Publication | Open Access
A Fast Ground Segmentation Method for 3D Point Cloud
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2017
Year
EngineeringField RoboticsPoint Cloud ProcessingComputer-aided DesignPoint CloudImage AnalysisLaser-based SensorComputational GeometryLaser Range SensorGeometry ProcessingGeometric ModelingMachine VisionLidarRange ImagingGround SegmentationSegment GroundComputer VisionNatural Sciences3D Scanning
In this study, we proposed a new approach to segment ground and nonground points gained from a 3D laser range sensor. The primary aim of this research was to provide a fast and effective method for ground segmentation. In each frame, we divide the point cloud into small groups. All threshold points and start-ground points in each group are then analyzed. To determine threshold points we depend on three features: gradient, lost threshold points, and abnormalities in the distance between the sensor and a particular threshold point. After a threshold point is determined, a start-ground point is then identified by considering the height difference between two consecutive points. All points from a start-ground point to the next threshold point are ground points. Other points are nonground. This process is then repeated until all points are labelled.