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Swadzba, Agnes: The robot's vista space : a computational 3D scene analysis. 2011
Inhalt
Acknowledgments
Abstract
Contents
1 Introduction
2 Perception of the Vista Space
2.1 Definition of the Vista Space
2.2 BIRON – the BIelefeld Robot companiON
2.2.1 The Robot Platform
2.2.2 The ``Home Tour'' Scenario
2.2.3 Vista Space Scenes in the ``Home Tour''
2.3 A Sensor for Perceiving Spatial Structures in 3D
2.3.1 Working Principle of the SwissRanger Camera
2.3.2 Preprocessing of SwissRanger Data
2.4 Basic Processing of a Single Percept
2.4.1 Computing Oriented Particles
2.4.2 Extracting Planar Surfaces
2.5 Basic Processing of Consecutive Percepts
2.5.1 Extending 3D Data with Velocities
2.5.2 Fusing Sets of Point Clouds
3 Learning Holistic Scene Models from Spatial Layouts
3.1 Motivation
3.2 Related Work
3.2.1 From Robotics Perspective
3.2.2 From Vision Perspective
3.2.3 Approaches Chosen for Comparison
3.2.4 Contribution of the Holistic Scene Model
3.3 The Holistic Scene Representation
3.3.1 The Scene Descriptor from 3D Data
3.3.2 The Scene Descriptor from 2D Data
3.3.3 Training Room Models and Combining Single Classifications
3.4 Evaluation
3.4.1 The 3D Indoor Database
3.4.2 Classifier Selection and Training
3.4.3 Classification Performance for Different Window Sizes
3.4.4 Classification Performance per Class
3.4.5 Feature Concatenation vs. Classifier Fusion
3.4.6 Room Label Distribution along Example Sequences
3.4.7 Correlations between Sub-Vectors of the 3D Feature Vector
3.5 Conclusion and Outlook
4 Learning Aligned Scene Models from Spatial Descriptions
4.1 Motivation
4.2 Related Work
4.2.1 Scene Interpretation from Verbal Input
4.2.2 Scene Interpretation from Visual Input
4.2.3 Integration of Verbal and Visual Scene Interpretations
4.2.4 Contribution of the Aligned Scene Model
4.3 Empirical Analysis of Spatial Scene Descriptions
4.4 The Computational Model
4.4.1 From Verbal Descriptions to Set of Trees
4.4.2 Inferring Initial 3D Scene Structures
4.4.3 Adapting the Initial Scene Structures to the Visual Perception
4.5 Evaluation
4.5.1 Analysis of an Example Model
4.5.2 Analysis of Level-1 Structures
4.5.3 Analysis of Level-2 Structures
4.5.4 Influence of Object Detection Errors on Model Formation
4.6 Conclusion and Outlook
5 Learning Articulated Scene Models from Spatial Changes
5.1 Motivation
5.2 Related Work
5.2.1 Detection of Moving Objects and Static Scene Modeling
5.2.2 Detection of Movable Objects and Semantic Areas
5.2.3 Contribution of the Articulated Scene Model
5.3 The Analysis of a Dynamic Scene
5.3.1 Entity Tracking
5.3.2 Static Background Adaptation and Movable Object Detection
5.4 Evaluation
5.4.1 Qualitative Evaluation of a Test Sequence
5.4.2 Quantitative Evaluation of a Set of Test Sequences
5.5 Applications of the Articulated Scene Model
5.5.1 Object Segmentation
5.5.2 Model Propagation from View to View
5.5.3 Object Articulation
5.6 Conclusion and Outlook
6 Summary
A Appendix – Scene Classification
A.1 3D Indoor Scene Categorization – A Prove of Concept
A.2 Equivalence of Form Factors for 2D Boxes
B Appendix – Scene Descriptions
B.1 Pilot Study: Playroom
B.2 Main Study: Playroom
B.3 Main Study: Living Room
Bibliography
List of Figures
List of Tables
Acronyms