首页> 外文会议>9th International Workshop on Computer Aided Systems Theory; Feb 24-28, 2003; Las Palmas de Gran Canaria, Spain >Anisotropic Regularization of Posterior Probability Maps Using Vector Space Projections. Application to MRI Segmentation
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Anisotropic Regularization of Posterior Probability Maps Using Vector Space Projections. Application to MRI Segmentation

机译:使用向量空间投影的后验概率图的各向异性正则化。在MRI分割中的应用

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In this paper we address the problem of regularized data classification. To this extent we propose to regularize spatially the class-posterior probability maps, to be used by a MAP classification rule, by applying a non-iterative anisotropic filter to each of the class-posterior maps. Since the filter cannot guarantee that the smoothed maps preserve their probabilities meaning (i.e., probabilities must be in the range and the class-probabilities must sum up to one), we project the smoothed maps onto a probability subspace. Promising results are presented for synthetic and real MRI datasets.
机译:在本文中,我们解决了正规数据分类的问题。在此程度上,我们建议通过对每个类后验图应用非迭代各向异性过滤器,在空间上规范要由MAP分类规则使用的类后验概率图。由于过滤器无法保证平滑的映射保留其概率含义(即,概率必须在范围内,并且类别概率必须总计为一个),因此我们将平滑的映射投影到概率子空间上。对于合成的和真实的MRI数据集,提出了有希望的结果。

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