ReS2TIM:从表图像中重建语法结构

Wenyuan Xue, Qingyong Li, D. Tao
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引用次数: 27

摘要

表通常表示密集的结构化数据。理解表语义对于有效的信息检索和数据挖掘至关重要。与语义可直接从标记语言和内容中读取的web表不同,作为图像发布的表的完整分析需要将离散数据转换为结构化信息。本文提出了一种新的框架,通过单元格之间的关系将表图像转换为其语法表示形式。为了重建表的句法结构,我们构建了一个单元格关系网络,在四个方向上预测每个单元格的邻居。在训练阶段,提出了基于距离的样本权值来处理类不平衡问题。根据检测到的关系,表用加权图表示,然后使用加权图来推断基本的语法表结构。使用两个数据集对所提出的框架进行实验评估,证明了我们的模型在细胞关系检测和表结构推断方面的有效性。
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ReS2TIM: Reconstruct Syntactic Structures from Table Images
Tables often represent densely packed but structured data. Understanding table semantics is vital for effective information retrieval and data mining. Unlike web tables, whose semantics are readable directly from markup language and contents, the full analysis of tables published as images requires the conversion of discrete data into structured information. This paper presents a novel framework to convert a table image into its syntactic representation through the relationships between its cells. In order to reconstruct the syntactic structures of a table, we build a cell relationship network to predict the neighbors of each cell in four directions. During the training stage, a distance-based sample weight is proposed to handle the class imbalance problem. According to the detected relationships, the table is represented by a weighted graph that is then employed to infer the basic syntactic table structure. Experimental evaluation of the proposed framework using two datasets demonstrates the effectiveness of our model for cell relationship detection and table structure inference.
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