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Image Segmentation Method Combines MPM/MAP Algorithm and Geometric Division

机译:图像分割方法结合了MPM / MAP算法和几何分割

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A novel image segmentation algorithm based on a Bayesian framework is studied in this paper. We presents a new region and statistics based approach, which combines Voronoi tessellation technique and Maximum a posterior / Maximization of the posterior marginal (MAP /MPM) algorithm. The image domain is partitioned into a group of sub-regions by Voronoi tessellation, each of which is a component of homogeneous regions. And the image is modeled on the supposition that the intensities of pixels in each homogenous region satisfy an identical and independent gamma distribution. The initial segmentation is applied to obtain number of the initial motions and the corresponding initial parameters of the image model. Then the parameters are updated by using the given parameter estimation method. A fast estimation procedure for the posterior marginals is added to the MAP algorithm. The experiment results show that the proposed algorithm here is effective.
机译:本文研究了基于贝叶斯框架的新型图像分割算法。我们提出了一种新的地区和基于统计的方法,其结合了voronoi曲面细分技术和最大后边缘(地图/ MPM)算法的后/最大化。通过Voronoi曲面细分将图像结构域分成一组子区域,每个子区域是均匀区域的组成部分。并且图像被建模在假设上,使得每个均匀区域中的像素的强度满足相同和独立的伽马分布。应用初始分割以获得初始运动的数量和图像模型的相应初始参数。然后使用给定的参数估计方法更新参数。后边缘的快速估计过程被添加到地图算法中。实验结果表明,这里的算法是有效的。

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