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Fast and fully unsupervised scheme for model-based image segmentation

机译:基于模型的图像分割的快速且完全无监督的方案

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Abstract: A numerically efficient approach to the problem of automatically segmenting images into regions of statistical stationary is proposed in this paper. The technique is fully unsupervised, in that no prior knowledge of the number of regions, or their attributes, is required. Instead, this knowledge is inferred via a dynamic learning phase. Specifically, image features are extracted from windows forming a tessellation of the image, by fitting the realization in each window with a Gaussian Markov Random Field. An approach to cluster formation in feature space is described, based on a finite Gaussian mixture model. This phase of the algorithm permits a threshold parameter - and subsequently, the number of texture classes and their parameters - to be inferred. A very fast approach to fine segmentation - which uses the result of the clustering phase as inputs - is then implemented, yielding a class label inference for a dynamically-chosen sparse set of pixel sites. The scheme is iterated to convergence, yielding a label realization for all pixel sites.To further enhance the identification of textural borders, a post-processing algorithm, using ICM-based estimation, is activated in areas of high edge activity, using the results of the previous stages as estimates of the label realizations in such areas. The performance of the scheme in synthetic and real image contexts is considered. !16
机译:摘要:提出了一种数值有效的方法,用于将图像自动分割为统计平稳区域。该技术完全不受监督,因为不需要事先了解区域数量或其属性。相反,可以通过动态学习阶段来推断此知识。具体而言,通过将每个窗口中的实现与高斯马尔可夫随机场相匹配,从形成图像细分的窗口中提取图像特征。描述了一种基于有限高斯混合模型的特征空间中聚类形成方法。该算法的此阶段允许推断阈值参数-随后推断出纹理类别及其参数的数量。然后实现了一种非常快速的细分方法,该方法将聚类阶段的结果用作输入,从而为动态选择的稀疏像素点集生成了类标签推断。该方案迭代收敛,为所有像素位置提供了标签实现。为了进一步增强纹理边界的识别,使用基于ICM的估计的后处理算法在高边缘活动区域中被激活,使用以前的阶段是对这些领域中标签实现的估计。考虑了该方案在合成和真实图像上下文中的性能。 !16

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