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A Neural Approach for Text Extraction from Scholarly Figures

机译:从学术人物中提取文本的神经方法

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In recent years, the problem of scene text extraction from images has received extensive attention and significant progress. However, text extraction from scholarly figures such as plots and charts remains an open problem, in part due to the difficulty of locating irregularly placed text lines. To the best of our knowledge, literature has not described the implementation of a text extraction system for scholarly figures that adapts deep convolutional neural networks used for scene text detection. In this paper, we propose a text extraction approach for scholarly figures that forgoes preprocessing in favor of using a deep convolutional neural network for text line localization. Our system uses a publicly available scene text detection approach whose network architecture is well suited to text extraction from scholarly figures. Training data are derived from charts in arXiv papers which are extracted using Allen Institute's pdffigures tool. Since this tool analyzes PDF data as a container format in order to extract text location through the mechanisms which render it, we were able to gather a large set of labeled training samples. We show significant improvement from methods in the literature, and discuss the structural changes of the text extraction pipeline.
机译:近年来,从图像中提取场景文本的问题受到了广泛的关注和重大进展。但是,从学术人物(如曲线图和图表)中提取文本仍然是一个未解决的问题,部分原因是难以找到不规则放置的文本行。据我们所知,文献还没有描述一种适用于学术人物的文本提取系统的实现,该系统采用了用于场景文本检测的深度卷积神经网络。在本文中,我们为学术人物提出了一种文本提取方法,该方法放弃了预处理,转而使用深度卷积神经网络进行文本行定位。我们的系统使用可公开获取的场景文本检测方法,该方法的网络体系结构非常适合从学术人物中提取文本。培训数据来自arXiv论文中的图表,这些图表是使用Allen Institute的pdffigures工具提取的。由于此工具将PDF数据分析为容器格式,以便通过呈现它的机制提取文本位置,因此我们能够收集大量带标签的训练样本。我们从文献中的方法中显示出显着的改进,并讨论了文本提取管道的结构变化。

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