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首页> 外文期刊>Neuroinformatics >Groupwise Image Registration Guided by a Dynamic Digraph of Images
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Groupwise Image Registration Guided by a Dynamic Digraph of Images

机译:动态图像图引导的成组图像配准

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摘要

For groupwise image registration, graph theoretic methods have been adopted for discovering the manifold of images to be registered so that accurate registration of images to a group center image can be achieved by aligning similar images that are linked by the shortest graph paths. However, the image similarity measures adopted to build a graph of images in the extant methods are essentially pairwise measures, not effective for capturing the groupwise similarity among multiple images. To overcome this problem, we present a groupwise image similarity measure that is built on sparse coding for characterizing image similarity among all input images and build a directed graph (digraph) of images so that similar images are connected by the shortest paths of the digraph. Following the shortest paths determined according to the digraph, images are registered to a group center image in an iterative manner by decomposing a large anatomical deformation field required to register an image to the group center image into a series of small ones between similar images. During the iterative image registration, the digraph of images evolves dynamically at each iteration step to pursue an accurate estimation of the image manifold. Moreover, an adaptive dictionary strategy is adopted in the groupwise image similarity measure to ensure fast convergence of the iterative registration procedure. The proposed method has been validated based on both simulated and real brain images, and experiment results have demonstrated that our method was more effective for learning the manifold of input images and achieved higher registration accuracy than state-of-the-art groupwise image registration methods.
机译:对于逐组图像配准,已采用图论方法来发现要配准的图像流形,以便通过对齐由最短图形路径链接的相似图像,可以将图像精确配准到组中心图像。然而,在现有方法中用来建立图像图的图像相似性度量本质上是成对度量,对于捕获多个图像之间的成组相似性无效。为了克服这个问题,我们提出了一种基于群体的图像相似性度量,该度量基于稀疏编码来表征所有输入图像之间的图像相似性,并建立图像的有向图(有向图),以使相似的图像通过有向图的最短路径进行连接。遵循根据图确定的最短路径,通过将将图像注册到组中心图像所需的较大的解剖变形场分解为相似图像之间的一系列小图像,以迭代方式将图像注册到组中心图像。在迭代图像配准期间,图像的有向图在每个迭代步骤中动态演化,以追求对图像流形的精确估计。此外,在逐组图像相似性度量中采用了自适应词典策略,以确保迭代配准过程的快速收敛。该方法已基于模拟和真实的大脑图像进行了验证,实验结果表明,与最新的分组图像配准方法相比,该方法在学习输入图像的流形方面更有效,并且具有更高的配准精度。 。

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