Impact of Character Models Choice on Arabic Text Recognition Performance

Fouad Slimane, R. Ingold, S. Kanoun, A. Alimi, J. Hennebert
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引用次数: 21

Abstract

We analyze in this paper the impact of sub-models choice for automatic Arabic printed text recognition based on Hidden Markov Models (HMM). In our approach, sub-models correspond to characters shapes assembled to compose words models. One of the peculiarities of Arabic writing is to present various character shapes according to their position in the word. With 28 basic characters, there are over 120 different shapes. Ideally, there should be one sub model for each different shape. However, some shapes are less frequent than others and, as training databases are finite, the learning process leads to less reliable models for the infrequent shapes. We show in this paper that an optimal set of models has then to be found looking for the trade-off between having more models capturing the intricacies of shapes and grouping the models of similar shapes with other. We propose in this paper different sets of sub-models that have been evaluated using the Arabic Printed Text Image (APTI) Database freely available for the scientific community.
字符模型选择对阿拉伯语文本识别性能的影响
本文分析了子模型选择对基于隐马尔可夫模型(HMM)的阿拉伯语印刷文本自动识别的影响。在我们的方法中,子模型对应于组合成单词模型的字符形状。阿拉伯文字的特点之一是根据它们在单词中的位置呈现出不同的字符形状。有28个基本汉字,有超过120种不同的形状。理想情况下,每个不同的形状应该有一个子模型。然而,有些形状比其他形状更不常见,并且由于训练数据库是有限的,学习过程导致不常见形状的模型不太可靠。我们在本文中表明,必须找到一组最优模型,以便在拥有更多捕获形状复杂性的模型和将相似形状的模型与其他模型分组之间进行权衡。我们在本文中提出了不同的子模型集,这些子模型集已经使用阿拉伯语印刷文本图像(APTI)数据库对科学界免费提供的数据库进行了评估。
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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