纠错标注的实体局部结构图匹配

Nihel Kooli, A. Belaïd, Aurélie Joseph, V. P. d'Andecy
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引用次数: 4

摘要

提出了一种基于非精确子图匹配的实体局部结构比较方法。比较结果用于局部结构的错标校正。后者表示一组实体属性标签,它们在文档图像中物理上接近。它通过一个属性图来建模,用节点来描述标签的内容和表示特征,用圆弧来描述几何特征。一个局部结构图与一个结构模型相匹配,该结构模型表示一组局部结构模型图。首先使用一组基于图聚类算法的精心选择的局部结构来构建结构模型,然后增量更新。子图匹配采用了一个特定的代价函数,该函数将特征不相似度进行了综合。利用匹配的模型图提取缺失的标签,修剪多余的标签,纠正局部结构中错误的标签字段。对从200个商务文档中提取的525个局部结构进行结构比较评价,查全率达到90%,查准率达到95%。这些局部结构的错误标记纠正率在73%到100%之间。
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Entity Local Structure Graph Matching for Mislabeling Correction
This paper proposes an entity local structure comparison approach based on inexact subgraph matching. The comparison results are used for mislabeling correction in the local structure. The latter represents a set of entity attribute labels which are physically close in a document image. It is modeled by an attributed graph describing the content and presentation features of the labels by the nodes and the geometrical features by the arcs. A local structure graph is matched with a structure model which represents a set of local structure model graphs. The structure model is initially built using a set of well chosen local structures based on a graph clustering algorithm and is then incrementally updated. The subgraph matching adopts a specific cost function that integrates the feature dissimilarities. The matched model graph is used to extract the missed labels, prune the extraneous ones and correct the erroneous label fields in the local structure. The evaluation of the structure comparison approach on 525 local structures extracted from 200 business documents achieves about 90% for recall and 95% for precision. The mislabeling correction rates in these local structures vary between 73% and 100%.
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