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Matrix Patterns based Active Appearance Models for Lung CT Segmentation

机译:基于矩阵模式的肺CT分段的主动外观模型

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Segmentation of diseased lungs in CT images is a nontrivial problem. As Active Appearance Model (AAM) has been applied effectively in this field, we propose a new approach for the construction of traditional AAM to segment the lung fields more accurately and efficiently: Matrixes based AAM (MatAAM). MatAAM is based on two-dimensional image matrixes rather one-dimensional vectors. Its appearance matrix does not need to be transformed into a vector prior to computing the appearance parameter. Instead, a covariance matrix is constructed directly using the normalized appearance matrixes and its eigenvectors are derived for the appearance parameter. The experiment results were compared to other landmark-based methods: Snake, Active Shape Model (ASM), AAM and several modified versions of them. For segmentation of lungs especially diseased lungs, MatAAM performed a superior result in both precision and efficiency.
机译:CT图像中患病肺的分割是一个非活动问题。作为主动外观模型(AAM)已经有效应用于该领域,我们提出了一种新的方法,用于建造传统的AAM以更准确,有效地将肺部段分割:基于矩阵的AAM(MATAAM)。 Mataam基于二维图像矩阵相当一维矢量。在计算外观参数之前,不需要将其外观矩阵转换为向量。相反,使用归一化外观矩阵直接构造协方差矩阵,并且其特征向量被导出用于外观参数。将实验结果与其他基于地标的方法进行比较:蛇,有源形状模型(ASM),AAM和其中几种修改版本。对于肺部的分割,特别是患病肺,Mataam在精度和效率方面进行了优异的结果。

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