Surface Fairing Segmentation Meeting 07.

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Presentation transcript:

Surface Fairing Segmentation Meeting 07

Smoothing manifold (surface)

Introduction to multivariate Smoothing.

Typo

Signal

Gaussian noise added

Prediction

Signal Prediction

2D version of Taubin’s smoothing

Uh… why?

Application to Surface Parameterization/ Flattening

After 50 iterations

Adding iid random noise. I was experimenting. 

After 50 iterations

Simple radial projection – another experiment.

radial projection after smoothing

Smoothing  radial projection  smoothing  radial projection