Citation Link: https://nbn-resolving.org/urn:nbn:de:hbz:467-7772
Vegetation detection and terrain classification for autonomous navigation
Source Type
Doctoral Thesis
Author
Institute
Subjects
Vegetation Detection
Terrain Classification
Autonomous Navigation
2D3D Feature Fusion
Mobile Outdoor Robot
DDC
004 Informatik
GHBS-Clases
Issue Date
2013
Abstract
This thesis introduces seven novel contributions for two perception tasks: vegetation detection and terrain classification, that are at the core of any control system for efficient autonomous navigation in outdoor environments. Regarding vegetation detection, we first describe a vegetation index-based method (1), which relies on the absorption and reflectance properties of vegetation to visual light and near-infrared light, respectively. Second, a 2D/3D feature fusion (2), which imitates the human visual system in vegetation interpretation, is investigated. Alternatively, an integrated vision system (3) is proposed to realise our greedy ambition in combining visual perception-based and multi-spectral methods by only using a unit device. A depth study on colour and texture features of vegetation has been carried out, which leads to a robust and fast vegetation detection through an adaptive learning algorithm (4). In addition, a double-check of passable vegetation detection (5) is realised, relying on the compressibility of vegetation. The lower degree of resistance vegetation has, the more traversable it is. Regarding terrain classification, we introduce a structure-based method (6) to capture the world scene by inferring its 3D structures through a local point statistic analysis on LiDAR data. Finally, a classification-based method (7), which combines the LiDAR data and visual information to reconstruct 3D scenes, is presented. Whereby, object representation is described more details, thus enabling an ability to classify more object types. Based on the success of the proposed perceptual inference methods in the environmental sensing tasks, we hope that this thesis will really serve as a key point for further development of highly reliable perceptual inference methods.
File(s)![Thumbnail Image]()
Loading...
Name
nguyen.pdf
Size
6.57 MB
Format
Adobe PDF
Checksum
(MD5):a66819f0b3c3387abe05d199b3643044
Owning collection