Publication | Closed Access
PCT: Large-Scale 3d Point Cloud Representations Via Graph Inception Networks with Applications to Autonomous Driving
40
Citations
22
References
2019
Year
Unknown Venue
Geometric LearningLarge-scale 3DMachine LearningEngineeringPoint Cloud ProcessingPoint Cloud3D Computer VisionDiscretization ErrorsData ScienceRobot LearningComputational GeometryGeometric ModelingMachine VisionComputer ScienceAutonomous DrivingDeep Learning3D Object RecognitionComputer VisionPoint CloudsNatural SciencesScene Modeling
We present a novel graph-neural-network-based system to effectively represent large-scale 3D point clouds with the applications to autonomous driving. Many previous works studied the representations of 3D point clouds based on two approaches, voxelization, which causes discretization errors and learning, which is hard to capture huge variations in large-scale scenarios. In this work, we combine voxelization and learning: we discretize the 3D space into voxels and propose novel graph inception networks to represent 3D points in each voxel. This combination makes the system avoid discretization errors and work for large-scale scenarios. The entire system for large-scale 3D point clouds acts like the blocked discrete cosine transform for 2D images; we thus call it the point cloud neural transform (PCT). We further apply the proposed PCT to represent real-time LiDAR sweeps produced by self-driving cars and the PCT with graph inception networks significantly outperforms its competitors.
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