High-quality estimation of surface normal can help reduce ambiguity in many geometry understanding problems, such as collision avoidance and occlusion inference. This paper presents a technique for estimating the normal from 3D point clouds and 2D colour images. We have developed a transformer neural network that learns to utilise the hybrid information of visual semantic and 3D geometric data, as well as effective learning strategies. Compared to existing methods, the information fusion of the proposed method is more effective, which is supported by experiments. We have also built a simulation environment of outdoor traffic scenes in a 3D rendering engine to obtain annotated data to train the normal estimator. The model trained on synthe...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
International audienceUrban scenes acquisition is very often performed using laser scanners onboard ...
Accurate semantic segmentation of 3D point clouds is a long-standing problem in remote sensing and c...
High-quality estimation of surface normal can help reduce ambiguity in many geometry understanding p...
Accurate positioning of vehicles plays an important role in autonomous driving. In our previous rese...
LiDAR point clouds are rich in spatial information and can effectively express the size, shape, posi...
In this paper, we propose a novel method, namely GR-PSN, which learns surface normals from photometr...
Three dimensional high-definition point clouds containing semantic information are crucial in severa...
Accurate positioning of vehicles plays an important role in autonomous driving. In our previous rese...
3D scene understanding is crucial for robotics, augmented reality and autonomous vehicles. In those ...
3D object detection is a critical perception task in self-driving cars to ensure safetyduring operat...
Scene representation is the process of converting sensory observations of an environment into compac...
The goal of photometric stereo is to measure theprecise surface normal of a 3D object ...
Recently, transformer architecture has gained great success in the computer vision community, such a...
International audienceNormal estimation in point clouds is a crucial first step for numerous algorit...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
International audienceUrban scenes acquisition is very often performed using laser scanners onboard ...
Accurate semantic segmentation of 3D point clouds is a long-standing problem in remote sensing and c...
High-quality estimation of surface normal can help reduce ambiguity in many geometry understanding p...
Accurate positioning of vehicles plays an important role in autonomous driving. In our previous rese...
LiDAR point clouds are rich in spatial information and can effectively express the size, shape, posi...
In this paper, we propose a novel method, namely GR-PSN, which learns surface normals from photometr...
Three dimensional high-definition point clouds containing semantic information are crucial in severa...
Accurate positioning of vehicles plays an important role in autonomous driving. In our previous rese...
3D scene understanding is crucial for robotics, augmented reality and autonomous vehicles. In those ...
3D object detection is a critical perception task in self-driving cars to ensure safetyduring operat...
Scene representation is the process of converting sensory observations of an environment into compac...
The goal of photometric stereo is to measure theprecise surface normal of a 3D object ...
Recently, transformer architecture has gained great success in the computer vision community, such a...
International audienceNormal estimation in point clouds is a crucial first step for numerous algorit...
3D scene analysis by automatically assigning 3D points a semantic label has become an issue of major...
International audienceUrban scenes acquisition is very often performed using laser scanners onboard ...
Accurate semantic segmentation of 3D point clouds is a long-standing problem in remote sensing and c...