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An Automatic Method for Lung Segmentation in Thin Slice Computed Tomography Based on Random Walks

机译:基于随机游动的薄片计算机断层扫描中肺分割的自动方法

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摘要

In this paper, a prior knowledge guided random walks is proposed. We combine the entropy rate superpixels with dyadic discrete wavelet transform to automatic obtain the coarse area of seeds and non-seeds by rapidly accounting the location of the lung parenchyma and the background in the anatomy. After random walks performed, a curvature-based approach is followed for amending the segmented lung contour. Experiments on a validation database consisting of 23 chest CT scans suggested that the proposed method was superior to other similar methods for lung segmentation on CT scans.
机译:本文提出了一种先验知识指导的随机游动。我们通过快速计算肺实质的位置和背景在解剖学中的结合,将熵率超像素与二元离散小波变换相结合,以自动获得种子和非种子的粗糙区域。随机行走之后,采用基于曲率的方法来修改分割的肺部轮廓。在由23个胸部CT扫描组成的验证数据库上进行的实验表明,该建议的方法优于其他类似的CT扫描肺分割方法。

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