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Shape Learning with Function-Described Graphs

机译:用功能描述的图表的形状学习

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A new method for shape learning is presented in this paper. This method incorporates abilities from both statistical and structural pattern recognition approaches to shape analysis. It borrows from statistical pattern recognition the capability of modelling sets of point coordinates, and from structural pattern recognition the ability of dealing with highly irregular patterns, such as those generated by points missingness. To that end we use a novel adaptation of Procrustes analysis, designed by us to align sets of points with missing elements. We use this information to generate sets of attributed graphs (AGs). From each set of AGs we synthesize a function-described graph (FDG), which is a type of compact representation that has the capability of probabilistic modelling of both structural and attribute information. Multivariate normal probability density estimation is used in FDGs instead of the originally used histograms. Comparative results of classification performance are presented of structural vs. attributes + structural information.
机译:本文提出了一种新的形状学习方法。该方法包括来自统计和结构模式识别方法的能力来形状分析。它从统计模式识别到建模点坐标组的能力,以及结构模式识别处理高度不规则模式的能力,例如由点缺失产生的能力。为此,我们使用了对普鲁斯特分析的新颖适应,由我们设计,以将点数与缺失元素对齐。我们使用此信息生成归属图(AGS)的集合。从每组AGS,我们合成函数描述的图表(FDG),它是具有结构和属性信息的概率建模能力的一种紧凑型表示的类型。多变量正常概率密度估计用于FDGS而不是最初使用的直方图。分类性能的比较结果呈现结构与属性+结构信息。

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