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An Improved Brain MRI Segmentation Method Based on Scale-Space Theory and Expectation Maximization Algorithm

机译:基于尺度空间理论和期望最大化算法的一种改进的脑MRI分段方法

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Expectation Maximization (EM) algorithm is an unsupervised clustering algorithm, but initialization information especially the number of clusters is crucial to its performance. In this paper, a new MRI segmentation method based on scale-space theory and EM algorithm has been proposed. Firstly, gray level density of a brain MRI is estimated; secondly, the corresponding fingerprints which include initialization information for EM using scale-space theory are obtained; lastly, segmentation results are achieved by the initialized EM. During the initialization phase, restrictions of clustering component weights decrease the influence of noise or singular points. Brain MRI segmentation results indicate that our method can determine more reliable initialization information and achieve more accurate segmented tissues than other initialization methods.
机译:期望最大化(EM)算法是一种无监督的聚类算法,但初始化信息尤其是群集数对其性能至关重要。本文提出了一种基于刻度空间理论和EM算法的新的MRI分段方法。首先,估计脑MRI的灰度密度;其次,获得了使用使用比例空间理论的初始化信息的相应指纹;最后,分割结果由初始化的EM实现。在初始化阶段期间,聚类组件权重的限制降低了噪声或奇点的影响。脑MRI分割结果表明,我们的方法可以确定更可靠的初始化信息并实现比其他初始化方法更准确的细分组织。

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