Abstract:
This paper presents a new Self-organizing Map suitable for recovering a 2D surface starting from points sampled on the object surface. Growing self-organizing surface map...Show MoreMetadata
Abstract:
This paper presents a new Self-organizing Map suitable for recovering a 2D surface starting from points sampled on the object surface. Growing self-organizing surface map (GSOSM), is a new algorithm of the growing SOM family that reproduce the surface as an incremental mesh composed of triangles which are approximately equilateral. GSOSM introduces a new connection learning rule, called competitive connection Hebbian learning (CCHL), that produces a complete triangulation where CHL fails. Differently from other models such as neural meshes (NM), GSOSM recovers a surface topology from homogeneous samples distribution according to any presentation sequence. GSOSM map is a mesh that represents the object surface with a detail level established by a parameter, allowing different versions of a same object surface. Moreover, GSOSM reconstructions are very often meshes free of false or overlapping faces, and then GSOSM is a potential tool for virtual reconstruction of real objects.
Published in: 2008 IEEE International Joint Conference on Neural Networks (IEEE World Congress on Computational Intelligence)
Date of Conference: 01-08 June 2008
Date Added to IEEE Xplore: 26 September 2008
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ISSN Information:
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- IEEE Keywords
- Index Terms
- Self-organizing Map ,
- Triangulation ,
- Learning Rule ,
- Object Surface ,
- Equilateral ,
- Hebbian Learning ,
- Competitive Learning ,
- Reconstruction Tools ,
- Numerical Results ,
- Input Signal ,
- Point Cloud ,
- Receptive Field ,
- Pair Of Nodes ,
- Reconstruction Model ,
- Surface Reconstruction ,
- Traction Force ,
- Original Objective ,
- Triangular Mesh ,
- Original Surface ,
- Dense Point Cloud ,
- Triangle Edges ,
- Internal Face ,
- Regular Mesh ,
- Adaptive Step ,
- Balance Point ,
- In-center ,
- Merge Operation ,
- Multilayer Feedforward Neural Network
Keywords assist with retrieval of results and provide a means to discovering other relevant content. Learn more.
- IEEE Keywords
- Index Terms
- Self-organizing Map ,
- Triangulation ,
- Learning Rule ,
- Object Surface ,
- Equilateral ,
- Hebbian Learning ,
- Competitive Learning ,
- Reconstruction Tools ,
- Numerical Results ,
- Input Signal ,
- Point Cloud ,
- Receptive Field ,
- Pair Of Nodes ,
- Reconstruction Model ,
- Surface Reconstruction ,
- Traction Force ,
- Original Objective ,
- Triangular Mesh ,
- Original Surface ,
- Dense Point Cloud ,
- Triangle Edges ,
- Internal Face ,
- Regular Mesh ,
- Adaptive Step ,
- Balance Point ,
- In-center ,
- Merge Operation ,
- Multilayer Feedforward Neural Network