Classification and Information Extraction for Complex and Nested Tabular Structures in Images

A. Riad, Christopher Sporer, S. S. Bukhari, A. Dengel
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引用次数: 8

Abstract

Understanding of technical documents, like manuals, is one of the most important steps in automatic reporting and/or troubleshooting of defects. The majority of the relevant information exists in tabular structure. There are some solutions for extracting tabular structures from text. However, it is still a big issue to extract tabular information from images and, on top of that, from complex and nested tables. This paper aims to propose classification and information extraction methods for complex tabular structures in document images. These are hybrid approaches using both image layout and OCRed text. The proposed methods outperform on a real-world technical documents dataset from a German railway company (Deutsche Bahn AG) as compared to other state-of-the-art approaches. As a result, the proposed approaches won the competition held by Deutsche Bahn AG in 2016 against other participating research groups and companies.
图像中复杂和嵌套表格结构的分类与信息提取
理解技术文档(如手册)是自动报告和/或故障排除缺陷的最重要步骤之一。大多数相关信息以表格形式存在。从文本中提取表格结构有一些解决方案。然而,从图像中提取表格信息仍然是一个大问题,最重要的是,从复杂和嵌套的表中提取表格信息。本文旨在提出文档图像中复杂表格结构的分类和信息提取方法。这些都是使用图像布局和OCRed文本的混合方法。与其他最先进的方法相比,所提出的方法在来自德国铁路公司(Deutsche Bahn AG)的真实技术文档数据集上表现更好。因此,提议的方法在2016年由德国联邦铁路公司举办的比赛中击败了其他参与研究小组和公司。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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