PERCEPTIONPublications3D Shape Registration Using Spectral Graph Embedding and Probabilistic Matching
Image Processing and Analysing With Graphs: Theory and Practice, CRC Press, Pages 441--474 - 2012 3D Shape Registration Using Spectral Graph Embedding and Probabilistic Matching
Abstract
In this book chapter we address the problem of 3D shape registration and we propose a novel technique based on spectral graph theory and probabilistic matching. Recent advancement
in shape acquisition technology has led to the capture of large amounts of 3D data.
Existing real-time multi-camera 3D acquisition methods provide a frame-wise reliable visual-hull
or mesh representations for real 3D animation sequences
The task of 3D shape analysis involves tracking, recognition, registration, etc.
Analyzing 3D data in a single framework is still a challenging task considering
the large variability of the data gathered with different acquisition devices.
3D shape registration is one such challenging shape analysis task.
The main contribution of this chapter is to extend the spectral graph matching methods
to very large graphs by combining spectral graph matching with Laplacian embedding.
Since the embedded representation of a graph is obtained by dimensionality reduction
we claim that the existing spectral-based methods are not easily applicable.
We discuss solutions for the exact and
inexact graph isomorphism problems and recall the main spectral properties of the combinatorial graph Laplacian;
We provide a novel analysis of the commute-time embedding that allows us to interpret the latter in
terms of the PCA of a graph, and to select the appropriate dimension of the associated embedded
metric space;
We derive a unit hyper-sphere normalization for the commute-time embedding that allows us to register
two shapes with different samplings;
We propose a novel method to find the eigenvalue-eigenvector ordering and the eigenvector sign using the
eigensignature (histogram) which is invariant to the isometric shape deformations and fits well in
the spectral graph matching framework, and
we present a probabilistic shape matching formulation using an expectation maximization
point registration algorithm which alternates between aligning the eigenbases and finding a vertex-to-vertex assignment.
%\end{abstract}

Download PDF (3.4 Mb)
BibTex & more information