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Unifying maximum likelihood approaches in medical image registration

机译:统一医学图像配准中的最大似然方法

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摘要

While intensity-based similarity measures are increasingly used for medical image registration, they often rely on implicit assumptions regarding the physics of imaging. The motivation of this paper is to determine what are the assumptions corresponding to a number of popular similarity measures, in order to better understand their use, and finally help choosing the one which is the most appropriate for a given class of problems. After formalizing registration based on general image acquisition models, we show that the search for an optimal measure can be cast into a maximum likelihood estimation problem. We then derive similarity measures correspondin- g to different modeling assumptions and retrieve some well-known measures (correlation coefficient, correlation ratio, mutual information). Finally, we present results of rigid registration between several modalities of images to illustrate the importance of choosing an appropriate similarity measure.
机译:虽然基于强度的相似度措施越来越多地用于医学图像登记,但它们通常依赖于关于成像物理学的隐含假设。本文的动机是确定对应于许多流行的相似度措施的假设是什么,以更好地了解他们的使用,最后有助于选择最适合于给定类别的问题。在基于一般图像采集模型的正式登记之后,我们表明可以将对最佳度量的搜索投入到最大似然估计问题中。然后我们推导相似度测量对应于不同的建模假设,并检索一些众所周知的度量(相关系数,相关比,相互信息)。最后,我们在几种形式的图像之间存在刚性登记的结果,以说明选择适当的相似度量的重要性。

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