使用SVM的重音手写字符识别-在法语中的应用

De Cao Tran, P. Franco, J. Ogier
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引用次数: 17

摘要

本文研究了法语手写体中重音和非重音字符的识别问题。重音字符增加了要识别的类的数量。像支持向量机这样的强大分类器的性能会因为重音的存在而下降。本文将重音字符分成两个部分:词根字符或字母和重音。这两个部分分别被识别,并结合结果重建重音字符。这种方法避免了字符和重音的组合,这会导致要考虑的类的数量增加。对于手写字符的识别,采用了在线和离线相结合的特征。本文说明了法语重音和非重音字符和数字可以通过这类数据的组合来描述。而且,特征组合的数量并不一定很高。实验结果表明,基于45个特征的手写体字符识别在识别率和响应时间上可与UNIPEN和IRONOFF等标准数据库相媲美。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Accented Handwritten Character Recognition Using SVM - Application to French
This paper deals with the problem of recognizing accented and non-accented characters in French handwriting. Accented characters increase the number of classes to be recognized. The performances of powerful classifier such as SVM are declined by the presence of accents. In this paper, an accented character is segmented into two parts: the root character or letter and the accent. These two parts are recognized separately, and the results are combined to rebuild the accented character. This approach avoids the combination of characters and accents that causes an increase in the number of classes to be considered. For handwritten character recognition, the combination of on-line and off-line features is used. The paper illustrates that French accented and non-accented characters and digits can be described by a combination of this kind of data. Moreover, the number of features of the combination is not necessarily very high. The experimental investigations show that the handwritten character recognition built on 45 selected features can compete with recognition rate and response time of other well known tested on standard databases such as UNIPEN and IRONOFF.
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