TableNet: Deep Learning Model for End-to-end Table Detection and Tabular Data Extraction from Scanned Document Images

Shubham Paliwal, D. Vishwanath, R. Rahul, Monika Sharma, L. Vig
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引用次数: 107

Abstract

With the widespread use of mobile phones and scanners to photograph and upload documents, the need for extracting the information trapped in unstructured document images such as retail receipts, insurance claim forms and financial invoices is becoming more acute. A major hurdle to this objective is that these images often contain information in the form of tables and extracting data from tabular sub-images presents a unique set of challenges. This includes accurate detection of the tabular region within an image, and subsequently detecting and extracting information from the rows and columns of the detected table. While some progress has been made in table detection, extracting the table contents is still a challenge since this involves more fine grained table structure(rows & columns) recognition. Prior approaches have attempted to solve the table detection and structure recognition problems independently using two separate models. In this paper, we propose TableNet: a novel end-to-end deep learning model for both table detection and structure recognition. The model exploits the interdependence between the twin tasks of table detection and table structure recognition to segment out the table and column regions. This is followed by semantic rule-based row extraction from the identified tabular sub-regions. The proposed model and extraction approach was evaluated on the publicly available ICDAR 2013 and Marmot Table datasets obtaining state of the art results. Additionally, we demonstrate that feeding additional semantic features further improves model performance and that the model exhibits transfer learning across datasets. Another contribution of this paper is to provide additional table structure annotations for the Marmot data, which currently only has annotations for table detection.
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tableet:端到端表检测和扫描文档图像表数据提取的深度学习模型
随着移动电话和扫描仪被广泛用于拍摄和上传文件,从零售收据、保险索赔表格和财务发票等非结构化文件图像中提取信息的需求变得越来越迫切。实现这一目标的一个主要障碍是,这些图像通常包含表格形式的信息,从表格子图像中提取数据面临一系列独特的挑战。这包括对图像中的表格区域进行准确检测,然后从检测到的表格的行和列中检测和提取信息。虽然在表检测方面取得了一些进展,但提取表内容仍然是一个挑战,因为这涉及到更细粒度的表结构(行和列)识别。先前的方法试图使用两个独立的模型分别解决表检测和结构识别问题。在本文中,我们提出了TableNet:一种新颖的端到端深度学习模型,用于表检测和结构识别。该模型利用表检测和表结构识别这两个任务之间的相互依赖关系,分割出表和列区域。然后从已识别的表格子区域中进行基于语义规则的行提取。在公开可用的ICDAR 2013和Marmot Table数据集上对所提出的模型和提取方法进行了评估,获得了最先进的结果。此外,我们证明了提供额外的语义特征进一步提高了模型的性能,并且模型显示了跨数据集的迁移学习。本文的另一个贡献是为Marmot数据提供了额外的表结构注释,目前Marmot数据只有表检测注释。
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