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Weakly Supervised Semantic Point Cloud Segmentation: Towards 10× Fewer Labels

Xun Xu, Gim Hee Lee

2020261 citationsDOI

Abstract

Point cloud analysis has received much attention recently; and segmentation is one of the most important tasks. The success of existing approaches is attributed to deep network design and large amount of labelled training data, where the latter is assumed to be always available. However, obtaining 3d point cloud segmentation labels is often very costly in practice. In this work, we propose a weakly supervised point cloud segmentation approach which requires only a tiny fraction of points to be labelled in the training stage. This is made possible by learning gradient approximation and exploitation of additional spatial and color smoothness constraints. Experiments are done on three public datasets with different degrees of weak supervision. In particular, our proposed method can produce results that are close to and sometimes even better than its fully supervised counterpart with 10× fewer labels. Our code is available at the project website <sup xmlns:mml="http://www.w3.org/1998/Math/MathML" xmlns:xlink="http://www.w3.org/1999/xlink">1</sup> .

Topics & Concepts

Point cloudSegmentationComputer scienceSmoothnessPoint (geometry)Cloud computingArtificial intelligenceCode (set theory)Deep learningMachine learningInformation retrievalMathematicsGeometrySet (abstract data type)Mathematical analysisProgramming languageOperating system3D Shape Modeling and Analysis3D Surveying and Cultural HeritageRemote Sensing and LiDAR Applications
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