论文标题
DOCBED:具有复杂布局文档的多阶段OCR解决方案
DocBed: A Multi-Stage OCR Solution for Documents with Complex Layouts
论文作者
论文摘要
报纸的数字化是出于许多原因而引起的,包括保存历史,可访问性和搜索能力等。而诸如科学文章和杂志之类的文档的数字化在文献中很普遍,这是报纸数字化的主要挑战之一,是其复杂的布局在其复杂的布局中(例如,涵盖多个列的文章,文本为图像中断,以供您分析),以供您进行分析。这项工作在三个方面的报纸数字化方面为数字化提供了重大突破:首先,释放了来自21个美国21个州的3000个全面,现实世界中的报纸图像的数据集,代表了文档布局分析的各种复杂布局;其次,提出布局细分作为现有光学字符识别(OCR)发动机的先驱,其中探索了多个最新的图像分割模型和几种后处理方法,以进行文档布局分割;第三,为孤立的布局细分和端到端的OCR提供详尽且结构化的评估协议。
Digitization of newspapers is of interest for many reasons including preservation of history, accessibility and search ability, etc. While digitization of documents such as scientific articles and magazines is prevalent in literature, one of the main challenges for digitization of newspaper lies in its complex layout (e.g. articles spanning multiple columns, text interrupted by images) analysis, which is necessary to preserve human read-order. This work provides a major breakthrough in the digitization of newspapers on three fronts: first, releasing a dataset of 3000 fully-annotated, real-world newspaper images from 21 different U.S. states representing an extensive variety of complex layouts for document layout analysis; second, proposing layout segmentation as a precursor to existing optical character recognition (OCR) engines, where multiple state-of-the-art image segmentation models and several post-processing methods are explored for document layout segmentation; third, providing a thorough and structured evaluation protocol for isolated layout segmentation and end-to-end OCR.