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A neural network scheme for transparent surface modelling
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Source Computer graphics and interactive techniques in Australasia and South East Asia archive
Proceedings of the 3rd international conference on Computer graphics and interactive techniques in Australasia and South East Asia table of contents
Dunedin, New Zealand
SESSION: Modeling table of contents
Pages: 433 - 437  
Year of Publication: 2005
ISBN:1-59593-201-1
Authors
Mohamad Ivan Fanany  Tokyo Institute of Technology
Itsuo Kumazawa  Tokyo Institute of Technology
Kiichi Kobayashi  NHK Engineering Service Inc.
Sponsor
SIGGRAPH: ACM Special Interest Group on Computer Graphics and Interactive Techniques
Publisher
ACM  New York, NY, USA
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ABSTRACT

This paper presents a new neural network (NN) scheme for recovering three dimensional (3D) transparent surface. We view the transparent surface modeling, not as a separate problem, but as an extension of opaque surface modeling. The main insight of this work is we simulate transparency not only for generating visually realistic images, but for recovering the object shape. We construct a formulation of transparent surface modeling using ray tracing framework into our NN. We compared this ray tracing method, with a texture mapping method that simultaneously map the silhouette images and smooth shaded images (obtained form our NN), and textured images (obtained from the teacher image) to an initial 3D model. By minimizing the images error between the output images of our NN and the teacher images, observed in multiple views, we refine vertices position of the initial 3D model. We show that our NN can refine the initial 3D model obtained by polarization images and converge into more accurate surface.


REFERENCES

Note: OCR errors may be found in this Reference List extracted from the full text article. ACM has opted to expose the complete List rather than only correct and linked references.

 
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Fanany, M. I., and Kumazawa, I. 2003. SA-optimized multiple view smooth polyhedron representation nn. In Discovery Science, 306--310.
 
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Fanany, M. I., and Kumazawa, I. 2004. Multiple-view shape extraction from shading as local regression by analytic nn scheme. Mathematical and Computer Modelling 40, 9-10, 959--975.
 
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Fanany, M. I., Kobayashi, K., and Kumazawa, I. 2004. A combinatorial transparent surface modeling from polarization images. In IWCIA, 65--76.
 
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Collaborative Colleagues:
Mohamad Ivan Fanany: colleagues
Itsuo Kumazawa: colleagues
Kiichi Kobayashi: colleagues