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Lung Segmentation Based on Customized Active Shape Model from Digital Radiography Chest Images

机译:基于自定义活动形状模型的数字X线胸腔图像肺分割

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摘要

In this paper, a customized active shape model to extract lungs from radiography chest images was proposed and validated. Firstly, the average active shape model, gray-scale projection and affine registration were employed to attain the initial lung contours. Secondly, a new objective function with constraints of distance and edge was proposed to push the vertices of active shape model to the real lung edge, pull the vertices out of the stomach gas regions, and have a more balanced distance distribution of vertices. Finally, multi-resolution representation and optimization were employed to attain fast optimization. Experimental results on a public database of 247 images showed that the proposed algorithm could achieve an average accuracy of 94.7%, which is 4.4% better than the traditional active shape model and 2.7% better than the active shape model with local invariant features.
机译:在本文中,提出并验证了一种定制的主动形状​​模型以从X射线摄影胸部图像中提取肺部。首先,使用平均活动形状模型,灰度投影和仿射配准来获得初始肺轮廓。其次,提出了一个受距离和边缘约束的新目标函数,将活动形状模型的顶点推到真实的肺边缘,将顶点拉出胃气区域,使顶点的距离分布更加平衡。最后,采用多分辨率表示和优化来实现快速优化。在247张图像的公共数据库上的实验结果表明,该算法可实现94.7%的平均准确度,比传统的主动形状​​模型高4.4%,比具有局部不变特征的主动形状​​模型高2.7%。

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