Recognition of Degraded Handwritten Characters Using Local Features

Markus Diem, Robert Sablatnig
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引用次数: 41

Abstract

The main problems of Optical Character Recognition (OCR) systems are solved if printed latin text is considered. Since OCR systems are based upon binary images, their results are poor if the text is degraded. In this paper a codex consisting of ancient manuscripts is investigated. Due to environmental effects the characters of the analyzed codex are washed out which leads to poor results gained by state of the art binarization methods. Hence, a segmentation free approach based on local descriptors is being developed. Regarding local information allows for recognizing characters that are only partially visible. In order to recognize a character the local descriptors are initially classified with a Support Vector Machine (SVM) and then identified by a voting scheme of neighboring local descriptors. State of the art local descriptor systems are evaluated in this paper in order to compare their performance for the recognition of degraded characters.
利用局部特征识别退化手写字符
将印刷拉丁文本纳入光学字符识别(OCR)系统,解决了OCR系统的主要问题。由于OCR系统基于二值图像,如果文本被降级,其结果就会很差。本文研究了一个由古代手抄本组成的手抄本。由于环境的影响,所分析的法典的特征被洗掉,这导致较差的结果获得的最先进的二值化方法。因此,一种基于局部描述符的无分割方法正在被开发。关于本地信息允许识别仅部分可见的字符。为了识别字符,首先使用支持向量机对局部描述符进行分类,然后使用邻近局部描述符的投票方案进行识别。本文对现有的局部描述符系统进行了评价,比较了它们在退化字符识别方面的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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