使用前景和背景特征的文档图像中的表检测

Saman Arif, F. Shafait
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引用次数: 32

摘要

表检测是许多文档分析系统中的一个重要步骤。由于表格布局、编码技术的多样性以及表格区域与非表格文档元素的相似性,这是一个难题。早期的表检测方法基于启发式规则,或者需要额外的PDF元数据。最近提出的基于机器学习的方法已经显示出良好的效果。本文演示了这些表检测技术的性能改进。提出的解决方案是基于观察到表往往包含更多的数字数据,因此它应用颜色编码/颜色作为区分数字和文本数据的信号。基于深度学习的Faster R-CNN用于从文档图像中检测表格区域。为了衡量我们提出的解决方案的性能,使用了公开可用的UNLV数据集。与同类最佳策略相比,性能指标表明有所改善。
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Table Detection in Document Images using Foreground and Background Features
Table detection is an important step in many document analysis systems. It is a difficult problem due to the variety of table layouts, encoding techniques and the similarity of tabular regions with non-tabular document elements. Earlier approaches of table detection are based on heuristic rules or require additional PDF metadata. Recently proposed methods based on machine learning have shown good results. This paper demonstrates performance improvement to these table detection techniques. The proposed solution is based on the observation that tables tend to contain more numeric data and hence it applies color coding/coloration as a signal for telling apart numeric and textual data. Deep learning based Faster R-CNN is used for detection of tabular regions from document images. To gauge the performance of our proposed solution, publicly available UNLV dataset is used. Performance measures indicate improvement when compared with best in-class strategies.
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