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Texture segmentation using independent-scale component-wise Riemannian-covariance Gaussian mixture model in KL measure based multi-scale nonlinear structure tensor space

机译:基于KL尺度的多尺度非线性结构张量空间中独立尺度分量黎曼-协方差高斯混合模型的纹理分割

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摘要

This paper proposes a novel texture segmentation approach using independent-scale component-wise Riemannian-covariance Gaussian mixture model (ICRGMM) in KullbackLeibler (KL) measure based multi-scale nonlinear structure tensor (MSNST) space. We use the independent-scale distribution and full-covariance structure to replace the covariant-scale distribution and 1D-variance structure used in our previous research. To construct the optimal full-covariance structure, we define the full-covariance on KL, Euclidean, log-Euclidean, and Riemannian gradient mappings, and compare their performances. The comparison experiments demonstrate that the Riemannian gradient mapping leads to its optimum properties over other choices when constructing the full-covariance. To estimate and update the statistical parameters more accurately, the component-wise expectation-maximization for mixtures (CEM ~2) algorithm is proposed instead of the originally used K-means algorithm. The superiority of the proposed ICRGMM has been demonstrated based on texture clustering and Graph Cuts based texture segmentation using a large number of synthesis texture images and real natural scene textured images, and further analyzed in terms of error ratio and modified F-measure, respectively.
机译:本文提出了一种新的纹理分割方法,该方法在基于KullbackLeibler(KL)度量的多尺度非线性结构张量(MSNST)空间中,使用独立尺度分量的黎曼-协方差高斯混合模型(ICRGMM)。我们使用独立尺度分布和全协方差结构来代替我们先前研究中使用的协变尺度分布和一维方差结构。为了构建最佳的全协方差结构,我们在KL,欧几里得,对数欧几里得和黎曼梯度映射上定义了全协方差,并比较了它们的性能。比较实验表明,在构建全协方差时,黎曼梯度映射导致其相对于其他选择的最佳属性。为了更准确地估计和更新统计参数,提出了基于分量的混合期望最大化(CEM〜2)算法,而不是最初使用的K-means算法。基于纹理聚类和基于Graph Cuts的纹理分割,使用了大量的合成纹理图像和真实自然场景纹理图像,证明了所提出的ICRGMM的优越性,并分别在误码率和改进的F值方面进行了分析。

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