手写泰米尔字符的两阶段识别方案

U. Bhattacharya, S. Ghosh, S. K. Parui
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引用次数: 58

摘要

印度是一个多语言多文字的国家,有超过18种语言和10种不同的主要文字。对这些印度文字的手写体的识别研究工作还不够。泰米尔语是印度南部、新加坡、马来西亚和斯里兰卡的一种官方和流行的文字,它有一个很大的字符集,其中包括许多复合字。只有少数的工作对这种大字符集的手写识别已在文献中报道。最近,惠普印度实验室开发了一个手写泰米尔文字数据库。在本文中,我们描述了一种基于该数据库的离线识别方法。该方法分为两个阶段。在第一阶段,我们应用无监督聚类方法来创建较少数量的手写泰米尔字符类组。在第二阶段,我们考虑在每个较小的组中使用监督分类技术进行最终识别。这两个阶段所考虑的特性是不同的。提出的两阶段识别方案在现有数据库的训练集和测试集上都提供了可接受的分类精度。
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A Two Stage Recognition Scheme for Handwritten Tamil Characters
India is a multilingual multiscript country with more than 18 languages and 10 different major scripts. Not enough research work towards recognition of handwritten characters of these Indian scripts has been done. Tamil, an official as well as popular script of the southern part of India, Singapore, Malaysia, and Sri Lanka has a large character set which includes many compound characters. Only a few works towards handwriting recognition of this large character set has been reported in the literature. Recently, HP Labs India developed a database of handwritten Tamil characters. In the present paper, we describe an off-line recognition approach based on this database. The proposed method consists of two stages. In the first stage, we apply an unsupervised clustering method to create a smaller number of groups of handwritten Tamil character classes. In the second stage, we consider a supervised classification technique in each of these smaller groups for final recognition. The features considered in the two stages are different. The proposed two-stage recognition scheme provided acceptable classification accuracies on both the training and test sets of the present database.
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