Litcius/Paper detail

HPNet: Deep Primitive Segmentation Using Hybrid Representations

Siming Yan, Zhenpei Yang, Chongyang Ma, Haibin Huang, Etienne Vouga, Qixing Huang

20212021 IEEE/CVF International Conference on Computer Vision (ICCV)50 citationsDOI

Abstract

This paper introduces HPNet, a novel deep-learning approach for segmenting a 3D shape represented as a point cloud into primitive patches. The key to deep primitive segmentation is learning a feature representation that can separate points of different primitives. Unlike utilizing a single feature representation, HPNet leverages hybrid representations that combine one learned semantic descriptor, two spectral descriptors derived from predicted geometric parameters, as well as an adjacency matrix that encodes sharp edges. Moreover, instead of merely concatenating the descriptors, HPNet optimally combines hybrid representations by learning combination weights. This weighting module builds on the entropy of input features. The output primitive segmentation is obtained from a meanshift clustering module. Experimental results on benchmark datasets ANSI and ABCParts show that HPNet leads to significant performance gains from baseline approaches.

Topics & Concepts

Computer scienceSegmentationPoint cloudArtificial intelligenceWeightingPattern recognition (psychology)Deep learningRepresentation (politics)Feature learningFeature (linguistics)Cluster analysisBenchmark (surveying)PoliticsGeographyPhilosophyLinguisticsGeodesyLawMedicineRadiologyPolitical science3D Shape Modeling and AnalysisImage Processing and 3D Reconstruction3D Surveying and Cultural Heritage
HPNet: Deep Primitive Segmentation Using Hybrid Representations | Litcius