Annu Int Conf IEEE Eng Med Biol Soc. 2016 Aug;2016:5616-5619. doi: 10.1109/EMBC.2016.7592000.
Tooth segmentation on dental model is an essential step of computer-aided-design systems for orthodontic virtual treatment planning. However, efficiently identifying cutting boundary to separate tooth from dental model still remains a challenge, due to various geometrical shapes of teeth, complex tooth arrangements and varying degrees of crowding problem. Most segmentation approaches presented before are not able to achieve a balance between fine segmentation results and simple operating procedure. In this article, we present a novel and efficient framework that achieves tooth segmentation based on the segmentation field. Specially, the candidate cutting boundaries are able to be detected from the concave regions with large variations of field data. The sensitivity to concave seams of segmentation field facilitates effective tooth partition, as well as avoids obtaining appropriate curvature threshold value, which is unreliable in some case. The experiments indicate that, our tooth segmentation algorithm is robust to different dental models with severe crowding problems and poor distinction.
牙齿模型上的牙齿分割是正畸虚拟治疗计划计算机辅助设计系统的关键步骤。然而,由于牙齿的各种几何形状、复杂的牙齿排列以及不同程度的拥挤问题,有效识别切割边界以将牙齿与牙齿模型分离仍然是一个挑战。之前提出的大多数分割方法都无法在精细的分割结果和简单的操作过程之间取得平衡。在本文中,我们提出了一种基于分割场实现牙齿分割的新颖高效框架。具体而言,候选切割边界能够从场数据变化较大的凹面区域中检测出来。分割场对凹缝的敏感性有助于有效地分割牙齿,同时避免获取在某些情况下不可靠的适当曲率阈值。实验表明,我们的牙齿分割算法对于存在严重拥挤问题和区分度差的不同牙齿模型具有鲁棒性。