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Neuro-Markovian hybrid system for handwritten Arabic word recognition

机译:神经-马尔可夫混合系统用于手写阿拉伯语单词识别

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Automatic reading of handwritten words is a difficult problem, not only because of the great amount on variations involved in the shape of characters, but also because of the ambiguities. Several factors permit to judge of the problem complexity. In this paper, a hybrid recognition system using neural networks and hidden Markov models is presented for reading bank cheques. The word images are transformed into portions of characters called graphemes which are analysed based on their shape (geometrical and metrical features). The word is then coded by a sequence of observations similar to human perception. The results of the above step will be used at the recognition level, which is based on probabilistic models. Experimental results obtained on a database of 5000 samples are reported and compared.
机译:手写单词的自动阅读是一个难题,不仅因为字符形状涉及大量变化,而且还因为模棱两可。有几个因素可以判断问题的复杂性。在本文中,提出了一种使用神经网络和隐马尔可夫模型的混合识别系统,用于读取银行支票。单词图像被转换成称为字素的字符部分,这些字符根据其形状(几何和度量特征)进行分析。然后通过类似于人类感知的一系列观察对单词进行编码。上述步骤的结果将在基于概率模型的识别级别上使用。报告并比较了在5000个样品的数据库上获得的实验结果。

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