Automatic dental CT image segmentation using mean shift algorithm

Parinaz Mortaheb, M. Rezaeian, H. Soltanian-Zadeh
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引用次数: 15

Abstract

Identifying the structure and arrangement of the teeth is one of the dentists' requirements for performing various procedures such as diagnosing abnormalities, dental implant and orthodontic planning. In this regard, robust segmentation of dental Computerized Tomography (CT) images is required. However, dental CT images present some major challenges for the segmentation that make it difficult process. In this research, we propose a multi-step approach for automatic segmentation of the teeth in dental CT images. The main steps of this method are presented as follows: 1-Primary segmentation to classify bony tissues from nonbony tissues. 2-Separating the general region of the teeth structure from the other bony structures and arc curve fitting in the region. 3-Individual tooth region detection. 4-Final segmentation using mean shift algorithm by defining a new feature space. The proposed algorithm has been applied to several Cone Beam Computed Tomography (CBCT) data sets and quality assessment metrics are used to evaluate the performance of the algorithm. The evaluation indicates that the accuracy of proposed method is more than 97 percent. Moreover, we compared the proposed method with thresholding, watershed, level set and active contour methods and our method shows an improvement in compare with other techniques.
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基于均值移位算法的牙科CT图像自动分割
识别牙齿的结构和排列是牙医进行各种程序(如诊断异常、种植牙和计划正畸)的其中一项要求。在这方面,需要对牙科计算机断层扫描(CT)图像进行鲁棒分割。然而,牙科CT图像的分割存在一些主要的挑战,使其难以处理。在本研究中,我们提出了一种多步骤的牙齿CT图像自动分割方法。该方法的主要步骤如下:1 .对骨组织和非骨组织进行初级分割。2 .将牙齿结构的一般区域与其他骨骼结构分开,并在该区域进行弧线拟合。3 .单个牙齿区域检测。4 .最后通过定义新的特征空间,使用均值移位算法进行分割。该算法已应用于多个锥形束计算机断层扫描(CBCT)数据集,并使用质量评估指标来评估算法的性能。评价结果表明,该方法的准确率可达97%以上。将该方法与阈值法、分水岭法、水平集法和活动轮廓法进行了比较,结果表明,该方法与其他方法相比有较大的改进。
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