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A variational model for thin structure segmentation based on a directional regularization

机译:基于方向正则化的薄结构分割变分模型

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Tubular structure segmentation is an important task, with many applications in medical image analysis such as vessel segmentation both in 2D and 3D. However, this task is challenging due to the spatial sparsity of these objects, implying a high sensitivity to noise. An important cue in this context is the local orientation of the tubular structures. Using this information, it is possible to regularize the structures without destroying its integrity. In this article, we take advantage of recent advances in orientation estimation to propose a directional regularization prior for tubular structures, suitable for use in a variational framework. We illustrate on both synthetic and 2D real data.
机译:管状结构分割是一项重要的任务,在医学图像分析中有许多应用,例如2D和3D中的血管分割。然而,由于这些物体的空间稀疏性,因此该任务具有挑战性,这意味着对噪声的高度敏感性。在这种情况下,重要的提示是管状结构的局部取向。使用此信息,可以在不破坏其完整性的情况下对结构进行正则化。在本文中,我们利用方向估计的最新进展为管状结构提出了适用于变型框架的定向正则化方法。我们以合成和2D真实数据为例进行说明。

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