自动检测和量化口腔内相机捕获的早期龋齿病变图像

Jiayong Yan, Yongjia Xiang, X. Jian
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引用次数: 4

摘要

近年来,基于口腔内相机捕获的白光和/或荧光图像来量化早期龋齿病变的严重程度已成为龋齿研究领域的热点。为了量化早期龋病的严重程度,首先需要对龋病进行准确的检测和分割。然而,迄今为止,已发表的方法主要基于阈值技术,由于牙齿强度变化较大,难以获得理想的结果。针对这一问题,本文提出了一种基于口腔内口腔照相机捕获的龋图像局部强度和形态特征,采用形态学顶帽/底帽法结合多分辨率表面重建技术,对早期龋病进行自动检测和量化的算法。在离体数据上的初步实验结果证明了该算法的潜力。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Automated detection and quantification of early caries lesions on images captured by intraoral camera
In recent years, quantifying the severity of early caries lesions based on white light and/or fluorescence images captured by intraoral camera has been becoming a hot spot in caries research field. In order to quantify the severity of the early caries lesions, it needs to detect and segment the caries lesions accurately first. However, to date, the published methods are mainly based on threshold techniques, and it is difficult to obtain desirable results because the intensity of the teeth changes significantly. To solve this problem, this paper presents an automated detection and quantification algorithm by using a morphological top-hat/bottom-hat method along with a multi-resolution surface reconstruction technique, which is based on local intensity and morphological characteristics of caries images captured by the intraoral oral camera, for early caries lesions. The preliminary experimental results on ex vivo data demonstrated the potential of the proposed algorithm.
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