A New Approach to Teeth Segmentation

Nourdin Al-sherif, G. Guo, H. Ammar
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引用次数: 21

Abstract

Teeth segmentation is one of the important components in building an Automated Dental Identification System (ADIS). The extraction of the teeth from their corresponding dental radiographs is called teeth segmentation. Dental radiographs may suffer from poor teeth image quality, low contrast and uneven exposure that complicate the task of teeth segmentation. To achieve a good performance in segmentation, the teeth images are preprocessed by a two-step thresholding technique, which starts with an iterative thresholding followed by an adaptive thresholding to binarize the teeth images. Then, we propose to adapt the seam carving technique on the binary images, using both horizontal and vertical seams, to separate each individual tooth. The proposed method is evaluated experimentally and compared to other algorithms. The results show that our new approach achieves the lowest failure rate among all existing methods, and the highest optimality among all of the fully automated approaches reported in the literature.
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一种新的牙齿分割方法
牙齿分割是构建牙齿自动识别系统(ADIS)的重要组成部分。从相应的牙科x光片中提取牙齿称为牙齿分割。牙齿x光片可能会受到牙齿图像质量差,对比度低和曝光不均匀的影响,从而使牙齿分割任务复杂化。为了获得良好的分割效果,采用两步阈值预处理技术对牙齿图像进行预处理,首先进行迭代阈值预处理,然后进行自适应阈值预处理,对牙齿图像进行二值化处理。然后,我们提出将缝雕刻技术应用于二值图像,利用水平和垂直的接缝来分离每个单独的牙齿。实验验证了该方法的有效性,并与其他算法进行了比较。结果表明,我们的新方法在所有现有方法中达到了最低的故障率,并且在所有文献中报道的全自动方法中达到了最高的最优性。
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