A generic probabilistic active shape model for organ segmentation

Wimmer A, Soza G, Hornegger J (2009)


Publication Type: Authored book, Volume of book series

Publication year: 2009

Journal

Original Authors: Wimmer A., Soza G., Hornegger J.

Publisher: Springer-verlag

City/Town: Berlin Heidelberg

Book Volume: null

Pages Range: 26-33

Event location: London

Journal Issue: null

ISBN: 3-642-04270-8

DOI: 10.1007/978-3-642-04271-3_4

Abstract

Probabilistic models are extensively used in medical image segmentation. Most of them employ parametric representations of densities and make idealizing assumptions, e.g. normal distribution of data. Often, such assumptions are inadequate and limit a broader application. We propose here a novel probabilistic active shape model for organ segmentation, which is entirely built upon non-parametric density estimates. In particular, a nearest neighbor boundary appearance model is complemented by a cascade of boosted classifiers for region information and combined with a shape model based on Parzen density estimation. Image and shape terms are integrated into a single level set equation. Our approach has been evaluated for 3-D liver segmentation using a public data base originating from a competition (http://sliver07.org). With an average surface distance of 1.0 mm and an average volume overlap error of 6.5 %, it outperforms other automatic methods and provides accuracy close to interactive ones. Since no adaptions specific to liver segmentation have been made, our probabilistic active shape model can be applied to other segmentation tasks easily. © 2009 Springer-Verlag.

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How to cite

APA:

Wimmer, A., Soza, G., & Hornegger, J. (2009). A generic probabilistic active shape model for organ segmentation. Berlin Heidelberg: Springer-verlag.

MLA:

Wimmer, Andreas, Grzegorz Soza, and Joachim Hornegger. A generic probabilistic active shape model for organ segmentation. Berlin Heidelberg: Springer-verlag, 2009.

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