Segmentation and Feature Extraction of Panoramic Dental X-Ray Images

Pedro H. M. Lira, G. Giraldi, L. A. P. Neves
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引用次数: 14

Abstract

Automating the process of analysis of Panoramic X-Ray images is important to help dentist procedures and diagnosis. Tooth segmentation from the radiographic images and feature extraction are essential steps. The authors propose a segmentation approach based on mathematical morphology, quadtree decomposition for mask generation, thresholding, and snake models. The feature extraction stage is steered by a shape model based on Principal Component Analysis (PCA). First, the authors take the quadtree decomposition of a low-pass version of the original image and select the smallest blocks to generate a mask. Then, the original image is processed by Otsu’s thresholding. The result is improved by morphological operators and the quadtree mask is applied to address overlapping, a common problem in X-ray images. The obtained regions are searched and the larger ones are selected to find tooth candidates. The boundary of the obtained regions are extracted and aligned with the shape model in order to recognize the target tooth (molar). The selected curve is used in a search method to initialize a snake technique. Finally, morphometric data extraction is performed to obtain tooth measurements for dentist diagnosis. Experiments show the advantages of the proposed method to extract teeth from X-Ray images and discuss its drawbacks.
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牙科全景x射线图像的分割与特征提取
全景x射线图像的自动化分析过程对牙医的手术和诊断非常重要。从放射图像中分割牙齿和提取特征是必不可少的步骤。作者提出了一种基于数学形态学、四叉树分解生成掩模、阈值分割和蛇模型的分割方法。特征提取阶段由基于主成分分析(PCA)的形状模型指导。首先,作者对原始图像的低通版本进行四叉树分解,并选择最小的块生成掩码。然后,对原始图像进行otsu阈值分割处理。利用形态学算子改进了结果,并利用四叉树掩模解决了x射线图像中常见的重叠问题。搜索得到的区域,并选择较大的区域来寻找候选牙齿。提取得到的区域边界并与形状模型对齐,以识别目标牙(臼齿)。所选曲线在搜索方法中用于初始化蛇形技术。最后,进行形态测量数据提取以获得牙齿的测量值以供牙医诊断。实验证明了该方法在x射线图像中提取牙齿的优点,并讨论了其不足之处。
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