Publication | Closed Access
Mining Point Cloud Local Structures by Kernel Correlation and Graph Pooling
578
Citations
37
References
2018
Year
Unknown Venue
Geometric LearningKernel CorrelationEngineeringMachine LearningPoint Cloud ProcessingRange SearchingPoint CloudLocalizationConvolution KernelImage AnalysisGraph PoolingData ScienceData MiningPattern RecognitionRobot LearningPoint Cloud RegistrationComputational GeometryMachine VisionSemantic LearningKnowledge DiscoveryComputer ScienceMedical Image ComputingDeep Learning3D Object RecognitionComputer VisionSpatial VerificationGraph TheoryBusinessStructure DiscoveryScene Modeling
Unlike on images, semantic learning on 3D point clouds using a deep network is challenging due to the naturally unordered data structure. Among existing works, PointNet has achieved promising results by directly learning on point sets. However, it does not take full advantage of a point's local neighborhood that contains fine-grained structural information which turns out to be helpful towards better semantic learning. In this regard, we present two new operations to improve PointNet with a more efficient exploitation of local structures. The first one focuses on local 3D geometric structures. In analogy to a convolution kernel for images, we define a point-set kernel as a set of learnable 3D points that jointly respond to a set of neighboring data points according to their geometric affinities measured by kernel correlation, adapted from a similar technique for point cloud registration. The second one exploits local high-dimensional feature structures by recursive feature aggregation on a nearest-neighbor-graph computed from 3D positions. Experiments show that our network can efficiently capture local information and robustly achieve better performances on major datasets. Our code is available at http://www.merl.com/research/license#KCNet.
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