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Total Variation Regularization of Displacements in Parametric Image Registration

机译:参数图像配准中位移的总变化正则化

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Spatial regularization is indispensable in image registration to avoid both physically implausible displacement fields and potential local minima in optimization methods. Typical ℓ_2-regularization is incapable of correctly recovering non-smooth displacement fields, such as at sliding organ boundaries during time-series of breathing motion. In this paper, Total Variation (TV) regularization is used to allow for accurate registration near such boundaries. We propose a novel formulation of TV-regularization for parametric displacement fields and introduce an efficient and general numerical solution scheme using the Alternating Directions Method of Multipliers (ADMM). Our method has been evaluated on two public datasets of 4D CT lung images as well as a dataset of 4D MR liver images, demonstrating accurate registrations both inside and outside moving organs. The target registration error of our method is 2.56 mm on average in the liver dataset, which indicates an improvement of over 24 % in comparison to other published methods.
机译:空间正则化在图像配准中必不可少,以避免物理上难以置信的位移场和优化方法中可能出现的局部最小值。典型的ℓ_2正则化无法正确恢复非平滑的位移场,例如在呼吸运动的时间序列中的滑动器官边界处。在本文中,总变异(TV)正则化用于允许在此类边界附近进行精确配准。我们提出了一种用于参数位移场的电视正则化的新公式,并介绍了一种使用乘数交替方向法(ADMM)的有效且通用的数值解决方案。我们的方法已在两个4D CT肺部图像公共数据集以及4D MR肝脏图像数据集上进行了评估,证明了在移动器官内外的准确配准。我们方法的目标配准误差在肝脏数据集中平均为2.56 mm,这表明与其他已公开方法相比,改进了24%以上。

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