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Learning graph prototypes for shape recognition

机译:学习图形原型以进行形状识别

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摘要

This paper presents some new approaches for computing graph prototypes in the context of the design of a structural nearest prototype classifier. Four kinds of prototypes are investigated and compared: set median graphs, generalized median graphs, set discriminative graphs and generalized discriminative graphs. They differ according to (i) the graph space where they are searched for and (ii) the objective function which is used for their computation. The first criterion allows to distinguish set prototypes which are selected in the initial graph training set from generalized prototypes which are generated in an infinite set of graphs. The second criterion allows to distinguish median graphs which minimize the sum of distances to all input graphs of a given class from discriminative graphs, which are computed using classification performance as criterion, taking into account the inter-class distribution. For each kind of prototype, the proposed approach allows to identify one or many prototypes per class, in order to manage the trade-off between the classification accuracy and the classification time. Each graph prototype generation/selection is performed through a genetic algorithm which can be specialized to each case by setting the appropriate encoding scheme, fitness and genetic operators. An experimental study performed on several graph databases shows the superiority of the generation approach over the selection one. On the other hand, discriminative prototypes outperform the generative ones. Moreover, we show that the classification rates are improved while the number of prototypes increases. Finally, we show that discriminative prototypes give better results than the median graph based classifier.
机译:本文介绍了在结构最近的原型分类器设计的背景下计算图原型的一些新方法。研究并比较了四种原型:集合中位数图,广义中位数图,集合判别图和广义判别图。它们根据(i)搜索它们的图空间和(ii)用于计算的目标函数而不同。第一准则允许将在初始图训练集中选择的集合原型与在无限图集合中生成的广义原型区分开。第二个准则允许区分中位数图,该中位数图使与给定类别的所有输入图的距离总和最小化,而区别图则使用分类性能作为准则,并考虑到类别间的分布来计算。对于每种原型,所提出的方法允许每个类别识别一个或多个原型,以便管理分类精度和分类时间之间的权衡。每个图原型的生成/选择都是通过遗传算法执行的,该遗传算法可以通过设置适当的编码方案,适用性和遗传算子来针对每种情况进行专用。在几个图形数据库上进行的一项实验研究表明,生成方法优于选择方法。另一方面,区分性原型要优于生成性原型。此外,我们表明分类率得到了提高,而原型的数量却增加了。最后,我们表明,与基于中值图的分类器相比,判别性原型给出了更好的结果。

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