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CaSPR: Learning Canonical Spatiotemporal Point Cloud Representations

Davis Rempe, Tolga Birdal, Yongheng Zhao, Žan Gojčič, Srinath Sridhar, Leonidas Guibas

2021Repository for Publications and Research Data (ETH Zurich)14 citationsDOIOpen Access PDF

Abstract

We propose CaSPR, a method to learn object-centric Canonical Spatiotemporal Point Cloud Representations of dynamically moving or evolving objects. Our goal is to enable information aggregation over time and the interrogation of object state at any spatiotemporal neighborhood in the past, observed or not. Different from previous work, CaSPR learns representations that support spacetime continuity, are robust to variable and irregularly spacetime-sampled point clouds, and generalize to unseen object instances. Our approach divides the problem into two subtasks. First, we explicitly encode time by mapping an input point cloud sequence to a spatiotemporally-canonicalized object space. We then leverage this canonicalization to learn a spatiotemporal latent representation using neural ordinary differential equations and a generative model of dynamically evolving shapes using continuous normalizing flows. We demonstrate the effectiveness of our method on several applications including shape reconstruction, camera pose estimation, continuous spatiotemporal sequence reconstruction, and correspondence estimation from irregularly or intermittently sampled observations.

Topics & Concepts

Point cloudComputer scienceLeverage (statistics)SpacetimeOrdinary differential equationInterrogationArtificial intelligenceRepresentation (politics)Sequence (biology)ENCODEObject (grammar)Generative modelComputer visionPattern recognition (psychology)Generative grammarMathematicsDifferential equationGeographyMathematical analysisPoliticsArchaeologyGenePolitical scienceGeneticsPhysicsBiochemistryBiologyQuantum mechanicsLawChemistry3D Shape Modeling and AnalysisImage Processing and 3D Reconstruction3D Surveying and Cultural Heritage