Yap Pew-Thian, Wu Guorong, Zhu Hongtu, Lin Weili, Shen Dinggang
Department of Radiology, University of North Carolina at Chapel Hill, NC, USA.
Med Image Comput Comput Assist Interv. 2009;12(Pt 1):721-9. doi: 10.1007/978-3-642-04268-3_89.
We propose a novel algorithm, called Fast Tensor Image Morphing for Elastic Registration or F-TIMER. F-TIMER leverages multiscale tensor regional distributions and local boundaries for hierarchically driving deformable matching of tensor image volumes. Registration is achieved by aligning a set of automatically determined structural landmarks, via solving a soft correspondence problem. Based on the estimated correspondences, thin-plate splines are employed to generate a smooth, topology preserving, and dense transformation, and to avoid arbitrary mapping of non-landmark voxels. To mitigate the problem of local minima, which is common in the estimation of high dimensional transformations, we employ a hierarchical strategy where a small subset of voxels with more distinctive attribute vectors are first deployed as landmarks to estimate a relatively robust low-degrees-of-freedom transformation. As the registration progresses, an increasing number of voxels are permitted to participate in refining the correspondence matching. A scheme as such allows less conservative progression of the correspondence matching towards the optimal solution, and hence results in a faster matching speed. Results indicate that better accuracy can be achieved by F-TIMER, compared with other deformable registration algorithms, with significantly reduced computation time cost of 4-14 folds.
我们提出了一种名为快速张量图像变形弹性配准算法(Fast Tensor Image Morphing for Elastic Registration,简称F-TIMER)。F-TIMER利用多尺度张量区域分布和局部边界,分层驱动张量图像体积的可变形匹配。通过解决软对应问题,对齐一组自动确定的结构地标来实现配准。基于估计的对应关系,采用薄板样条生成平滑、保持拓扑结构且密集的变换,避免非地标体素的任意映射。为了缓解高维变换估计中常见的局部极小值问题,我们采用了一种分层策略,首先将具有更独特属性向量的一小部分体素作为地标来估计相对稳健的低自由度变换。随着配准的进行,允许越来越多的体素参与细化对应匹配。这样的方案使得对应匹配朝着最优解的进展不那么保守,从而提高了匹配速度。结果表明,与其他可变形配准算法相比,F-TIMER能够实现更高的精度,同时显著降低计算时间成本,降幅达4至14倍。