基于模型的退化文档图像的表单元检测和内容提取

DAR '12 Pub Date : 2012-12-16 DOI:10.1145/2432553.2432565
Zhixin Shi, S. Setlur, V. Govindaraju
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引用次数: 4

摘要

本文描述了一种从手写文档图像中检测和提取表格单元格内容的新方法。给定表格的模型和包含表格的文档图像,将检测手绘或预打印的表格,并自动提取表格单元格的内容。所描述的算法被设计用于处理退化的二进制文档图像。目标图像可能包含各种各样的噪声,从杂乱噪声、椒盐噪声到非文本对象(如图形和徽标)。该算法通过检测水平和垂直的表线候选点,有效地消除了多余的噪声,并识别出潜在的匹配表布局候选点。根据水平和垂直表线的交点位置将表表示为矩阵,匹配算法搜索与给定布局模型匹配的最佳表结构,并使用匹配分数来消除虚假的表线候选。然后将最优匹配的候选表用于提取单元格内容。该方法在一组文档页面图像上进行了测试,其中包含来自DARPA MADCAT阿拉伯语手写文档图像数据挑战集的表。初步结果表明,该方法是有效的,能够可靠地从表格单元格中提取文本。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Model based table cell detection and content extraction from degraded document images
This paper describes a novel method for detection and extraction of contents of table cells from handwritten document images. Given a model of the table and a document image containing a table, the hand-drawn or pre-printed table is detected and the contents of the table cells are extracted automatically. The algorithms described are designed to handle degraded binary document images. The target images may include a wide variety of noise, ranging from clutter noise, salt-and-pepper noise to non-text objects such as graphics and logos. The presented algorithm effectively eliminates extraneous noise and identifies potentially matching table layout candidates by detecting horizontal and vertical table line candidates. A table is represented as a matrix based on the locations of intersections of horizontal and vertical table lines, and a matching algorithm searches for the best table structure that matches the given layout model and using the matching score to eliminate spurious table line candidates. The optimally matched table candidate is then used for cell content extraction. This method was tested on a set of document page images containing tables from the challenge set of the DARPA MADCAT Arabic handwritten document image data. Preliminary results indicate that the method is effective and is capable of reliably extracting text from the table cells.
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