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Texture Segmentation Using the Mixtures of Principal Component Analyzers

机译:纹理分割使用主成分分析仪的混合物

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The problem of segmenting an image into several modalities representing different textures can be modelled using Gaussian mixtures. Moreover, texture image patches when translated, rotated or scaled lie in low dimensional subspaces of the high-dimensional space spanned by the grey values. These two aspects make the mixture of local subspace models worth consideration for segmenting this type of images. In recent years a number of mixtures of local PCA models have been proposed. Most of these models require the user to set the number of subspaces and subspace dimensionalities. To make the model autonomous, we propose a greedy EM algorithm to find a suboptimal number of subspaces, besides using a global retained variance ratio to estimate for each subspace the dimensionality that retains the given variability ratio. We provide experimental results for testing the proposed method on texture segmentation.
机译:可以使用高斯混合来建模将图像分割成代表不同纹理的若干模态的问题。此外,在由灰度值跨越的高维空间的低尺寸子空间中被翻译,旋转或缩放时的纹理图像贴片。这两个方面使当地子空间模型的混合值得考虑,以便分割这种类型的图像。近年来,已经提出了许多本地PCA模型的混合物。大多数这些模型都要求用户设置子空间和子空间尺寸的数量。为了使模型自主,我们提出了一种贪婪的EM算法来查找子空间的次优数,除了使用全局保留的差异比来估计每个子空间,该子空间保留给定可变性比率的维度。我们提供了在纹理分割上测试所提出的方法的实验结果。

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