Title of article :
Support Vector Machines for 3D Shape Processing
Author/Authors :
Florian Steinke1 ، نويسنده , , Bernhard Scholkopf1 ، نويسنده , , Volker Blanz2 ، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2005
Abstract :
We propose statistical learning methods for approximating implicit surfaces and computing dense 3D deformation
fields. Our approach is based on Support Vector (SV) Machines, which are state of the art in machine learning. It
is straightforward to implement and computationally competitive; its parameters can be automatically set using
standard machine learning methods.
The surface approximation is based on a modified Support Vector regression. We present applications to 3D head
reconstruction, including automatic removal of outliers and hole filling.
In a second step, we build on our SV representation to compute dense 3D deformation fields between two objects.
The fields are computed using a generalized SVMachine enforcing correspondence between the previously learned
implicit SV object representations, as well as correspondences between feature points if such points are available.
We apply the method to the morphing of 3D heads and other objects.
Journal title :
Computer Graphics Forum
Journal title :
Computer Graphics Forum