de
en
Schliessen
Detailsuche
Bibliotheken
Projekt
Impressum
Datenschutz
zum Inhalt
Detailsuche
Schnellsuche:
OK
Ergebnisliste
Titel
Titel
Inhalt
Inhalt
Seite
Seite
Im Dokument suchen
Quartulli, Marco Francesco: Hierarchical Bayesian analysis of high complexity data for the inversion of metric InSAR in urban environments. 2005
Inhalt
Abstract
Zusammenfassung
Acknowledgments
Contents
List of Figures
List of Tables
1 Introduction
1.1 Advances in Bayesian inference for signal processing and analysis
1.2 On the information content of InSAR data at metric resolutions
1.3 Outline: the contribution of this thesis
Part I Preliminaries
2 Synthetic Aperture Radar Interferometry at meter resolution
2.1 Synthetic Aperture Radar
2.2 SAR interferometry
2.3 The metric InSAR domain
2.4 Summary
3 Bayesian modeling, estimation and decision theory for multidimensional signal analysis
3.1 Bayesian modeling and analysis
3.2 Gibbs random fields
3.3 Estimation and decision theory
3.4 Summary
Part II Hierarchical Bayesian modelling
4 Space–variant model selection in model–based information extraction
4.1 Model based image denoising and information extraction
4.2 Image models
4.3 Locally–adaptive parameter estimation by evidence maximization
4.4 Model order selection
4.5 Summary
5 Information Fusion for scene reconstruction from Interferometric SAR Data in Urban Environments
5.1 The need for probabilistic modeling in scene reconstruction
5.2 Scene–to–data hierarchical models
5.3 Learning procedure
5.4 Urban scene reconstruction from InSAR data
5.5 Summary
6 Stochastic geometrical modeling for urban scene understanding from a single SAR intensity image with meter resolution
6.1 Scene understanding from SAR: objects and their relations
6.2 Marked spatial point processes as prior scene models
6.3 Scene posterior structure decomposition in Gibbs potential terms
6.4 The scene prior potential term
6.5 The data likelihood potential term
6.6 Inference in Bayesian scene understanding with non–analytic posteriors
6.7 Overview of estimation method
6.8 Marked Point Process based scene understanding example
6.9 Summary
Part III Evaluation and validation of results
6.10 Content–based retrieval, information mining, scene understanding
6.11 Case studies with local model order selection in model based information extraction
6.12 Urban scene reconstruction from InSAR data
6.13 Marked point process model–based building reconstruction from metric airborne SAR
6.14 Summary
Conclusions
A The K-means clustering algorithm
B Non–analytical optimization and MAP estimation by simulated annealing
Bibliography