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首页> 外文期刊>IEEE Transactions on Neural Networks >A Spatially Constrained Generative Model and an EM Algorithm for Image Segmentation
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A Spatially Constrained Generative Model and an EM Algorithm for Image Segmentation

机译:图像分割的空间约束生成模型和EM算法

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摘要

In this paper, we present a novel spatially constrained generative model and an expectation-maximization (EM) algorithm for model-based image segmentation. The generative model assumes that the unobserved class labels of neighboring pixels in the image are generated by prior distributions with similar parameters, where similarity is defined by entropic quantities relating to the neighboring priors. In order to estimate model parameters from observations, we derive a spatially constrained EM algorithm that iteratively maximizes a lower bound on the data log-likelihood, where the penalty term is data-dependent. Our algorithm is very easy to implement and is similar to the standard EM algorithm for Gaussian mixtures with the main difference that the labels posteriors are "smoothed" over pixels between each E- and M-step by a standard image filter. Experiments on synthetic and real images show that our algorithm achieves competitive segmentation results compared to other Markov-based methods, and is in general faster
机译:在本文中,我们提出了一种新颖的空间受限生成模型和基于模型的图像分割的期望最大化(EM)算法。生成模型假定图像中相邻像素的未观察到的类别标签是通过具有相似参数的先验分布生成的,其中相似性是由与相邻先验有关的熵值定义的。为了从观测值估计模型参数,我们导出了空间受限的EM算法,该算法迭代地最大化了数据对数似然性的下限,其中惩罚项与数据有关。我们的算法非常易于实现,并且类似于高斯混合的标准EM算法,主要区别在于,通过标准图像滤镜,标签后代在每个E和M步骤之间的像素上“平滑”了。在合成图像和真实图像上进行的实验表明,与其他基于Markov的方法相比,我们的算法可实现竞争性的分割结果

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