Szmul Adam, Papież Bartłomiej W, Hallack Andre, Grau Vicente, Schnabel Julia A
Institute of Biomedical Engineering, Department of Engineering Science, University of Oxford, UK.
Department of Biomedical Engineering, School of Biomedical Engineering and Imaging Sciences, King's College London, UK.
J Electron Imaging. 2017 Oct 4;26(6). doi: 10.1117/1.JEI.26.6.061607.
In this work we propose to combine a supervoxel-based image representation with the concept of graph cuts as an efficient optimization technique for 3D deformable image registration. Due to the pixels/voxels-wise graph construction, the use of graph cuts in this context has been mainly limited to 2D applications. However, our work overcomes some of the previous limitations by posing the problem on a graph created by adjacent supervoxels, where the number of nodes in the graph is reduced from the number of voxels to the number of supervoxels. We demonstrate how a supervoxel image representation, combined with graph cuts-based optimization can be applied to 3D data. We further show that the application of a relaxed graph representation of the image, followed by guided image filtering over the estimated deformation field, allows us to model 'sliding motion'. Applying this method to lung image registration, results in highly accurate image registration and anatomically plausible estimations of the deformations. Evaluation of our method on a publicly available Computed Tomography lung image dataset (www.dir-lab.com) leads to the observation that our new approach compares very favorably with state-of-the-art in continuous and discrete image registration methods achieving Target Registration Error of 1.16mm on average per landmark.
在这项工作中,我们提议将基于超体素的图像表示与图割概念相结合,作为一种用于三维可变形图像配准的高效优化技术。由于是逐像素/体素构建图,在这种情况下图割的应用主要限于二维应用。然而,我们的工作通过在由相邻超体素创建的图上提出问题,克服了一些先前的限制,其中图中的节点数量从体素数量减少到超体素数量。我们展示了如何将超体素图像表示与基于图割的优化相结合应用于三维数据。我们进一步表明,对图像应用松弛的图表示,然后对估计的变形场进行引导图像滤波,使我们能够对“滑动运动”进行建模。将此方法应用于肺部图像配准,可实现高度精确的图像配准以及对变形的解剖学上合理的估计。在一个公开可用的计算机断层扫描肺部图像数据集(www.dir-lab.com)上对我们的方法进行评估,结果表明我们的新方法与连续和离散图像配准方法中的最先进方法相比具有很大优势,每个地标点的平均目标配准误差为1.16毫米。