Thévenaz P, Ruttimann U E, Unser M
Swiss Fed. Inst. of Technol., Lausanne, Switzerland.
IEEE Trans Image Process. 1998;7(1):27-41. doi: 10.1109/83.650848.
We present an automatic subpixel registration algorithm that minimizes the mean square intensity difference between a reference and a test data set, which can be either images (two-dimensional) or volumes (three-dimensional). It uses an explicit spline representation of the images in conjunction with spline processing, and is based on a coarse-to-fine iterative strategy (pyramid approach). The minimization is performed according to a new variation (ML*) of the Marquardt-Levenberg algorithm for nonlinear least-square optimization. The geometric deformation model is a global three-dimensional (3-D) affine transformation that can be optionally restricted to rigid-body motion (rotation and translation), combined with isometric scaling. It also includes an optional adjustment of image contrast differences. We obtain excellent results for the registration of intramodality positron emission tomography (PET) and functional magnetic resonance imaging (fMRI) data. We conclude that the multiresolution refinement strategy is more robust than a comparable single-stage method, being less likely to be trapped into a false local optimum. In addition, our improved version of the Marquardt-Levenberg algorithm is faster.
我们提出了一种自动亚像素配准算法,该算法可使参考数据集与测试数据集之间的均方强度差异最小化,其中测试数据集可以是图像(二维)或体数据(三维)。它使用图像的显式样条表示并结合样条处理,并且基于从粗到精的迭代策略(金字塔方法)。最小化是根据用于非线性最小二乘优化的Marquardt-Levenberg算法的新变体(ML*)进行的。几何变形模型是全局三维(3-D)仿射变换,可选择限制为刚体运动(旋转和平移),并结合等距缩放。它还包括图像对比度差异的可选调整。我们在模态内正电子发射断层扫描(PET)和功能磁共振成像(fMRI)数据的配准方面取得了优异的结果。我们得出结论,多分辨率细化策略比类似的单阶段方法更稳健,不太可能陷入虚假的局部最优。此外,我们改进版的Marquardt-Levenberg算法更快。