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Self-Supervised Learning of Local Features in 3D Point Clouds

Ali Thabet, Humam Alwassel, Bernard Ghanem

202050 citationsDOI

Abstract

We present a self-supervised task on point clouds, in order to learn meaningful point-wise features that encode local structure around each point. Our self-supervised network, operates directly on unstructured/unordered point clouds. Using a multi-layer RNN, our architecture predicts the next point in a point sequence created by a popular and fast Space Filling Curve, the Morton-order curve. The final RNN state (coined Morton feature) is versatile and can be used in generic 3D tasks on point clouds. Our experiments show how our self-supervised task results in features that are useful for 3D segmentation tasks, and generalize well between datasets. We show how Morton features can be used to significantly improve performance (+3% for 2 popular algorithms) in semantic segmentation of point clouds on the challenging and large-scale S3DIS dataset. We also show how our self-supervised network pretrained on S3DIS transfers well to another large-scale dataset, vKITTI, leading to 11% improvement. Our code is publicly available.

Topics & Concepts

Point cloudComputer scienceSegmentationArtificial intelligencePoint (geometry)Task (project management)Code (set theory)Feature (linguistics)Pattern recognition (psychology)Scale (ratio)Sequence (biology)Machine learningMathematicsEconomicsGeometrySet (abstract data type)ManagementQuantum mechanicsPhysicsBiologyGeneticsProgramming languagePhilosophyLinguistics3D Shape Modeling and AnalysisHuman Pose and Action Recognition3D Surveying and Cultural Heritage
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