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Segmenting Multi-Source Images Using Hidden Markov Fields With Copula-Based Multivariate Statistical Distributions

机译:使用基于Copula的多元统计分布的隐藏Markov字段分割多源图像

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摘要

Nowadays, multi-source image acquisition attracts an increasing interest in many fields, such as multi-modal medical image segmentation. Such acquisition aims at considering complementary information to perform image segmentation, since the same scene has been observed by various types of images. However, strong dependence often exists between multi-source images. This dependence should be taken into account when we try to extract joint information for precisely making a decision. In order to statistically model this dependence between multiple sources, we propose a novel multi-source fusion method based on the Gaussian copula. The proposed fusion model is integrated in a statistical framework with the hidden Markov field inference in order to delineate a target volume from multi-source images. Estimation of parameters of the models and segmentation of the images are jointly performed by an iterative algorithm based on Gibbs sampling. Experiments are performed on multi-sequence MRI to segment tumors. The results show that the proposed method based on the Gaussian copula is effective to accomplish multi-source image segmentation.
机译:如今,多源图像采集在许多领域吸引了越来越多的兴趣,例如多模式医学图像分割。由于已经通过各种类型的图像观察到相同的场景,因此这种获取旨在考虑补充信息以执行图像分割。但是,多源图像之间通常存在强烈的依赖性​​。当我们尝试提取联合信息以精确地做出决定时,应考虑这种依赖性。为了对多个源之间的这种依赖关系进行统计建模,我们提出了一种基于高斯copula的新颖的多源融合方法。所提出的融合模型与隐藏的马尔可夫场推断集成在统计框架中,以便从多源图像描绘目标体积。模型参数的估计和图像的分割由基于吉布斯采样的迭代算法共同执行。在多序列MRI上进行实验以分割肿瘤。结果表明,所提出的基于高斯copula的方法是有效的完成多源图像分割。

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