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Entropy-based image registration.

机译:基于熵的图像配准。

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This thesis investigates the employment of different entropic measures, including Renyi entropy, in the context of image registration. Specifically, we focus on the entropy estimation problem for image registration and provide theoretical and experimental comparisons of two important entropy estimators: the plug-in estimator and minimal entropic graphs. We further develop an image registration framework based on the graph-theoretic estimator. Within this framework, we address practical and theoretical issues such as the incorporation of spatial information, the efficient and fast search of the optimum alignment, and the employment of previously aligned image pairs. These analyses yield fast, robust and accurate multi-modal affine registration algorithms applicable to different medical problems. Next, we investigate the nonrigid registration problem and provide a novel fast entropy-based nonrigid registration algorithm. Finally, we discuss a scientific application, the normalization of the human cerebral cortex based on patterns of functional response, and investigate an algorithm that employs a correlation-based entropic measure.
机译:本文研究了在图像配准的情况下采用不同的熵测度,包括人一熵。具体来说,我们专注于图像配准的熵估计问题,并提供两种重要的熵估计器(即插件估计器和最小熵图)的理论和实验比较。我们进一步基于图论估计器开发图像配准框架。在此框架内,我们解决了实际和理论问题,例如空间信息的合并,最佳对准的高效快速搜索以及以前对准的图像对的使用。这些分析得出适用于不同医学问题的快速,可靠和准确的多模式仿射配准算法。接下来,我们研究非刚性配准问题,并提供一种新颖的基于快速熵的非刚性配准算法。最后,我们讨论了一种科学应用,即基于功能响应模式的人脑皮质归一化,并研究了一种采用基于相关性的熵测度的算法。

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