首页> 外文会议>MICCAI 2011;International conference on medical image computing and computer-assisted intervention >Probabilistic Clustering and Shape Modelling of White Matter Fibre Bundles Using Regression Mixtures
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Probabilistic Clustering and Shape Modelling of White Matter Fibre Bundles Using Regression Mixtures

机译:使用回归混合物的白色物质纤维束的概率聚类和形状建模

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We present a novel approach for probabilistic clustering of white matter fibre pathways using curve-based regression mixture modelling techniques in 3D curve space. The clustering algorithm is based on a principled method for probabilistic modelling of a set of fibre trajectories as individual sequences of points generated from a finite mixture model consisting of multivariate polynomial regression model components. Unsupervised learning is carried out using maximum likelihood principles. Specifically, conditional mixture is used together with an EM algorithm to estimate cluster membership. The result of clustering is a probabilistic assignment of fibre trajectories to each cluster and an estimate of cluster parameters. A statistical shape model is calculated for each clustered fibre bundle using fitted parameters of the probabilistic clustering. We illustrate the potential of our clustering approach on synthetic and real data.
机译:我们提出了一种新方法,用于在3D曲线空间中使用基于曲线的回归混合建模技术对白质纤维路径进行概率聚类。聚类算法基于对一组纤维轨迹进行概率建模的原理方法,该纤维轨迹是从由多元多项式回归模型组件组成的有限混合模型中生成的点的单个序列。无监督学习是使用最大似然原理进行的。具体而言,将条件混合与EM算法一起使用以估计集群成员资格。聚类的结果是纤维轨迹对每个聚类的概率分配以及聚类参数的估计。使用概率聚类的拟合参数为每个聚簇的纤维束计算统计形状模型。我们说明了在综合数据和真实数据上使用聚类方法的潜力。

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