Litcius/Paper detail

DeepCurrents: Learning Implicit Representations of Shapes with Boundaries

D. R. Palmer, Dmitriy Smirnov, Stephanie Wang, Albert Chern, Justin Solomon

20222022 IEEE/CVF Conference on Computer Vision and Pattern Recognition (CVPR)20 citationsDOI

Abstract

Recent techniques have been successful in reconstructing surfaces as level sets of learned functions (such as signed distance fields) parameterized by deep neural networks. Many of these methods, however, learn only closed surfaces and are unable to reconstruct shapes with boundary curves. We propose a hybrid shape representation that combines explicit boundary curves with implicit learned interiors. Using machinery from geometric measure theory, we parameterize currents using deep networks and use stochastic gradient descent to solve a minimal surface problem. By modifying the metric according to target geometry coming, e.g., from a mesh or point cloud, we can use this approach to represent arbitrary surfaces, learning implicitly defined shapes with explicitly defined boundary curves. We further demonstrate learning families of shapes jointly parameterized by boundary curves and latent codes.

Topics & Concepts

Boundary (topology)Parameterized complexityPoint cloudMetric (unit)Computer scienceSurface (topology)Representation (politics)Deep learningBoundary representationMeasure (data warehouse)Point (geometry)AlgorithmArtificial intelligenceFace (sociological concept)Artificial neural networkGeometryMathematicsMathematical analysisOperations managementLawPoliticsPolitical scienceDatabaseSocial scienceEconomicsSociology3D Shape Modeling and AnalysisComputer Graphics and Visualization TechniquesAdvanced Numerical Analysis Techniques