We present a method that uses high-resolution topography data of rough terrain, and ground vehicle simulation, to predict traversability. Traversability is expressed as three independent measures: the ability to traverse the terrain at a target speed, energy consumption, and acceleration. The measures are continuous and reflect different objectives for planning that go beyond binary classification. A deep neural network is trained to predict the traversability measures from the local heightmap and target speed. To produce training data, we use an articulated vehicle with wheeled bogie suspensions and procedurally generated terrains. We evaluate the model on laser-scanned forest terrains, previously unseen by the model. The model predicts tr...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
The use of heavy vehicles in rough terrain is vital in the industry but has negative implications fo...
Mobile ground robots operating on unstructured terrain must predict which areas of the environment t...
Despite the progress in legged robotic locomotion, autonomous navigation in unknown environments rem...
Autonomous navigation in dense vegetation remains an open challenge and is an area of major interest...
Navigating off-road with a fast autonomous vehicle depends on a robust perception system that differ...
The ability to have unmanned ground vehicles navigate unmapped off-road terrain has high impact pote...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
We present a method that uses high-resolution topography data of rough terrain, and ground vehicle s...
The use of heavy vehicles in rough terrain is vital in the industry but has negative implications fo...
Mobile ground robots operating on unstructured terrain must predict which areas of the environment t...
Despite the progress in legged robotic locomotion, autonomous navigation in unknown environments rem...
Autonomous navigation in dense vegetation remains an open challenge and is an area of major interest...
Navigating off-road with a fast autonomous vehicle depends on a robust perception system that differ...
The ability to have unmanned ground vehicles navigate unmapped off-road terrain has high impact pote...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...
We explore the potential to control terrain vehicles using deep reinforcement in scenarios where hum...