Author
Listed:
- Xutang Zhang
- Xiaofeng Chen
- Yan Liu
- Bo Han
- Ting Zhuang
- Wangmeng Zuo
Abstract
In order to extract the pixels of teeth from 3D Cone Beam Computed Tomography (CBCT) image, in this paper, a novel 3D segmentation approach based on deformable surface mode is developed for 3D tooth model reconstruction. Different forces are formulated to handle the segmentation problem by using different strategies. First, the proposed method estimates the deformation force of vertex model by simulating the deformation process of a bubble under the action of internal pressure and external force field. To handle the blurry boundary, a “braking force” is proposed deriving from the 3D gradient information calculated by transforming the Sobel operator into three-dimension representation. In addition, a “border reinforcement” strategy is developed for handling the cases with complicate structures. Moreover, the proposed method combines affine cell image decomposition (ACID) grid reparameterization technique to handle the unstable changes of topological structure and deformability during the deformation process. The proposed method was performed on 510 CBCT images. To validate the performance, the results were compared with those of two other well-studied methods. Experimental results show that the proposed approach had a good performance in handling the cases with complicate structures and blurry boundaries well, is effective to converge, and can successfully achieve the reconstruction task of various types of teeth in oral cavity.
Suggested Citation
Xutang Zhang & Xiaofeng Chen & Yan Liu & Bo Han & Ting Zhuang & Wangmeng Zuo, 2016.
"An Effective Approach of Teeth Segmentation within the 3D Cone Beam Computed Tomography Image Based on Deformable Surface Model,"
Mathematical Problems in Engineering, Hindawi, vol. 2016, pages 1-10, January.
Handle:
RePEc:hin:jnlmpe:9505217
DOI: 10.1155/2016/9505217
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