In image registration, many efforts have been devoted to the development of alternatives to the popular normalized mutual information criterion. Concurrently to these efforts, an increasing number of works have demonstrated that substantial gains in registration accuracy can also be achieved by aligning structural representations of images rather than images themselves. Following this research path, we propose a new method for mono- and multimodal image registration based on the alignment of regularized vector fields derived from structural information such as gradient vector flow fields, a technique we call \textit{vector field similarity}. Our approach can be combined in a straightforward fashion with any existing registration framework by substituting vector field similarity to intensity-based registration. In our experiments, we show that the proposed approach compares favourably with conventional image alignment on several public image datasets using a diversity of imaging modalities and anatomical locations.
翻译:在图像登记方面,已作出许多努力,以制定取代大众标准化的相互信息标准的替代标准。与此同时,越来越多的工作表明,通过对图像的结构表述而不是图像本身进行校正,也可以在登记准确性方面取得重大进展。根据这一研究路径,我们提出了一种基于结构信息(如梯度矢量流场、一种我们称之为“Textit{vcent fielity”的技术)的正规化矢量字段的匹配的单一和多式图像登记新方法。我们的方法可以直接地与任何现有的登记框架结合起来,取代矢量场与密度基登记相似的矢量字段。在我们的实验中,我们表明拟议的方法优于利用多种成像模式和解剖位置对若干公共图像数据集进行常规图像调整的优势。