BrĂ¼el-Gabrielsson, RickardGanapathi-Subramanian, VigneshSkraba, PrimozGuibas, Leonidas J.Jacobson, Alec and Huang, Qixing2020-07-052020-07-0520201467-8659https://doi.org/10.1111/cgf.14079https://diglib.eg.org:443/handle/10.1111/cgf14079We present an approach to incorporate topological priors in the reconstruction of a surface from a point scan. We base the reconstruction on basis functions which are optimized to provide a good fit to the point scan while satisfying predefined topological constraints. We optimize the parameters of a model to obtain a likelihood function over the reconstruction domain. The topological constraints are captured by persistence diagrams which are incorporated within the optimization algorithm to promote the correct topology. The result is a novel topology-aware technique which can (i) weed out topological noise from point scans, and (ii) capture certain nuanced properties of the underlying shape which could otherwise be lost while performing surface reconstruction. We show results reconstructing shapes with multiple potential topologies, compare to other classical surface construction techniques, and show the completion of real scan data.Attribution 4.0 International LicenseTheory of computationComputational geometryComputing methodologiesShape modelingMathematics of computingAlgebraic topologyTopology-Aware Surface Reconstruction for Point Clouds10.1111/cgf.14079197-207