Title of article :
Mesh Segmentation via Spectral Embedding and Contour Analysis
Author/Authors :
Rong Liu ، نويسنده , , Hao Zhang، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2007
Abstract :
We propose a mesh segmentation algorithm via recursive bisection where at each step, a sub-mesh embedded in
3D is first spectrally projected into the plane and then a contour is extracted from the planar embedding. We rely
on two operators to compute the projection: the well-known graph Laplacian and a geometric operator designed
to emphasize concavity. The two embeddings reveal distinctive shape semantics of the 3D model and complement
each other in capturing the structural or geometrical aspect of a segmentation. Transforming the shape analysis
problem to the 2D domain also facilitates our segmentability analysis and sampling tasks. We propose a novel
measure of the segmentability of a shape, which is used as the stopping criterion for our segmentation. The measure
is derived from simple area- and perimeter-based convexity measures. We achieve invariance to shape bending
through multi-dimensional scaling (MDS) based on the notion of inner distance. We also utilize inner distances
to develop a novel sampling scheme to extract two samples along a contour which correspond to two vertices
residing on different parts of the sub-mesh. The two samples are used to derive a spectral linear ordering of the
mesh faces. We obtain a final cut via a linear search over the face sequence based on part salience, where a choice
of weights for different factors of part salience is guided by the result from segmentability analysis.
Journal title :
Computer Graphics Forum
Journal title :
Computer Graphics Forum