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MR Brain Tissue Classification Using an Edge-Preserving Spatially Variant Bayesian Mixture Model

机译:先生脑组织使用边缘保存空间变体贝叶斯混合模型进行分类

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In this paper, a spatially constrained mixture model for the segmentation of MR brain images is presented. The novelty of this work is an edge-preserving smoothness prior which is imposed on the probabilities of the voxel labels. This prior incorporates a line process, which is modeled as a Bernoulli random variable, in order to preserve edges between tissues. The main difference with other, state of the art methods imposing priors, is that the constraint is imposed on the probabilities of the voxel labels and not onto the labels themselves. Inference of the proposed Bayesian model is obtained using variational methodology and the model parameters are computed in closed form. Numerical experiments are presented where the proposed model is favorably compared to state of the art brain segmentation methods as well as to a spatially varying Gaussian mixture model.
机译:本文介绍了对MR脑图像分割的空间约束混合模型。这项工作的新颖性是优先于边缘保留的平滑度,其施加对体素标签的概率。该先前包含一个线条过程,该方法被建模为伯努利随机变量,以便在组织之间保持边缘。主要的差异与其他施加前沿的最先进的方法,是限制对体素标签的概率而不是在标签上自身的概率施加。使用变分法获得所提出的贝叶斯模型的推断,并且模型参数以封闭形式计算。呈现了数值实验,其中拟议的模型与艺术脑分割方法的状态相比以及空间变化的高斯混合模型。

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