DocumentCode
108964
Title
FOCUSR: Feature Oriented Correspondence Using Spectral Regularization--A Method for Precise Surface Matching
Author
Lombaert, H. ; Grady, L. ; Polimeni, Jonathan R. ; Cheriet, Farida
Author_Institution
Centre for Intell. Machines, McGill Univ., Montreal, QC, Canada
Volume
35
Issue
9
fYear
2013
fDate
Sept. 2013
Firstpage
2143
Lastpage
2160
Abstract
Existing methods for surface matching are limited by the tradeoff between precision and computational efficiency. Here, we present an improved algorithm for dense vertex-to-vertex correspondence that uses direct matching of features defined on a surface and improves it by using spectral correspondence as a regularization. This algorithm has the speed of both feature matching and spectral matching while exhibiting greatly improved precision (distance errors of 1.4 percent). The method, FOCUSR, incorporates implicitly such additional features to calculate the correspondence and relies on the smoothness of the lowest-frequency harmonics of a graph Laplacian to spatially regularize the features. In its simplest form, FOCUSR is an improved spectral correspondence method that nonrigidly deforms spectral embeddings. We provide here a full realization of spectral correspondence where virtually any feature can be used as an additional information using weights on graph edges, but also on graph nodes and as extra embedded coordinates. As an example, the full power of FOCUSR is demonstrated in a real-case scenario with the challenging task of brain surface matching across several individuals. Our results show that combining features and regularizing them in a spectral embedding greatly improves the matching precision (to a submillimeter level) while performing at much greater speed than existing methods.
Keywords
brain; graph theory; image matching; medical image processing; FOCUSR; brain surface matching; computational efficiency; dense vertex-to-vertex correspondence; feature matching; feature oriented correspondence using spectral regularization; graph edges; graph nodes; improved spectral correspondence method; precise surface matching; spectral matching; Brain; Computational modeling; Harmonic analysis; Laplace equations; Shape; Spectral analysis; Surface treatment; Registration; graph theory; spectral methods; surface fitting; Algorithms; Animals; Brain; Databases, Factual; Horses; Humans; Image Processing, Computer-Assisted; Models, Theoretical; Software; Surface Properties;
fLanguage
English
Journal_Title
Pattern Analysis and Machine Intelligence, IEEE Transactions on
Publisher
ieee
ISSN
0162-8828
Type
jour
DOI
10.1109/TPAMI.2012.276
Filename
6399477
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