Graph Cuts Segmentation with Statistical Shape Priors for Medical Images

Jie Zhu-Jacquot, R. Zabih
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引用次数: 24

Abstract

Segmentation of medical images is an important step in many clinical and diagnostic imaging applications. Medical images present many challenges for automated segmentation including poor contrast at tissue boundaries. Traditional segmentation methods based solely on information from the image do not work well in such cases. Statistical shape information for objects in medical images are easy to obtain. In this paper, we propose a graph cuts-based segmentation method for medical images that incorporates statistical shape priors to increase robustness. Our proposed method is able to deal with complex shapes and shape variations while taking advantage of the globally efficient optimization by graph cuts. We demonstrate the effectiveness of our method on kidney images without strong boundaries.
基于统计形状先验的医学图像图切割分割
医学图像的分割是许多临床和诊断成像应用的重要步骤。医学图像的自动分割面临许多挑战,包括组织边界对比度差。传统的仅基于图像信息的分割方法在这种情况下不能很好地工作。医学图像中物体的统计形状信息很容易获得。在本文中,我们提出了一种基于图切割的医学图像分割方法,该方法结合了统计形状先验来提高鲁棒性。我们提出的方法能够处理复杂的形状和形状变化,同时利用图形切割的全局高效优化。我们证明了该方法在无强边界的肾脏图像上的有效性。
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