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Behavior analysis of fractal features for texture description in digital images: an experimental study

机译:用于数字图像纹理描述的分形特征的行为分析:一项实验研究

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Texture-based recognition for image segmentation and classification is very important in many domains and different numerical features coming from a variety of approaches have been proposed. Texture segmentation using six features based on the fractal dimension has been used elsewhere. This paper, studies properties of these features from the point of view of dimensionality reduction, mutual relation, differential relevance, discrete quantization, and classification ability. In an experimental framework, a set of statistical, soft computing, data mining and machine learning methods were used on a set of different textures (multidimensional scaling, rough sets, factor analysis, cluster analysis and inductive classification). It was found that fractal features effectively have texture recognition ability. Some of these are very relevant (the fractal dimension of smoothed versions of the original image and the multifractal dimension). Not so many quantisation levels of fractal dimension variables are required in order to achieve high recognition performance.
机译:基于纹理的图像分割和分类识别在许多领域都非常重要,并且已经提出了来自各种方法的不同数值特征。基于分形维数使用六个特征的纹理分割已在其他地方使用。本文从降维,相互关系,微分相关性,离散量化和分类能力的角度研究这些特征的性质。在实验框架中,一组统计,软计算,数据挖掘和机器学习方法用于一组不同的纹理(多维缩放,粗糙集,因子分析,聚类分析和归纳分类)。发现分形特征有效地具有纹理识别能力。其中一些是非常相关的(原始图像的平滑版本的分形维数和多重分形维数)。为了实现高识别性能,不需要太多的分形维数量化级别。

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