Kim Minjeong, Wu Guorong, Wang Qian, Lee Seong-Whan, Shen Dinggang
Department of Radiology and BRIC, University of North Carolina at Chapel Hill, NC 27599, USA.
Med-X Research Institute, School of Biomedical Engineering, Shanghai Jiao Tong University, Shanghai 200030, China.
Neuroimage. 2015 Jan 15;105:257-68. doi: 10.1016/j.neuroimage.2014.10.019. Epub 2014 Oct 16.
Despite intensive efforts for decades, deformable image registration is still a challenging problem due to the potential large anatomical differences across individual images, which limits the registration performance. Fortunately, this issue could be alleviated if a good initial deformation can be provided for the two images under registration, which are often termed as the moving subject and the fixed template, respectively. In this work, we present a novel patch-based initial deformation prediction framework for improving the performance of existing registration algorithms. Our main idea is to estimate the initial deformation between subject and template in a patch-wise fashion by using the sparse representation technique. We argue that two image patches should follow the same deformation toward the template image if their patch-wise appearance patterns are similar. To this end, our framework consists of two stages, i.e., the training stage and the application stage. In the training stage, we register all training images to the pre-selected template, such that the deformation of each training image with respect to the template is known. In the application stage, we apply the following four steps to efficiently calculate the initial deformation field for the new test subject: (1) We pick a small number of key points in the distinctive regions of the test subject; (2) for each key point, we extract a local patch and form a coupled appearance-deformation dictionary from training images where each dictionary atom consists of the image intensity patch as well as their respective local deformations; (3) a small set of training image patches in the coupled dictionary are selected to represent the image patch of each subject key point by sparse representation. Then, we can predict the initial deformation for each subject key point by propagating the pre-estimated deformations on the selected training patches with the same sparse representation coefficients; and (4) we employ thin-plate splines (TPS) to interpolate a dense initial deformation field by considering all key points as the control points. Thus, the conventional image registration problem becomes much easier in the sense that we only need to compute the remaining small deformation for completing the registration of the subject to the template. Experimental results on both simulated and real data show that the registration performance can be significantly improved after integrating our patch-based deformation prediction framework into the existing registration algorithms.
尽管数十年来人们付出了巨大努力,但由于个体图像之间可能存在较大的解剖差异,可变形图像配准仍然是一个具有挑战性的问题,这限制了配准性能。幸运的是,如果能为待配准的两幅图像提供一个良好的初始变形,这个问题可以得到缓解,这两幅图像通常分别称为运动对象和固定模板。在这项工作中,我们提出了一种新颖的基于块的初始变形预测框架,以提高现有配准算法的性能。我们的主要思想是通过使用稀疏表示技术,以逐块的方式估计对象和模板之间的初始变形。我们认为,如果两个图像块的逐块外观模式相似,它们应该朝着模板图像遵循相同的变形。为此,我们的框架由两个阶段组成,即训练阶段和应用阶段。在训练阶段,我们将所有训练图像配准到预先选择的模板上,这样就知道了每个训练图像相对于模板的变形。在应用阶段,我们应用以下四个步骤来有效地计算新测试对象的初始变形场:(1)我们在测试对象的显著区域中选取少量关键点;(2)对于每个关键点,我们提取一个局部块,并从训练图像中形成一个耦合外观变形字典,其中每个字典原子由图像强度块及其各自的局部变形组成;(3)通过稀疏表示从耦合字典中选择一小部分训练图像块来表示每个对象关键点的图像块。然后,我们可以通过将预先估计的变形以相同的稀疏表示系数传播到所选训练块上来预测每个对象关键点的初始变形;(4)我们使用薄板样条(TPS)通过将所有关键点视为控制点来插值一个密集的初始变形场。因此,传统的图像配准问题在某种意义上变得容易得多,即我们只需要计算剩余的小变形就可以完成对象到模板的配准。在模拟数据和真实数据上的实验结果表明,将我们基于块的变形预测框架集成到现有配准算法中后,配准性能可以得到显著提高。