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The SEM Statistical Mixture Model of Segmentation Algorithm of Brain Vessel Image

机译:脑血管图像分割算法的SEM统计混合模型

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摘要

The brain MRI images are processed with statistical analysis technology, and then the accuracy of segmentation is improved by the random assortment iteration .First the MIP algorithm is applied to decrease the quantity of mixing elements. Then the Gaussian Mixture Model is put forward to fit the stochastic distribution of the brain vessels and brain tissue. Finally, the SEM algorithm is adopted to estimate the parameters of Gaussian Mixture Model. The feasibility and validity of the model is verified by the experiment. With the model, small branches of the brain vessel can be segmented, the speed of the convergent is improved and local minima are avoided.
机译:用统计分析技术处理脑部MRI图像,然后通过随机分类迭代提高分割的准确性。首先应用MIP算法减少混合元素的数量。然后提出了高斯混合模型来拟合脑血管和脑组织的随机分布。最后,采用SEM算法对高斯混合模型的参数进行估计。实验验证了该模型的可行性和有效性。使用该模型,可以分割脑血管的小分支,提高收敛速度,并避免局部最小值。

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