论文标题
均匀立方B-Spline位移场的分析固定框架的广义框架
A Generalized Framework for Analytic Regularization of Uniform Cubic B-spline Displacement Fields
论文作者
论文摘要
图像注册是一个固有的不良问题,缺乏在要注册的两个图像的体素之间进行唯一映射所需的约束。因此,必须将注册正规化以实现身体有意义的变换。正则惩罚通常是位移矢量场的衍生物的函数,可以在分析或数值上计算。但是,数值方法在计算上取决于图像大小,因此已经开发了计算有效的分析框架。我们使用立方B-Splines作为注册变换,开发了一个广义的数学框架,该框架支持五个不同的正则化器:扩散,曲率,线性弹性,三阶和总位移。我们通过在准确性方面将每个方法与其数值对应物进行比较来验证我们的方法。我们还提供基准测试结果,表明分析解决方案的运行速度要比基于有限差异的数值实现要快得多 - 最多两个数量级。
Image registration is an inherently ill-posed problem that lacks the constraints needed for a unique mapping between voxels of the two images being registered. As such, one must regularize the registration to achieve physically meaningful transforms. The regularization penalty is usually a function of derivatives of the displacement-vector field, and can be calculated either analytically or numerically. The numerical approach, however, is computationally expensive depending on the image size, and therefore a computationally efficient analytical framework has been developed. Using cubic B-splines as the registration transform, we develop a generalized mathematical framework that supports five distinct regularizers: diffusion, curvature, linear elastic, third-order, and total displacement. We validate our approach by comparing each with its numerical counterpart in terms of accuracy. We also provide benchmarking results showing that the analytic solutions run significantly faster -- up to two orders of magnitude -- than finite differencing based numerical implementations.