Statistical Shape Models for 3D Medical Image Segmentation - Softcover

Heimann, Tobias

 
9783639050561: Statistical Shape Models for 3D Medical Image Segmentation

Synopsis

The increasing importance of three-dimensional imaging in medicine leads to a growing demand for volumetric image analysis and automatic segmentation.Due to their robust performance, statistical shape models trained on a collection of example data are especially suited for that purpose.In this book, a three-step procedure for generating these models and employing them for 3D segmentation is presented.The first step is the identification of corresponding landmarks on the example data, required for training the geometric models.The second step consists of modeling the appearance, i.e. gray-value environment, of the object of interest.The final step integrates shape and appearance model into a robust search algorithm to analyze new images.The presented methods were evaluated on three medical applications: segmentation of the liver in CT data, of the lung in MRI data, and of the prostate in ultrasound images.This book is targeted towards graduate students and researchers in biomedical image analysis who want to gain in-depth insight into the field of statistical shape modeling.

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About the Author

Tobias Heimann studied Medical Informatics at the University of Heidelberg. Since 2003, he has been working as research assistant at the department of Medical and Biological Informatics at the German Cancer Research Center. His main areas of interest are automated segmentation of medical images and evaluation of segmentation results.

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