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Gaussian Markov random field based improved texture descriptor for image segmentation

机译:基于高斯马尔可夫随机场的改进纹理描述符的图像分割。

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摘要

This paper proposes a novel robust texture descriptor based on Gaussian Markov random fields (GMRFs). A spatially localized parameter estimation technique using local linear regression is performed and the distributions of local parameter estimates are constructed to formulate the texture features. The inconsistencies arising in localized parameter estimation are addressed by applying generalized inverse, regularization and an estimation window size selection criterion. The texture descriptors are named as local parameter histograms (LPHs) and are used in texture segmentation with the k-means clustering algorithm. The segmentation results on general texture datasets demonstrate that LPH descriptors significantly improve the performance of classical GMRF features and achieve better results compared to the state-of-the-art texture descriptors based on local feature distributions. Impressive natural image segmentation results are also achieved and comparisons to the other standard natural image segmentation algorithms are also presented. LPH descriptors produce promising texture features that integrate both statistical and structural information about a texture. The region boundary localization can be further improved by integrating colour information and using advanced segmentation algorithms.
机译:本文提出了一种基于高斯马尔可夫随机场(GMRF)的新型鲁棒纹理描述符。执行使用局部线性回归的空间局部参数估计技术,并构造局部参数估计的分布以制定纹理特征。通过应用广义逆,正则化和估计窗口大小选择准则,可以解决局部参数估计中出现的不一致问题。纹理描述符被称为局部参数直方图(LPH),并与k均值聚类算法一起用于纹理分割。常规纹理数据集上的分割结果表明,与基于局部特征分布的最新纹理描述符相比,LPH描述符显着提高了经典GMRF特征的性能并获得了更好的结果。还获得了令人印象深刻的自然图像分割结果,并与其他标准自然图像分割算法进行了比较。 LPH描述符产生有前途的纹理特征,这些特征整合了有关纹理的统计信息和结构信息。通过集成颜色信息并使用高级分割算法,可以进一步改善区域边界定位。

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