一种改进的距离正则化水平集模型用于CT图像肝脏分割

Nuseiba M. Altarawneh, S. Luo, B. Regan, Changming Sun
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引用次数: 14

摘要

从医学图像中分割器官是一个活跃而有趣的研究领域。肝脏的分割比其他器官的分割更具挑战性和难度。在本文中,我们演示了一种用于计算机断层图像的肝脏分割方法。我们通过部署新的气球力来重新审视距离正则化水平集(DRLS)模型。这些力控制着演化的方向,减缓了弱边或无边区域的演化过程。新增加的气球力阻止不断变化的轮廓超出肝脏边界或在与弱边缘相关或没有边缘的区域泄漏。实验结果表明,该方法具有较好的分割效果。与原始的DRLS模型相比,我们的模型在处理过度分割问题上更加有效。
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A Modified Distance Regularized Level Set Model for Liver Segmentation from CT Images
Segmentation of organs from medical images is an active and interesting area of research. Liver segmentation incurs more challenges and difficulties compared with segmentation of other organs. In this paper we demonstrate a liver segmentation method for computer tomography images. We revisit the distance regularization level set (DRLS) model by deploying new balloon forces. These forces control the direction of the evolution and slow down the evolution process in regions that are associated with weak or without edges. The newly added balloon forces discourage the evolving contour from exceeding the liver boundary or leaking at a region that is associated with a weak edge, or does not have an edge. Our experimental results confirm that the method yields a satisfactory overall segmentation outcome. Comparing with the original DRLS model, our model is proven to be more effective in handling oversegmentation problems.
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