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Online Bangla Word Recognition Using Sub-Stroke Level Features and Hidden Markov Models

机译:使用次笔划水平特征和隐马尔可夫模型的在线孟加拉语单词识别

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For automatic recognition of Bangla script, only a few studies are reported in the literature, which is in contrast to the role of Bangla as one of the world's major scripts. In this paper we present a new approach to online Bangla handwriting recognition and one of the first to consider cursively written words instead of isolated characters. Our method uses a sub-stroke level feature representation of the script and a writing model based on hidden Markov models. As for the latter an appropriate internal structure is crucial, we investigate different approaches to defining model structures for a highly compositional script like Bangla. In experimental evaluations of a writer independent Bangla word recognition task we show that the use of context-dependent sub-word units achieves quite promising results and significantly outperforms alternatively structured models.
机译:为了自动识别孟加拉语脚本,文献中仅报道了很少的研究,这与孟加拉语作为世界主要脚本之一的作用形成了鲜明对比。在本文中,我们提出了一种在线Bangla手写识别的新方法,并且是第一种考虑草书书写的单词而不是孤立字符的方法。我们的方法使用脚本的笔画级特征表示和基于隐马尔可夫模型的书写模型。至于后者,适当的内部结构至关重要,我们研究了为像Bangla这样的高度组成的脚本定义模型结构的不同方法。在对作者独立的孟加拉语单词识别任务的实验评估中,我们表明,上下文相关子单词单元的使用获得了相当可观的结果,并且明显优于替代结构化模型。

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