灰度文档图像中使用最短路径的字符分割

Jia Tse, Christopher Jones, Dean Curtis, E. Yfantis
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引用次数: 28

摘要

高识别率的光学字符识别(OCR)系统的开发具有一定的挑战性。造成OCR错误的主要原因之一是涂抹字符。导致字符涂抹的原因有几个,如扫描质量差和二值化技术差。典型的字符分割方法分为三类:基于图像的、基于识别的和基于整体的。在这些方法中,分割路径可以是线性的,也可以是非线性的。本文提出了一种非线性的灰度文档图像字符分割方法。我们的方法首先确定字符是否使用一般字符特征涂抹在一起。使用最短路径方法找到正确的分割路径。我们在一组大约2000个涂抹字符上实现了95%的分割准确率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
An OCR-independent character segmentation using shortest-path in grayscale document images
An optical character recognition (OCR) system with a high recognition rate is challenging to develop. One of the major contributors to OCR errors is smeared characters. Several factors lead to the smearing of characters such as bad scanning quality and a poor binarization technique. Typical approaches to character segmentation falls into three major categories: image-based, recognition-based, and holistic-based. Among these approaches, the segmentation path can be linear or non-linear. Our paper proposes a non-linear approach to segment characters on grayscale document images. Our method first determines whether characters are smeared together using general character features. The correct segmentation path is found using a shortest path approach. We achieved a segmentation accuracy of 95% over a set of about 2,000 smeared characters.
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