The detection of drivable areas in off-road scenes is a challenging problem due to the presence of unstructured class boundaries, irregular features, and dust noise. Three-dimensional LiDAR data can effectively describe the terrain features, and a bird’s eye view (BEV) not only shows these features, but also retains the relative size of the environment compared to the forward viewing. In this paper, a method called LRTI, which is used for detecting drivable areas based on the texture information of LiDAR reflection data, is proposed. By using an instance segmentation network to learn the texture information, the drivable areas are obtained. Furthermore, a multi-frame fusion strategy is applied to improve the reliability of the output, and a...
Environment awareness through advanced sensing systems is a major requirement for a mobile robot to ...
Mobile ground robots require perceiving and understanding their surrounding support surface to move ...
Autonomous vehicles (AVs) must perceive and understand the 3D environment around them. Modern autono...
In this paper, we developed the solution of roadside LiDAR object detection using a combination of t...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Machine learning techniques have accelerated the development of autonomous navigation algorithms in ...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
In this study, we implement and apply a region growing segmentation procedure based on texture to ex...
Three-dimensional laser range finders provide au-tonomous systems with vast amounts of information. ...
The randomness and complexity of urban traffic scenes make it a difficult task for self-driving cars...
Although numerous road segmentation studies have utilized vision data, obtaining robust classificati...
In this study, we implement and apply a region growing segmentation procedure based on texture to ex...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
Environment awareness through advanced sensing systems is a major requirement for a mobile robot to ...
Abstract — We present a method for identifying drivable surfaces in difficult unpaved and offroad te...
Environment awareness through advanced sensing systems is a major requirement for a mobile robot to ...
Mobile ground robots require perceiving and understanding their surrounding support surface to move ...
Autonomous vehicles (AVs) must perceive and understand the 3D environment around them. Modern autono...
In this paper, we developed the solution of roadside LiDAR object detection using a combination of t...
Reliable assessment of terrain traversability using multi-sensory input is a key issue for driving a...
Machine learning techniques have accelerated the development of autonomous navigation algorithms in ...
Autonomous robotic navigation in forested environments is difficult because of the highly variable a...
In this study, we implement and apply a region growing segmentation procedure based on texture to ex...
Three-dimensional laser range finders provide au-tonomous systems with vast amounts of information. ...
The randomness and complexity of urban traffic scenes make it a difficult task for self-driving cars...
Although numerous road segmentation studies have utilized vision data, obtaining robust classificati...
In this study, we implement and apply a region growing segmentation procedure based on texture to ex...
This article aims at demonstrating the feasibility of modern deep learning techniques for the real-t...
Environment awareness through advanced sensing systems is a major requirement for a mobile robot to ...
Abstract — We present a method for identifying drivable surfaces in difficult unpaved and offroad te...
Environment awareness through advanced sensing systems is a major requirement for a mobile robot to ...
Mobile ground robots require perceiving and understanding their surrounding support surface to move ...
Autonomous vehicles (AVs) must perceive and understand the 3D environment around them. Modern autono...