2022
DOI: 10.48550/arxiv.2203.08652
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Topology-Preserving Shape Reconstruction and Registration via Neural Diffeomorphic Flow

Abstract: Deep Implicit Functions (DIFs) represent 3D geometry with continuous signed distance functions learned through deep neural nets. Recently DIFs-based methods have been proposed to handle shape reconstruction and dense point correspondences simultaneously, capturing semantic relationships across shapes of the same class by learning a DIFs-modeled shape template. These methods provide great flexibility and accuracy in reconstructing 3D shapes and inferring correspondences. However, the point correspondences built… Show more

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References 48 publications
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