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Second-order random graphs for modelling sets of attributed graphs and their application to object learning and recognition

机译:用于建模属性图集的二阶随机图及其在对象学习和识别中的应用

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摘要

The aim of this article is to present a random graph representation, that is based on second-order relations between graph elements, for modeling sets of attributed graphs (AGs). We refer to these models as Second-Order Random Graphs (SORGs). The basic feature of SORGs is that they include both marginal probability functions of graph elements and second-order joint probability functions. This allows a more precise description of both the structural and semantic information contents in a set of AGs and, consequently, an expected improvement in graph matching and object recognition. The article presents a probabilistic formulation of SORGs that includes as particular cases the two previously proposed approaches based on random graphs, namely the First-Order Random Graphs (FORGs) and the Function-Described Graphs (FDGs). We then propose a distance measure derived from the probability of instantiating a SORG into an AG and an incremental procedure to synthesize SORGs from sequences of AGs. Finally, SORGs are shown to improve the performance of FORGs, FDGs and direct AG-to-AG matching in three experimental recognition tasks: one in which AGs are randomly generated and the other two in which AGs represent multiple views of 3D objects (either synthetic or real) that have been extracted from color images. In the last case, object learning is achieved through the synthesis of SORG models.
机译:本文的目的是提出一种基于图形元素之间二阶关系的随机图形表示形式,以对属性图(AG)集进行建模。我们将这些模型称为二阶随机图(SORG)。 SORG的基本特征是它们既包含图元的边际概率函数,也包含二阶联合概率函数。这可以更精确地描述一组AG中的结构和语义信息内容,因此可以预期在图形匹配和对象识别方面有所改进。本文介绍了SORG的概率公式,其中包括在特定情况下基于随机图的两种先前提出的方法,即一阶随机图(FORG)和功能描述图(FDG)。然后,我们提出了一种距离度量,该距离度量是从将SORG实例化为AG的概率以及从AG序列合成SORG的增量过程得出的。最后,在三个实验识别任务中,显示出SORG可提高FORG,FDG和直接AG到AG匹配的性能:一个随机生成AG,另一个两个AG代表3D对象的多个视图(两个都是合成的)或真实)的图像。在最后一种情况下,对象学习是通过综合SORG模型来实现的。

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