In this paper, we introduce a deep encoder-decoder network, named SalsaNet, for efficient semantic segmentation of 3D LiDAR point clouds. SalsaNet segments the road, i.e. drivable free-space, and vehicles in the scene by employing the Bird-Eye-View (BEV) image projection of the point cloud. To overcome the lack of annotated point cloud data, in particular for the road segments, we introduce an auto-labeling process which transfers automatically generated labels from the camera to LiDAR. We also explore the role of imagelike projection of LiDAR data in semantic segmentation by comparing BEV with spherical-front-view projection and show that SalsaNet is projection-agnostic. We perform quantitative and qualitative evaluations on the KITTI data...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
Multispectral LiDAR technology can simultaneously acquire spatial geometric data and multispectral w...
International audienceLiDAR point clouds are receiving a growing interest in remote sensing as they ...
In this paper, we introduce SalsaNext for the uncertainty-aware semantic segmentation of a full 3D L...
In this paper, we introduce SalsaNext for the uncertainty-aware semantic segmentation of a full 3D L...
LiDARs are one of the key sources of reliable environmental ranging information for autonomous vehic...
Accurate semantic segmentation of 3D point clouds is a long-standing problem in remote sensing and c...
In the near future, the communication between autonomous cars will produce a network of sensors that...
ISPRS 2020International audiencePoint cloud datasets for perception tasks in the context of autonomo...
Understanding and interpreting a scene is a key task of environment perception for autonomous drivin...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
This paper proposes RIU-Net (for Range-Image U-Net), the adaptation of a popular semantic segmentati...
This paper proposes RIU-Net (for Range-Image U-Net), the adaptation of a popular semantic segmentati...
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
Three dimensional high-definition point clouds containing semantic information are crucial in severa...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
Multispectral LiDAR technology can simultaneously acquire spatial geometric data and multispectral w...
International audienceLiDAR point clouds are receiving a growing interest in remote sensing as they ...
In this paper, we introduce SalsaNext for the uncertainty-aware semantic segmentation of a full 3D L...
In this paper, we introduce SalsaNext for the uncertainty-aware semantic segmentation of a full 3D L...
LiDARs are one of the key sources of reliable environmental ranging information for autonomous vehic...
Accurate semantic segmentation of 3D point clouds is a long-standing problem in remote sensing and c...
In the near future, the communication between autonomous cars will produce a network of sensors that...
ISPRS 2020International audiencePoint cloud datasets for perception tasks in the context of autonomo...
Understanding and interpreting a scene is a key task of environment perception for autonomous drivin...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
This paper proposes RIU-Net (for Range-Image U-Net), the adaptation of a popular semantic segmentati...
This paper proposes RIU-Net (for Range-Image U-Net), the adaptation of a popular semantic segmentati...
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
Three dimensional high-definition point clouds containing semantic information are crucial in severa...
Semantic segmentation of point clouds is indispensable for 3D scene understanding. Point clouds have...
Multispectral LiDAR technology can simultaneously acquire spatial geometric data and multispectral w...
International audienceLiDAR point clouds are receiving a growing interest in remote sensing as they ...