3D Triangular Mesh parameterization with Semantic Features Based on Competitive Learning Methods
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概要
- 論文の詳細を見る
In 3D computer graphics, mesh parameterization is a key technique for digital geometry processings such as morphing, shape blending, texture mapping, re-meshing and so on. Most of the previous approaches made use of an identical primitive domain to parameterize a mesh model. In recent works of mesh parameterization, more flexible and attractive methods that can create direct mappings between two meshes have been reported. These mappings are called “cross-parameterization” and typically preserve semantic feature correspondences between target meshes. This paper proposes a novel approach for parameterizing a mesh into another one directly. The main idea of our method is to combine a competitive learning and a least-square mesh techniques. It is enough to give some semantic feature correspondences between target meshes, even if they are in different shapes or in different poses.
- (社)電子情報通信学会の論文
- 2008-11-01
著者
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Nagahashi Hiroshi
Tokyo Institute Of Technology
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Nagahashi Hiroshi
Tokyo Inst. Technol.
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MATSUI Shun
Tokyo Institute of Technology
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AOKI Kota
Tokyo Institute of Technology
関連論文
- 3D Triangular Mesh parameterization with Semantic Features Based on Competitive Learning Methods
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