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Nguyen, Duong-Van: Vegetation detection and terrain classification for autonomous navigation. 2013
Inhalt
Abstrakt
Abstract
Acknowledgements
Preface
Contents
List of Figures
List of Tables
1 Introduction
1.1 Motivation
1.2 Problem Description
1.2.1 Terrain Classification
1.2.2 Vegetation Detection
1.3 Goald of this Thesis
1.4 Novel Contributions of the Thesis
1.4.1 Fitting plane Algorithm-based Depth Correction for Tyzx DeepSea Stereoscopic Imaging
1.4.2 Vegetation Indices Applied for Vegetation Detection
1.4.3 2D/3D Feature Fusion for Vegetation Detection
1.4.4 General Vegetation Detection Using an Integrated Vision System
1.4.5 Spreading Algorithm for Efficient Vegetation Detection
1.4.6 A Novel Approach for a Double-Check of Passable Vegetation Detection in Autonomous Ground Vehicles
1.4.7 Terrain Classification Based on Structure for Autonomous Navigation in Complex Environments
1.4.8 A Novel Approach of Terrain Classification for Outdoor Automobile Navigation
1.5 Document Structure
1.6 Publications
2 Fundamentals
2.1 The Experimental Platform AMOR
2.2 Light Detection And Ranging (LiDAR)
2.2.1 Optical Triangulation for 3D Digitizing
2.2.2 Laser Pulse Time-of-flight
2.2.3 Laser Phase-Shift Range Finder
2.2.4 Laser Scanner SICK LMS221
2.3 Structured Light
2.4 The MultiCam
2.5 Stereoscopic Imaging
2.5.1 Fitting Plane Algorithm-based Depth Correction for Tyzx DeepSea Stereoscopic Imaging
2.5.1.1 Introduction
2.5.1.2 Planar Surface for Scene Understanding
2.5.1.3 Fitting Plane Algorithm
2.5.1.4 Experiments and Results
2.5.1.5 Conclusion
2.6 Multi-spectral Imaging
3 Vegetation Indices Applied for Vegetation Detection
3.1 Related Work
3.1.1 Ratio Vegetation Index
3.1.2 Normalized Difference Vegetation Index
3.1.3 Perpendicular Vegetation Index
3.1.4 Difference Vegetation Index
3.1.5 Soil-Adjusted Vegetation Index
3.1.6 Modified Soil Adjusted Vegetation Index
3.2 A Novel Vegetation Index : Modification of Normalized Difference Vegetation Index
3.2.1 Derivation of Novel Index
3.3 Experiments and Results
3.4 Conclusion
4 2D-3D Feature Fusion-based Vegetation Detection
4.1 Related Work
4.2 2D/3D Mapping
4.3 3D point cloud analysis
4.3.1 Scatter Feature Extraction
4.4 Colour Descriptors
4.5 Support Vector Machine
4.6 Experiments and Results
4.7 Conclusion
5 General Vegetation Detection Using an Integrated Vision System
5.1 System Set-Up
5.2 Spatial Features
5.3 Vegetation Index Calculation
5.4 Colour and Texture Descriptors
5.5 Experiments and Results
5.6 Conclusion
6 Spreading Algorithm for Efficient Vegetation Detection
6.1 Introduction
6.2 Discussion on Vegetation Indices
6.3 Visual Features for Scene Understanding
6.3.1 Opponent Color Space
6.3.2 Unstructured Texture
6.4 Spreading Algorithm
6.5 Experiments and Results
6.6 Conclusion
7 A Novel Approach for a Double-Check of Passable Vegetation Detection in Autonomous Ground Vehicles
7.1 Introduction
7.2 Multi-spectral-based Vegetation Detection
7.2.1 Standard Form of Vegetation Index
7.2.2 Modification Form of Vegetation Index
7.2.3 Convex Combination of Vegetation Indices
7.3 System Design
7.4 A Double-Check for Passable Vegetation Detection
7.5 Experiments and Results
7.6 Conclusions
8 Terrain Classification Based on Structure for Autonomous Navigation in Complex Environments
8.1 Introduction
8.2 Methodology
8.2.1 Efficient Graph-based Segmentation Technique
8.2.2 Feature Extraction
8.2.2.1 Neighbour Distance Variation Inside Edgeless Regions
8.2.2.2 Conditional Local Point Statistics
8.2.3 Support Vector Machine
8.3 Experiments and Results
8.4 Conclusion
9 A Novel Approach of Terrain Classification for Outdoor Automobile Navigation
9.1 Introduction
9.2 Related Works
9.3 2D/3D Coarse Calibration
9.4 Feature-based Classification
9.4.1 Depth Image Segmentation
9.4.2 2D/3D Feature Fusion
9.4.2.1 3D Features
9.4.2.2 2D Features
9.5 Experiments and Results
9.6 Conclusion
10 Conclusions
10.1 Summary
10.2 Discussion
10.3 Direction for Future Work
Appendix A - Expert Concerns and Rebuttal
References