The Light detection and ranging (LiDAR) sensor is used for perceiving the environment of an autonomous vehicle. LiDAR data or point cloud is processed to get the obstacles and their speed around an autonomous vehicle. Based on the information retrieved from LiDAR data and the data from other sensors, real-time decisions are taken for the proper navigation. Hence, the time taken in LiDAR data processing should be minimized. One of the important steps for LiDAR data processing is the segmentation of the obstacles. In this paper, we present a quantitative comparison between two different approaches for point cloud segmentation, Euclidean distance-based Cluster Extraction and Cylindrical range image-based method. Based on the simulation perform...
Lidar is a key sensor of autonomous driving systems, but the spatial distribution of its point cloud...
In the last decade, the autonomous vehicle has been investigated by both academia and industry. One ...
LiDAR point cloud data serves as an machine vision alternative other than image. Its advantages when...
This paper presents a method to pipeline the segmentation process for point clouds using the Robot O...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
In the near future, autonomous vehicles with full self-driving features will populate our public roa...
The Light detection and ranging (LiDAR) sensor plays a crucial role in perceiving the environment fo...
ISPRS 2020International audiencePoint cloud datasets for perception tasks in the context of autonomo...
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
Over the last few years, autonomous vehicles have progressed very rapidly. The odometry technique th...
Recently, research on the hardware system for generating point cloud data through 3D LiDAR scanning ...
Recently, self-driving cars became a big challenge in the automobile industry. After the DARPA chall...
Traffic monitoring and management have been and still continue to be a vast area of research. With t...
Present day autonomous vehicle relies on several sensor technologies for it's autonomous functionali...
LiDAR occupies a vital position in self-driving as the advanced detection technology enables autonom...
Lidar is a key sensor of autonomous driving systems, but the spatial distribution of its point cloud...
In the last decade, the autonomous vehicle has been investigated by both academia and industry. One ...
LiDAR point cloud data serves as an machine vision alternative other than image. Its advantages when...
This paper presents a method to pipeline the segmentation process for point clouds using the Robot O...
Autonomous vehicles perceive objects through various sensors. Cameras, radar, and LiDAR are generall...
In the near future, autonomous vehicles with full self-driving features will populate our public roa...
The Light detection and ranging (LiDAR) sensor plays a crucial role in perceiving the environment fo...
ISPRS 2020International audiencePoint cloud datasets for perception tasks in the context of autonomo...
Generating of a highly precise map grows up with development of autonomous driving vehicles. The hig...
Over the last few years, autonomous vehicles have progressed very rapidly. The odometry technique th...
Recently, research on the hardware system for generating point cloud data through 3D LiDAR scanning ...
Recently, self-driving cars became a big challenge in the automobile industry. After the DARPA chall...
Traffic monitoring and management have been and still continue to be a vast area of research. With t...
Present day autonomous vehicle relies on several sensor technologies for it's autonomous functionali...
LiDAR occupies a vital position in self-driving as the advanced detection technology enables autonom...
Lidar is a key sensor of autonomous driving systems, but the spatial distribution of its point cloud...
In the last decade, the autonomous vehicle has been investigated by both academia and industry. One ...
LiDAR point cloud data serves as an machine vision alternative other than image. Its advantages when...