首页> 外文会议>2011 8th IEEE International Symposium on Biomedical Imaging: From Nano to Macro >Multi-feature information-theoretic image registration: Application to groupwise registration of perfusion MRI exams
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Multi-feature information-theoretic image registration: Application to groupwise registration of perfusion MRI exams

机译:多特征信息理论图像配准:在灌注MRI检查的分组配准中的应用

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Investigating multi-feature information-theoretic image registration, we introduce consistent and asymptotically unbiased kth-nearest neighbor (kNN) estimators of mutual information (MI), normalized MI and exclusive information applicable to high-dimensional random variables, and derive under closed-form their gradient flows over finite- and infinite-dimensional transform spaces. Using these results, we devise a novel unsupervised method for the groupwise registration of cardiac perfusion MRI exams. Here, local time-intensity curves are used as a dense set of spatio-temporal features, and statistically matched through variational optimization. Experiments on simulated and real datasets suggest the accuracy of the model for the affine registration of exams with up to 34 frames.
机译:调查多特征信息 - 理论图像登记,我们介绍一致和渐近的无偏见的kth-最近邻(Knn)估计的互信息(MI),标准化的MI和适用于高维随机变量的独占信息,并导出闭合形式它们的渐变流过有限和无限的尺寸变换空间。使用这些结果,我们设计了一种新型无监督方法,用于心脏灌注MRI考试的Groupwise登记。这里,局部时间强度曲线用作密集的时空特征,并且通过变分优化统计匹配。模拟和实时数据集的实验表明,具有最多34帧的考试仿射注册模型的准确性。

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