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A Maximal Mass Confinement Principle for Rigid and Locally Rigid Image Registration

机译:刚性和局部刚性图像配准的最大质量限制原理

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In this paper we propose (1) to set the problem of image registration as a contour/region-template-to-image matching problem using so-called confiners - also called blobs or components - as template regions, (2) to select the confiners of one of the images by passing through the hierarchical structure which they define and registering them successively rigidly form coarse-to-fine to the other image, the target image, and (3) we propose a maximum mass confinement (MMC) principle for contour-to-image registration. This principle allows us to derive a similarity measure assessing how well the confiner fits into the target image simply by calculating the gray value mass confined by its contour. By optimizing this measure for rigid transformations we obtain our MMC algorithm registering a contour locally rigid to the target image. We illustrate that by proceeding based on (1-3) problems can be avoided which were related to previous registration algorithms based on confiners. We compare our MMC algorithm with another template matching algorithm based on normalized mutual information. Equally, we compare our hierarchical image registration strategy with B-Spline based non-rigid registration using normalized mutual information. We performed our evaluation on real and simulated images in terms of robustness, accuracy and computation speed. We show that both, MMC template matching on its own and hierarchical image registration using MMC, in most cases outperform the respective alternative method.
机译:在本文中,我们提出(1)来设置图像配准的问题,因为使用所谓confiners的轮廓/区域模板到图像的匹配问题 - 也称为斑点或部件 - 作为模板区域,(2)选择通过穿过它们限定的分层结构并依次注册它们刚性地形成粗到细的其他图像,目标图像,以及(3),我们提出了一个最大质量约束(MMC)原理的图像之一的confiners轮廓到图像配准。这一原则允许我们简单地通过计算其轮廓限制的灰度值质量得到一个相似性度量评估confiner配合如何顺利进入目标图像。通过优化这一措施对于刚性变换,我们得到我们的MMC算法注册轮廓局部刚性目标图像。我们示出了通过基于可避免(1-3)问题,这是与基于以前confiners准算法进行。我们比较我们MMC算法基于归一化互信息的另一种模板匹配算法。同样,我们比较B样条层次我们的图像配准策略,使用标准化基于互信息非刚性配准。我们的鲁棒性,准确性和计算速度方面表现我们对真实和模拟图像的评价。我们发现,对自己和分层图像配准两个,MMC模板匹配使用MMC,在大多数情况下,跑赢各自的替代方法。

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