Fully automatic shape constrained mandible segmentation from cone-beam CT data

Cone-beam CT images are useful in operative dentistry but suffer from a comparatively bad image quality with regard to the signal-to-noise ratio. Therefore, we use a statistical shape model (SSM) for robust segmentation of the mandible. In contrast to previous approaches, our method (i) is fully automatic in terms of both, the establishment of correspondence and the segmentation itself, and (ii) allows for leaving the learned principal subspace. By this means, we attain a segmentation accuracy equal to the current reference work on SSM based mandible segmentation whereas our training population is 3.5 times smaller. An important reason therefor is the establishment of correspondence by optimizing a modelbased cost function. Our results indicate that SSMs with optimized correspondence can help to improve segmentation accuracy compared to alternative approaches, thus accounting for the first time for the importance of correspondence optimization in an application for image segmentation.

[1]  Mariano Alcañiz Raya,et al.  Automatic Segmentation of Jaw Tissues in CT Using Active Appearance Models and Semi-automatic Landmarking , 2006, MICCAI.

[2]  Stefan Wesarg,et al.  Optimal Initialization for 3D Correspondence Optimization: An Evaluation Study , 2011, IPMI.

[3]  Stefan Zachow,et al.  Automatic Extraction of Mandibular Nerve and Bone from Cone-Beam CT Data , 2009, MICCAI.

[4]  Martin Styner,et al.  Evaluation of 3D Correspondence Methods for Model Building , 2003, IPMI.

[5]  Stefan Wesarg,et al.  Active shape models unleashed , 2011, Medical Imaging.

[6]  Timothy F. Cootes,et al.  Active Shape Models-Their Training and Application , 1995, Comput. Vis. Image Underst..

[7]  Berthold K. P. Horn,et al.  Closed-form solution of absolute orientation using unit quaternions , 1987 .

[8]  Christopher J. Taylor,et al.  Automatic construction of eigenshape models by direct optimization , 1998, Medical Image Anal..

[9]  Yogesh Rathi,et al.  A Framework for Image Segmentation Using Shape Models and Kernel Space Shape Priors , 2008, IEEE Transactions on Pattern Analysis and Machine Intelligence.

[10]  Guido Gerig,et al.  Parametrization of Closed Surfaces for 3-D Shape Description , 1995, Comput. Vis. Image Underst..

[11]  Alex Pentland,et al.  Probabilistic Visual Learning for Object Representation , 1997, IEEE Trans. Pattern Anal. Mach. Intell..

[12]  Hans-Peter Meinzer,et al.  3D Active Shape Models Using Gradient Descent Optimization of Description Length , 2005, IPMI.

[13]  Jorge Nocedal,et al.  On the limited memory BFGS method for large scale optimization , 1989, Math. Program..

[14]  Paul J. Besl,et al.  A Method for Registration of 3-D Shapes , 1992, IEEE Trans. Pattern Anal. Mach. Intell..

[15]  Hans-Peter Meinzer,et al.  Statistical shape models for 3D medical image segmentation: A review , 2009, Medical Image Anal..