Mobile ground robots require perceiving and understanding their surrounding support surface to move around autonomously and safely. The support surface is commonly estimated based on exteroceptive depth measurements, e.g., from LiDARs. However, the measured depth fails to align with the true support surface in the presence of high grass or other penetrable vegetation. In this work, we present the semantic pointcloud flter (SPF), a convolutional neural network (CNN) that learns to adjust LiDAR measurements to align with the underlying support surface. The SPF is trained in a semi-self-supervised manner and takes as an input a LiDAR pointcloud and RGB image. The network predicts a binary segmentation mask that identifes the specifc points req...
In recent years a lot of research has been carried out by big tech companies in the field of autonom...
In this work, we present a semantic situation awareness system for multirotor aerial robots, based o...
Simultaneous localization and mapping is a fundamental process in robot navigation. We focus on LiDA...
Autonomous mobile robot has been becoming a promising way for some human-risky tasks, suck like sear...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Mobile ground robots operating on unstructured terrain must predict which areas of the environment t...
Humans and robots would benefit from having rich semantic maps of the terrain in which they operate....
The high agility of legged systems allows them to operate in rugged outdoor environments. In these s...
Legged robots have the potential to traverse diverse and rugged terrain. To find a safe and ...
The ability to have unmanned ground vehicles navigate unmapped off-road terrain has high impact pote...
This paper presents a multisensor-based approach to outdoor scene understanding of mobile robots. Si...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Precise ground surface topography is crucial for 3D city analysis, digital terrain modeling, natural...
Airborne laser scanning (ALS) data is one of the most commonly used data for terrain products genera...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...
In recent years a lot of research has been carried out by big tech companies in the field of autonom...
In this work, we present a semantic situation awareness system for multirotor aerial robots, based o...
Simultaneous localization and mapping is a fundamental process in robot navigation. We focus on LiDA...
Autonomous mobile robot has been becoming a promising way for some human-risky tasks, suck like sear...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
Mobile ground robots operating on unstructured terrain must predict which areas of the environment t...
Humans and robots would benefit from having rich semantic maps of the terrain in which they operate....
The high agility of legged systems allows them to operate in rugged outdoor environments. In these s...
Legged robots have the potential to traverse diverse and rugged terrain. To find a safe and ...
The ability to have unmanned ground vehicles navigate unmapped off-road terrain has high impact pote...
This paper presents a multisensor-based approach to outdoor scene understanding of mobile robots. Si...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Precise ground surface topography is crucial for 3D city analysis, digital terrain modeling, natural...
Airborne laser scanning (ALS) data is one of the most commonly used data for terrain products genera...
Currently, 3D point clouds are being used widely due to their reliability in presenting 3D objects a...
In recent years a lot of research has been carried out by big tech companies in the field of autonom...
In this work, we present a semantic situation awareness system for multirotor aerial robots, based o...
Simultaneous localization and mapping is a fundamental process in robot navigation. We focus on LiDA...