: Hà Quang Minh, Vittorio Murino
: Algorithmic Advances in Riemannian Geometry and Applications For Machine Learning, Computer Vision, Statistics, and Optimization
: Springer-Verlag
: 9783319450261
: Advances in Computer Vision and Pattern Recognition
: 1
: CHF 125.60
:
: Anwendungs-Software
: English
: 216
: Wasserzeichen/DRM
: PC/MAC/eReader/Tablet
: PDF

This book presents a selection of the most recent algorithmic advances in Riemannian geometry in the context of machine learning, statistics, optimization, computer vision, and related fields. The unifying theme of the different chapters in the book is the exploitation of the geometry of data using the mathematical machinery of Riemannian geometry. As demonstrated by all the chapters in the book, when the data is intrinsically non-Euclidean, the utilization of this geometrical information can lead to better algorithms that can capture more accurately the structures inherent in the data, leading ultimately to better empirical performance. This book is not intended to be an encyclopedic compilation of the applications of Riemannian geometry. Instead, it focuses on several important research directions that are currently actively pursued by researchers in the field. These include statistical modeling and analysis on manifolds,optimization on manifolds, Riemannian manifolds and kernel methods, and dictionary learning and sparse coding on manifolds. Examples of applications include novel algorithms for Monte Carlo sampling and Gaussian Mixture Model fitting,  3D brain image analysis,image classification, action recognition, and motion tracking.



Dr. Hà Quang Minh is a researcher in the Pattern Analysis and Computer Vision (PAVIS) group, at the Italian Institute of Technology (IIT), in Genoa, Italy.

Dr. Vittorio Murino is a full professor at the University of Verona Department of Computer Science, and the Director of the PAVIS group at the IIT.
Preface6
Overview and Goals6
Acknowledgments7
Contents8
Contributors9
Introduction11
Themes of the Volume11
Organization of the Volume12
1 Bayesian Statistical Shape Analysis on the Manifold of Diffeomorphisms15
1.1 Introduction15
1.2 Mathematical Background17
1.2.1 Space of Diffeomorphisms17
1.2.2 Metrics on Diffeomorphisms18
1.2.3 Diffeomorphic Atlas Building with LDDMM19
1.3 A Bayesian Model for Atlas Building20
1.4 Estimation of Model Parameters21
1.4.1 Hamiltonian Monte Carlo (HMC) Sampling23
1.4.2 The Maximization Step24
1.5 Bayesian Principal Geodesic Analysis25
1.5.1 Probability Model26
1.5.2 Inference27
1.6 Results29
References35
2 Sampling Constrained Probability Distributions Using Spherical Augmentation38
2.1 Introduction38
2.2 Preliminaries40
2.2.1 Hamiltonian Monte Carlo40
2.2.2 Lagrangian Monte Carlo41
2.3 Spherical Augmentation42
2.3.1 Ball Type Constraints42
2.3.2 Box-Type Constraints43
2.3.3 General q-Norm Constraints44
2.3.4 Functional Constraints46
2.4 Monte Carlo with Spherical Augmentation49
2.4.1 Common Settings49
2.4.2 Spherical Hamiltonian Monte Carlo50
2.4.3 Spherical LMC on Probability Simplex56
2.5 Experimental Results59
2.5.1 Truncated Multivariate Gaussian60
2.5.2 Bayesian Lasso61