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Joint segmentation of multiple images with shared classes: a Bayesian nonparametrics approach

机译:具有共享类的多个图像的联合分割:贝叶斯非参数方法

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摘要

A combination of the hierarchical Dirichlet process (HDP) and the Potts model is proposed for the joint segmentation/classification of a set of images with shared classes. Images are first divided into homogeneous regions that are assumed to belong to the same class when sharing common characteristics. Simultaneously, the Potts model favors configurations defined by neighboring pixels belonging to the same class. This HDP-Potts model is elected as a prior for the images, which allows the best number of classes to be selected automatically. A Gibbs sampler is then designed to approximate the Bayesian estimators, under a maximum a posteriori (MAP) paradigm. Preliminary experimental results are finally reported using a set of synthetic images.
机译:提出了层次Dirichlet过程(HDP)和Potts模型的组合,以对具有共享类的一组图像进行联合分割/分类。图像首先被划分为同质区域,这些区域在共享共同特征时被认为属于同一类。同时,Potts模型支持由属于同一类的相邻像素定义的配置。将该HDP-Potts模型选为图像的先验模型,从而可以自动选择最佳数量的类别。然后,在最大后验(MAP)范式下设计吉布斯采样器以近似贝叶斯估计量。最后,使用一组合成图像报告了初步实验结果。

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