无参数表检测方法

Laiphangbam Melinda, C. Bhagvati
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引用次数: 8

摘要

本文提出了两种无参数表检测方法:一种用于封闭表,另一种用于开放表。统一的思想是多高斯分析。文本高度直方图的多高斯分析将文档内容分为文本块和非文本块。封闭表被归类为非文本表,它们与非文本块的识别类似于许多早期删除分隔符的方法。由于多高斯分析,我们不需要任何参数来识别行和列,并将它们与文本块区分开来。打开的表最初被分类为文本块,并通过将多高斯分析扩展到文本块的高度和宽度来检测。通过多高斯分析将文本块分为三类。这些组用于对表格单元格进行分类,并将它们与文本块区分开来。合并表块以获得表区域。对各种印度文字报纸和ICDAR2013表竞赛数据集的评估表明,我们的方法在表识别方面达到了90%以上。我们算法的优势在于它是一种无参数的方法,不需要训练数据集。
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Parameter-Free Table Detection Method
In this paper, we propose two parameter-free table detection methods: one for the closed tables and other for open tables. The unifying idea is multigaussian analysis. Multigaussian analysis of text height histograms classifies the document content into text and non-text blocks. Closed tables are classified as non-text and their identification from the non-text blocks is similar to many earlier methods that remove the separators. We do not need any parameters to identify rows and columns and discriminate them from text blocks because of multigaussian analysis. Open tables are initially classified as text blocks and are detected by extending the multigaussian analysis to the heights and widths of text blocks. The text-blocks are grouped into three categories by multigaussian analysis. These groups are used to classify table cells and distinguish them from text blocks. Table blocks are merged to obtain the table region. Evaluation on various Indic script newspapers and ICDAR2013 table competition dataset shows that our methods achieve more than 90% in table recognition. The strength of our algorithm is that it is a parameter-free approach and requires no training dataset.
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