Hidden Markov Random Field and Frame Modelling for TCA Image Analysis

Katy Streso, F. Lagona
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引用次数: 3

Abstract

Tooth Cementum Annulation (TCA) is an age estimation method carried out on thin cross sections of the root of the human tooth. Age is computed by adding the tooth eruption age to the count of annual incremental lines which are called tooth rings and appear in the cementum band. Algorithms to denoise and segment the digital image of the tooth section are considered a crucial step towards computer-assisted TCA. The approach in this paper relies on modelling the images as hidden Markov random fields, where gray values are assumed to be pixelwise conditionally independent and normally distributed, given a hidden random field of labels. These unknown labels have to be estimated to segment the image. To account for long-range dependence among the observed values and for periodicity in the placement of tooth rings, the Gibbsian label distribution is specified by a potential function that incorporates macro-features of the TCA image (a FRAME model). An estimation of the model parameters is made by an EM algorithm exploiting the mean field approximation of the label distribution. Segmentation is based on the predictive distribution of the labels given the observed gray values.
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隐马尔可夫随机场和帧建模的TCA图像分析
牙骨质环形术(TCA)是一种在人类牙根的薄横截面上进行年龄估计的方法。年龄的计算方法是将出牙年龄加到牙骨质带中出现的年度增量线(称为牙环)的数量上。对数字图像进行去噪和分割的算法被认为是计算机辅助TCA的关键一步。本文的方法依赖于将图像建模为隐藏的马尔可夫随机场,其中灰度值被假设为像素上条件独立且正态分布,给定一个隐藏的标签随机场。为了分割图像,必须对这些未知标签进行估计。为了考虑观测值之间的长期依赖关系和齿环放置的周期性,gibbs标签分布由包含TCA图像宏观特征的势函数(FRAME模型)指定。利用标签分布的平均场近似,利用EM算法对模型参数进行估计。分割是基于给定观察到的灰度值的标签的预测分布。
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Hidden Markov Random Field and Frame Modelling for TCA Image Analysis
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