This paper presents an approach for slip prediction from a distance for wheeled ground robots using visual information as input. Large amounts of slippage which can occur on certain surfaces, such as sandy slopes, will negatively affect rover mobility. Therefore, obtaining information about slip before entering such terrain can be very useful for better planning and avoiding these areas. To address this problem, terrain appearance and ge-ometry information about map cells are correlated to the slip measured by the rover while traversing each cell. This relationship is learned from previous experience, so slip can be predicted remotely from visual information only. The proposed method consists of terrain type recognition and nonlinear regres...
In recent years, there has been an increased interest in implementing intelligent robotic systems in...
The presence of adverse road conditions like water, snow, and ice is known to largely increase the c...
Abstract—Mobile robots are increasingly being used in highrisk rough terrain situations, such as pla...
This paper presents an approach for slip prediction from a distance for wheeled ground robots using ...
This paper considers prediction of slip from a distance for wheeled ground robots...
Abstract In this paper we predict the amount of slip an exploration rover would experience using st...
In this paper we predict the amount of slip an exploration rover would experience using stereo image...
Perception of the surrounding environment is an essential tool for intelligent navigation in any aut...
This paper presents a novel technique to validate and predict the rover slips on Martian surface for...
Accounting for wheel–terrain interaction is crucial for navigation and traction control of mobile ro...
This paper describes the design, implementation, and experimental results of a navigation system for...
We address the problem of learning terrain traversability properties from visual in...
2008 IEEE International Conference on Robotics and Automation, Pasadena, CA, USA, May 19-23, 200
Future outdoor mobile robots will have to explore larger and larger areas, performing difficult task...
Mobile robots are increasingly being used in high-risk, rough terrain situations, such as planetary ...
In recent years, there has been an increased interest in implementing intelligent robotic systems in...
The presence of adverse road conditions like water, snow, and ice is known to largely increase the c...
Abstract—Mobile robots are increasingly being used in highrisk rough terrain situations, such as pla...
This paper presents an approach for slip prediction from a distance for wheeled ground robots using ...
This paper considers prediction of slip from a distance for wheeled ground robots...
Abstract In this paper we predict the amount of slip an exploration rover would experience using st...
In this paper we predict the amount of slip an exploration rover would experience using stereo image...
Perception of the surrounding environment is an essential tool for intelligent navigation in any aut...
This paper presents a novel technique to validate and predict the rover slips on Martian surface for...
Accounting for wheel–terrain interaction is crucial for navigation and traction control of mobile ro...
This paper describes the design, implementation, and experimental results of a navigation system for...
We address the problem of learning terrain traversability properties from visual in...
2008 IEEE International Conference on Robotics and Automation, Pasadena, CA, USA, May 19-23, 200
Future outdoor mobile robots will have to explore larger and larger areas, performing difficult task...
Mobile robots are increasingly being used in high-risk, rough terrain situations, such as planetary ...
In recent years, there has been an increased interest in implementing intelligent robotic systems in...
The presence of adverse road conditions like water, snow, and ice is known to largely increase the c...
Abstract—Mobile robots are increasingly being used in highrisk rough terrain situations, such as pla...