Abstract—Knowing the terrain is vital for small autonomous robots traversing unstructured outdoor environments. We present a technique using 3D laser point clouds combined with RGB camera images to classify terrain into four pre-defined classes: grass, sand, concrete, and metal. Our technique first segments the point cloud into distinct regions and then applies a simple classifier to determine the classification of each region. We demonstrate three classification and four segmentation algorithms on five outdoor environments. Classification and segmentation algorithms which use more information outperform information poor combinations. I
A mobile robot needs an internal representation of its environment in order to accomplish its missio...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Abstract. Terrain classification is a fundamental task in outdoor robot naviga-tion to detect and av...
This paper deals with the terrain classification problem for an autonomous mobile robot. The robot i...
Because of the difficulty of interpreting laser data in a meaningful way, safe navigation in vegetat...
In this thesis, we acquire outdoor and indoor ground terrain photos at multiple viewing angles in na...
Abstract — Autonomous terrain classification is an important requirement for robotic applications fo...
This paper presents two techniques to detect and classify navigable terrain in complex three-dimensi...
This paper presents two techniques to detect and classify navigable terrain in complex three-dimensi...
This paper presents two techniques to detect and classify navigable terrain in complex 3D environmen...
It became a well known technology that a map of complex environment containing low-level geometric p...
Three-dimensional laser range finders provide au-tonomous systems with vast amounts of information. ...
Abstract — The correct classification of the surrounding ter-rain is an important ability of a mobil...
This paper presents a novel attempt to combine a downward-looking camera and a forward-looking camer...
A mobile robot needs an internal representation of its environment in order to accomplish its missio...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Abstract. Terrain classification is a fundamental task in outdoor robot naviga-tion to detect and av...
This paper deals with the terrain classification problem for an autonomous mobile robot. The robot i...
Because of the difficulty of interpreting laser data in a meaningful way, safe navigation in vegetat...
In this thesis, we acquire outdoor and indoor ground terrain photos at multiple viewing angles in na...
Abstract — Autonomous terrain classification is an important requirement for robotic applications fo...
This paper presents two techniques to detect and classify navigable terrain in complex three-dimensi...
This paper presents two techniques to detect and classify navigable terrain in complex three-dimensi...
This paper presents two techniques to detect and classify navigable terrain in complex 3D environmen...
It became a well known technology that a map of complex environment containing low-level geometric p...
Three-dimensional laser range finders provide au-tonomous systems with vast amounts of information. ...
Abstract — The correct classification of the surrounding ter-rain is an important ability of a mobil...
This paper presents a novel attempt to combine a downward-looking camera and a forward-looking camer...
A mobile robot needs an internal representation of its environment in order to accomplish its missio...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...