Graphical Object Detection in Document Images

Ranajit Saha, Ajoy Mondal, C. V. Jawahar
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引用次数: 47

Abstract

Graphical elements: particularly tables and figures contain a visual summary of the most valuable information contained in a document. Therefore, localization of such graphical objects in the document images is the initial step to understand the content of such graphical objects or document images. In this paper, we present a novel end-to-end trainable deep learning based framework to localize graphical objects in the document images called as Graphical Object Detection ( GOD ). Our framework is data-driven and does not require any heuristics or meta-data to locate graphical objects in the document images. The GOD explores the concept of transfer learning and domain adaptation to handle scarcity of labeled training images for graphical object detection task in the document images. Performance analysis carried out on the various public benchmark data sets: ICDAR -2013, ICDAR - POD2017 and UNLV shows that our model yields promising results as compared to state-of-the-art techniques.
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文档图像中的图形对象检测
图形元素:特别是表格和图形,包含文件中最有价值信息的视觉摘要。因此,对这些图形对象在文档图像中的定位是理解这些图形对象或文档图像内容的第一步。在本文中,我们提出了一种新颖的端到端可训练的基于深度学习的框架来定位文档图像中的图形对象,称为图形对象检测(GOD)。我们的框架是数据驱动的,不需要任何启发式方法或元数据来定位文档图像中的图形对象。探讨了迁移学习和领域自适应的概念,以处理文档图像中图形目标检测任务中标记训练图像的稀缺性。对各种公共基准数据集(ICDAR -2013、ICDAR - POD2017和UNLV)进行的性能分析表明,与最先进的技术相比,我们的模型产生了有希望的结果。
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