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Local regression based statistical model fitting
ConferencePaper (Artikel, die in Tagungsbänden erschienen sind)
 
ID 489651
Author(s) Amberg, Matthias; Luethi, Marcel; Vetter, Thomas
Author(s) at UniBasel Vetter, Thomas
Lüthi, Marcel
Amberg, Matthias Niklaus
Year 2010
Title Local regression based statistical model fitting
Editor(s) Goesele, M; Roth, S; Kuijper, A; Schiele, B; Schindler, K
Book title (Conference Proceedings) Pattern Recognition : 32nd DAGM Symposium, Darmstadt, Germany, September 22-24, 2010. Proceedings
Volume 6376
Place of Conference Darmstadt, Germany
Year of Conference 2010
Publisher Springer
Place of Publication Berlin
Pages S. 452-461
ISSN/ISBN 978-3-642-15986-2 ; 978-3-642-15985-5
Abstract Fitting statistical models is a widely employed technique for the segmentation of medical images. While this approach gives impressive results for simple structures, shape models are often not flexible enough to accurately represent complex shapes. We present a fitting approach, which increases the model fitting accuracy without requiring a larger training data-set. Inspired by a local regression approach known from statistics, our method fits the full model to a neighborhood around each point of the domain. This increases the model's flexibility considerably without the need to introduce an artificial segmentation of the structure. By adapting the size of the neighborhood from small to large, we can smoothly interpolate between localized fits, which accurately map the data but are more prone to noise, and global fits, which are less flexible but constrained to valid shapes only. We applied our method for the segmentation of teeth from 3D cone-beam et-scans. Our experiments confirm that our method consistently increases the precision of the segmentation result compared to a standard global fitting approach.
Series title Lecture Notes in Computer Science
Number 6376
edoc-URL http://edoc.unibas.ch/dok/A5842378
Full Text on edoc Restricted
Digital Object Identifier DOI 10.1007/978-3-642-15986-2_46
ISI-Number WOS:000288936400046
 
   

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