Litcius/Paper detail

Point Cloud Completion by Learning Shape Priors

Xiaogang Wang, Marcelo H. Ang, Gim Hee Lee

202027 citationsDOI

Abstract

In view of the difficulty in reconstructing object details in point cloud completion, we propose a shape prior learning method for object completion. The shape priors include geometric information in both complete and the partial point clouds. We design a feature alignment strategy to learn the shape prior from complete points, and a coarse to fine strategy to incorporate partial prior in the fine stage. To learn the complete objects prior, we first train a point cloud auto-encoder to extract the latent embeddings from complete points. Then we learn a mapping to transfer the point features from partial points to that of the complete points by optimizing feature alignment losses. The feature alignment losses consist of a L2 distance and an adversarial loss obtained by Maximum Mean Discrepancy Generative Adversarial Network (MMD-GAN). The L2 distance optimizes the partial features towards the complete ones in the feature space, and MMD-GAN decreases the statistical distance of two point features in a Reproducing Kernel Hilbert Space. We achieve state-of-the-art performances on the point cloud completion task. Our code is available at https://github.com/xiaogangw/point-cloud-completion-shape-prior.

Topics & Concepts

Point cloudFeature (linguistics)Computer scienceArtificial intelligencePrior probabilityKernel (algebra)Object (grammar)Point (geometry)Reproducing kernel Hilbert spacePattern recognition (psychology)Feature vectorAlgorithmComputer visionHilbert spaceMathematicsGeometryLinguisticsBayesian probabilityCombinatoricsMathematical analysisPhilosophy3D Shape Modeling and Analysis3D Surveying and Cultural HeritageAdvanced Numerical Analysis Techniques