Abstract — Autonomous robot navigation in unstructured outdoor environments is a challenging area of active research. At the core of this navigation task lies the concept of identifying safe, traversable paths which allow the robot to progress toward a goal. Stereo vision is frequently exploited for autonomous navigation, but has limitations in terms of its density and accuracy in the far field. This paper describes image classification techniques which augment near field stereo to identify safe terrain and obstacles in the far field. Machine Learning classification techniques using appearance-based features appear well suited to the task of far-field obstacle detection, where stereo vision fails. In particular, binary classifiers are appro...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Mobile robots lack a driver or a pilot and, thus, should be able to detect obstacles autonomously. T...
Colour Stereo visions are the primary perception system of the most Unmanned Ground Vehicles (UGVs),...
Abstract. Autonomous navigation in cross-country environments presents many new challenges with resp...
Konolige et al.: Mapping, Navigation, and Learning for Off-Road Traversal • 89 The challenge in the ...
In natural outdoor settings, advanced perception systems and learning strategies are major requireme...
This work presents a vision-based obstacle avoidance algorithm for autonomous mobile robots. It prov...
Abstract—A navigation algorithm for mobile robots in un-known rough terrain has been developed. The ...
Most vision-based approaches to mobile robotics suffer from the limitations im-posed by stereo obsta...
An obstacle detection approach based on stereo vision is proposed for mobile robot navigation. The a...
An obstacle detection approach based on stereo vision is proposed for mobile robot navigation. The a...
110 pagesAutonomous robotic navigation in unstructured, complex environments requires the robot to r...
This paper highlights the importance of an autonomous navigation scheme for an Unmanned Ground Vehic...
This paper highlights the importance of an autonomous navigation scheme for an Unmanned Ground Vehic...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Mobile robots lack a driver or a pilot and, thus, should be able to detect obstacles autonomously. T...
Colour Stereo visions are the primary perception system of the most Unmanned Ground Vehicles (UGVs),...
Abstract. Autonomous navigation in cross-country environments presents many new challenges with resp...
Konolige et al.: Mapping, Navigation, and Learning for Off-Road Traversal • 89 The challenge in the ...
In natural outdoor settings, advanced perception systems and learning strategies are major requireme...
This work presents a vision-based obstacle avoidance algorithm for autonomous mobile robots. It prov...
Abstract—A navigation algorithm for mobile robots in un-known rough terrain has been developed. The ...
Most vision-based approaches to mobile robotics suffer from the limitations im-posed by stereo obsta...
An obstacle detection approach based on stereo vision is proposed for mobile robot navigation. The a...
An obstacle detection approach based on stereo vision is proposed for mobile robot navigation. The a...
110 pagesAutonomous robotic navigation in unstructured, complex environments requires the robot to r...
This paper highlights the importance of an autonomous navigation scheme for an Unmanned Ground Vehic...
This paper highlights the importance of an autonomous navigation scheme for an Unmanned Ground Vehic...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Mobile robots lack a driver or a pilot and, thus, should be able to detect obstacles autonomously. T...