Litcius/Paper detail

Neural 3D reconstruction from sparse views using geometric priors

Tai‐Jiang Mu, Haoxiang Chen, Jun-Xiong Cai, Ning Guo

2023Computational Visual Media14 citationsDOIOpen Access PDF

Abstract

Sparse view 3D reconstruction has attracted increasing attention with the development of neural implicit 3D representation. Existing methods usually only make use of 2D views, requiring a dense set of input views for accurate 3D reconstruction. In this paper, we show that accurate 3D reconstruction can be achieved by incorporating geometric priors into neural implicit 3D reconstruction. Our method adopts the signed distance function as the 3D representation, and learns a generalizable 3D surface reconstruction model from sparse views. Specifically, we build a more effective and sparse feature volume from the input views by using corresponding depth maps, which can be provided by depth sensors or directly predicted from the input views. We recover better geometric details by imposing both depth and surface normal constraints in addition to the color loss when training the neural implicit 3D representation. Experiments demonstrate that our method both outperforms state-of-the-art approaches, and achieves good generalizability.

Topics & Concepts

Computer sciencePrior probabilityArtificial intelligenceRepresentation (politics)3D reconstructionGeneralizability theoryIsosurfaceComputer graphicsSparse approximationSurface reconstructionComputer visionIterative reconstructionFeature (linguistics)Set (abstract data type)Surface (topology)Pattern recognition (psychology)VisualizationMathematicsBayesian probabilityLinguisticsPoliticsStatisticsPhilosophyProgramming languagePolitical scienceGeometryLawAdvanced Vision and ImagingOptical measurement and interference techniques3D Surveying and Cultural Heritage