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首页> 外文期刊>Procedia Computer Science >Object Localization improved GrabCut for Lung Parenchyma Segmentation
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Object Localization improved GrabCut for Lung Parenchyma Segmentation

机译:对象定位改进的GrabCut用于肺实质分割

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摘要

This paper proposes an object localization improved GrabCut algorithm for lung parenchyma segmentation. The structure of lung CT images is complicated, to effectively detect lung nodules, accurate extraction of lung parenchyma is an important part of lung nodule detection. The common step in the extraction of lung parenchyma is to segment the image first and then to detect the ROI of the segmented images. This paper proposes an object localization improved GrabCut[14]algorithm for lung parenchyma segmentation that can automatically select the appropriate bounding box that relatives to lung parenchyma, then use GrabCut algorithm in the bounding box to accurately segment lung parenchyma of CT image and provides effective basis for lung nodule detection. It overcomes the disadvantages of traditional GrabCut algorithm selecting bounding box manually. The experimental results show that the proposed algorithm can effectively segment the lung parenchyma of different morphologies and is insensitive to noise.
机译:本文提出了一种用于肺实质分割的目标定位改进的GrabCut算法。肺部CT图像结构复杂,有效检测肺结节,准确提取肺实质是肺结节检测的重要组成部分。提取肺实质的常见步骤是先分割图像,然后检测分割图像的ROI。本文提出了一种用于肺实质分割的对象定位改进的GrabCut [14]算法,可以自动选择与肺实质相关的合适的边界框,然后在边界框中使用GrabCut算法准确分割CT图像的肺实质,并提供有效的依据用于肺结节检测。它克服了传统的GrabCut算法手动选择边界框的缺点。实验结果表明,该算法可以有效分割不同形态的肺实质,并且对噪声不敏感。

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