Relation Constrained Capsule Graph Neural Networks for Non-Rigid Shape Correspondence
Yuanfeng Lian,
Shoushuang Pei,
Mengqi Chen
et al.
Abstract:Non-rigid 3D shape correspondence aims to establish dense correspondences between two non-rigidly deformed 3D shapes. However, the variability and symmetry of non-rigid shapes usually lead to mismatches due to the shape deformation, topological changes, or data with severe noise. To finding an accurate correspondence between 3D dynamic shapes for the local deformation complexity, this paper proposes a Relation Constrained Capsule Graph Network (RC-CGNet), which combines global and local features by encouraging… Show more
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