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首页> 外文期刊>EURASIP journal on advances in signal processing >Iterative Approximation of Empirical Grey-Level Distributions for Precise Segmentation of Multimodal Images
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Iterative Approximation of Empirical Grey-Level Distributions for Precise Segmentation of Multimodal Images

机译:精确分割多峰图像的经验灰度级分布的迭代逼近

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摘要

A new algorithm for segmenting a multimodal grey-scale image is proposed. The image is described as a sample of a joint Gibbs random field of region labels and grey levels. To initialize the model, a mixed multimodal empirical grey-level distribution is approximated with linear combinations of Gaussians, one combination per region. Bayesian decisions involving expectation maximization and genetic optimization techniques are used to sequentially estimate and refine parameters of the model, including the number of Gaussians for each region. The final estimates are more accurate than with conventional normal mixture models and result in more adequate region borders in the image. Experiments show that the proposed technique segments complex multimodal medical images of different types more accurately than several other known algorithms.
机译:提出了一种分割多峰灰度图像的新算法。该图像被描述为区域标签和灰度级的联合吉布斯随机场的样本。为了初始化模型,需要使用高斯线性组合(每个区域一个组合)来近似混合多模态经验灰度分布。涉及期望最大化和遗传优化技术的贝叶斯决策用于顺序估计和完善模型的参数,包括每个区域的高斯数。最终估计值比常规的普通混合模型更准确,并且可以使图像中的区域边界更加充分。实验表明,所提出的技术比其他几种已知算法更准确地分割了不同类型的复杂多模式医学图像。

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