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首页> 外文期刊>Journal of medical systems >HOSVD-Based 3D Active Appearance Model: Segmentation of Lung Fields in CT Images
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HOSVD-Based 3D Active Appearance Model: Segmentation of Lung Fields in CT Images

机译:基于HOSVD的3D活动外观模型:CT图像中肺野的分割

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摘要

An Active Appearance Model (AAM) is a computer vision model which can be used to effectively segment lung fields in CT images. However, the fitting result is often inadequate when the lungs are affected by high-density pathologies. To overcome this problem, we propose a Higher-order Singular Value Decomposition (HOSVD)-based Three-dimensional (3D) AAM. An evaluation was performed on 310 diseased lungs form the Lung Image Database Consortium Image Collection. Other contemporary AAMs operate directly on patterns represented by vectors, i.e., before applying the AAM to a 3D lung volume, it has to be vectorized first into a vector pattern by some technique like concatenation. However, some implicit structural or local contextual information may be lost in this transformation. According to the nature of the 3D lung volume, HOSVD is introduced to represent and process the lung in tensor space. Our method can not only directly operate on the original 3D tensor patterns, but also efficiently reduce the computer memory usage. The evaluation resulted in an average Dice coefficient of 97.0 % +/- 0.59 %, a mean absolute surface distance error of 1.0403 +/- 0.5716 mm, a mean border positioning errors of 0.9187 +/- 0.5381 pixel, and a Hausdorff Distance of 20.4064 +/- 4.3855, respectively. Experimental results showed that our methods delivered significant and better segmentation results, compared with the three other model-based lung segmentation approaches, namely 3D Snake, 3D ASM and 3D AAM.
机译:活动外观模型(AAM)是一种计算机视觉模型,可用于有效分割CT图像中的肺野。但是,当肺部受到高密度病理的影响时,拟合结果通常不足。为克服此问题,我们提出了一种基于高阶奇异值分解(HOSVD)的三维(3D)AAM。从肺图像数据库联合会图像收集中对310个患病的肺进行了评估。其他当代AAM直接在以矢量表示的模式上运行,即,在将AAM应用于3D肺部容积之前,必须先通过级联等技术将其矢量化为矢量模式。但是,某些隐式结构或本地上下文信息可能会在此转换中丢失。根据3D肺体积的性质,引入HOSVD来表示和处理张量空间中的肺。我们的方法不仅可以直接在原始3D张量模式上运行,而且可以有效地减少计算机内存使用量。评估得出的平均Dice系数为97.0%+/- 0.59%,平均绝对表面距离误差为1.0403 +/- 0.5716 mm,平均边界定位误差为0.9187 +/- 0.5381像素,Hausdorff距离为20.4064 +/- 4.3855。实验结果表明,与其他三种基于模型的肺部分割方法3D Snake,3D ASM和3D AAM相比,我们的方法提供了明显且更好的分割结果。

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