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Enhancing Table of Contents Extraction by System Aggregation

机译:通过系统聚合增强目录提取

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The OCR-ed books usually lack logical structure information, such as chapters, sections. To enrich the navigation experience of users, several approaches have been proposed to extract table of contents (ToC) from digitised books. In this paper, we introduce an aggregation-based method to enhance ToC extraction using system submissions from the ICDAR Book structure extraction competitions (2009, 2011, and 2013). Our experimental results show that the union of two best approaches outperforms the existing approaches using both the title-based and link-based evaluation measures on a dataset of more than 2000 books. By efficiently combining the results of existing systems in an unsupervised way, we consistently beat the state-of-the-art in book structure extraction, with performance improvements that are statistically significant.
机译:OCR版本的书籍通常缺少逻辑结构信息,例如章节,章节。为了丰富用户的导航体验,已经提出了几种从数字化书籍中提取目录(ToC)的方法。在本文中,我们介绍了一种基于聚集的方法,以利用ICDAR Book结构抽取竞赛(2009年,2011年和2013年)的系统提交来增强ToC抽取。我们的实验结果表明,在超过2000本书的数据集上,使用基于标题的评估方法和基于链接的评估方法,两种最佳方法的结合要优于现有方法。通过以无人监督的方式有效地合并现有系统的结果,我们在书本结构提取方面始终领先于最新技术,并且在统计上具有显着的性能改进。

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