一种新的两阶段波斯语手写字符识别方案

Alireza Alaei, P. Nagabhushan, U. Pal
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引用次数: 27

摘要

本文提出了一种两阶段的波斯语手写孤立字符识别方案。在第一阶段,对形状相近的汉字进行分组,从32个波斯语基本汉字中得到8组。在第二阶段,进一步考虑包含一个以上相似形状字符的组以进行最终识别。特征提取基于欠采样位图技术和改进的链码方向频率。对于第一阶段特征,我们基于49个不重叠7×7窗口图的下采样位图计算49维特征。从49个重叠的9×9窗口图中计算196维链码方向频率,并将其用作该方案第二阶段的特征。分类器是一对一的支持向量机(SVM)。我们在波斯语手写字符的标准数据集上评估了我们的方案。使用36682个样本进行训练,我们在另外15338个样本上测试了我们的方案,在考虑8类和32类问题时,我们分别获得了98.10%和96.68%的正确识别率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Two-Stage Scheme for the Recognition of Persian Handwritten Characters
In this paper, a two-stage scheme for the recognition of Persian handwritten isolated characters is proposed. In the first stage, similar shaped characters are categorized into groups and as a result, 8 groups are obtained from 32 Persian basic characters. In the second stage, the groups containing more than one similar shape characters are considered further for the final recognition. Feature extraction is based on under sampled bitmaps technique and modified chain-code direction frequencies. For the first stage features, we compute 49-dimension features based on under sampled bitmaps from 49 non-overlapping 7×7 window-maps. 196-dimension chain-code direction frequencies from 49 overlapping 9×9 window-maps are computed and used as features for the second stage of the proposed scheme. Classifiers are one-against-other support vector machines (SVM). We evaluated our scheme on a standard dataset of Persian handwritten characters. Using 36682 samples for training, we tested our scheme on other 15338 samples and obtained 98.10% and 96.68% correct recognition rates when considered 8-class and 32-class problems, respectively.
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