通过减少嗜中性转换的不确定性,改进肺血管树的分割

Shuo-Tsung Chen, Daniel Lee
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引用次数: 1

摘要

医学图像处理领域的大多数应用都需要精确的估计。在计算机断层血管成像(CTA)中,高效、自动的图像分割方法有助于血管的分离和可视化。目前已经提出了许多血管分割的方法。为了实现这一目标,本工作旨在通过降低三维Frangi滤波和三维嗜中性变换的不确定性来改进肺血管树的分割。首先,主要采用灰度阈值法和一些形态学处理对肺区域进行分割。其次,应用三维弗朗吉滤波检测肺血管树。最后,将三维嗜中性变换与k-means聚类相结合,得到更好的肺血管树检测结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Improving the segmentation of lung vessel trees by reducing the uncertainty in neutrosophic transform
Most applications in the field of medical image processing require precise estimation. Efficient and automatic image segmentation methods are useful for the isolation and visualization of vessels in computed tomographic angiography (CTA). There have been many methods proposed for the segmentation of vessels. To achieve this goal, this work aims to improve the segmentation of lung vessel trees by reducing the uncertainty in 3D Frangi filter and 3D neutrosophic transform. First of all, gray-level thresholding and some morphological processes are applied to have the segmentation of lung region mainly. Next, 3D Frangi filter is applied to detect lung vessel trees. Finally, 3D neutrosophic transform integrated with k-means clustering obtains better detection of lung vessel trees.
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