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Graph Cuts-Based Registration Revisited: A Novel Approach for Lung Image Registration Using Supervoxels and Image-Guided Filtering

机译:再次探讨基于图割的配准:一种使用超体素和图像引导滤波进行肺部图像配准的新方法

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This work revisits the concept of graph cuts as an efficient optimization technique in image registration. Previously, due to the computational burden involved, the use of graph cuts in this context has been mainly limited to 2D applications. Here we show how combining graph cuts with supervoxels, resulting in a sparse, yet meaningful graph-based image representation, can overcome previous limitations. Additionally, we show that a relaxed graph representation of the image allows for 'sliding' motion modeling and provides anatomically plausible estimation of the deformations. This is achieved by using image-guided filtering of the estimated sparse deformation field. We evaluate our method on a publicly available CT lung data set and show that our new approach compares very favourably with state-of-the-art in continuous and discrete image registration.
机译:这项工作重新审视了图形切割的概念,将其作为一种有效的图像配准优化技术。以前,由于涉及计算量,因此在这种情况下使用图割主要仅限于2D应用程序。在这里,我们展示了如何将图割与超级体素相结合,从而获得一种稀疏而又有意义的基于图的图像表示方法,从而能够克服以前的局限性。此外,我们显示出图像的轻松图形表示允许“滑动”运动建模,并提供变形的解剖学上合理的估计。这是通过对估计的稀疏形变场进行图像引导滤波来实现的。我们在可公开获得的CT肺数据集上评估了我们的方法,并表明我们的新方法在连续和离散图像配准方面与最新技术相比具有非常好的优势。

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