |
| Edge-based approaches | p. 51 |
| The Kass-Witkin-Terzopoulos Snakes model | p. 51 |
| The Geodesic active contour | p. 52 |
| Examples | p. 54 |
| References | p. 57 |
| Multiregion Segmentation | p. 59 |
| Introduction | p. 59 |
| Multiregion segmentation using a partition constraint functional term | p. 61 |
| Multiphase level set image segmentation | p. 62 |
| Level set multiregion competition | p. 66 |
| Representation of a partition into a fixed but arbitrary number of regions | p. 66 |
| Curve evolution equations | p. 67 |
| Level set implementation | p. 69 |
| Multiregion level set segmentation as regularized clustering | p. 70 |
| Curve evolution equations | p. 71 |
| Level set implementation | p. 73 |
| Embedding a partition constraint directly in the minimization equations | p. 74 |
| Two-region segmentation: first order analysis | p. 74 |
| Extension to multiregion segmentation | p. 76 |
| Example | p. 78 |
| References | p. 80 |
| Image Models | p. 83 |
| Introduction | p. 83 |
| Segmentation by maximizing the image likelihood | p. 84 |
| The Gaussian model | p. 85 |
| The Gamma image model | p. 89 |
| Generalization to distributions of the exponential family | p. 91 |
| The Weibull image Model | p. 93 |
| The Complex Wishart Model | p. 95 |
| MDL interpretation of the smoothness term coefficient | p. 98 |
| Generalization to multiregion segmentation | p. 99 |
| Examples | p. 101 |
| Maximization of the mutual information between the segmentation and the image | p. 104 |
| Curve evolution equation | p. 106 |
| Statistical interpretation | p. 108 |
| Algorithm summary | p. 108 |
| Segmentation by maximizing the discrepancy between the regions image distributions | p. 109 |
| Statistical interpretation | p. 110 |
| The kernel width | p. 110 |
| Algorithm summary | p. 111 |
| Example | p. 111 |
| Image segmentation using a region reference distribution | p. 111 |
| Statistical interpretation | p. 113 |
| Summary of the algorithms | p. 114 |
| Example | p. 114 |
| Segmentation with an overlap prior | p. 114 |
| Statistical interpretation | p. 117 |
| Example | p. 117 |
| References | p. 120 |
| Region Merging Priors | p. 123 |
| Introduction | p. 123 |
| Definition of a region merging prior | p. 125 |
| A minimum description length prior | p. 126 |
| An entropic region merging prior | p. 126 |
| Entropic interpretation | p. 127 |
| Segmentation functional | p. 127 |
| Minimization equations | p. 128 |
| A region merging interpretation of the level set evolution equations | p. 130 |
| The weight of the entropic prior | p. 130 |
| Example | p. 132 |
| Segmentation with the entropic region merging prior | p. 132 |
| Segmentation with the MDL region merging prior | p. 133 |
| Computation time | p. 133 |
| References | p. 137 |
| Motion Based Image Segmentation | p. 139 |
| Introduction | p. 139 |
| Piecewise constant MDL estimation and segmentation of optical flow | p. 141 |
| Numerical implementation | p. 143 |
| Example | p. 145 |
| Joint segmentation and linear parametric estimation of optical flow | p. 145 |
| Formulation | p. 147 |
| Functional minimization | p. 151 |
| Level set implementation | p. 155 |
| Multiregion segmentation | p. 155 |
| Examples | p. 155 |
| References | p. 158 |
| Image Segmentation According to the Movement of Real Objects | p. 161 |
| Introduction | p. 161 |
| The functionals | p. 164 |
| Minimization of E1 | p. 166 |
| Minimization with respect to the screws of motion | p. 166 |
| Minimization with respect to depth | p. 167 |
| Minimization with respect to the active curve | p. 167 |
| Algorithm | p. 168 |
| Uncertainty of scale in 3D interpretation | p. 168 |
| Multiregion segmentation | p. 169 |
| Example | p. 169 |
| Minimization of E2 | p. 169 |
| Minimization with respect to the essential parameter vectors | p. 169 |
| Minimization with respect to optical flow | p. 171 |
| Minimization with respect to | p. 171 |
| Recovery of regularized relative depth | p. 171 |
| Algorithm | p. 172 |
| Example | p. 173 |
| Minimization of E3 | p. 174 |
| Example | p. 175 |
| References | p. 178 |
| Appendix | p. 181 |
| The Horn and Schunck optical flow estimation algorithm | p. 181 |
| Iterative resolution by the Jacobi and Gauss-Seidel iterations | p. 183 |
| Evaluation of derivatives | p. 184 |
| The Aubert, Deriche, and Kornprobst algorithm | p. 184 |
| Construction of stereoscopic images of a computed 3D interpretation | p. 186 |
| References | p. 188 |
| Index | p. 189 |
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