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A Hybrid Neuro-Symbolic Approach for Arabic Handwritten Word Recognition

机译:阿拉伯手写单词识别的混合神经符号方法

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摘要

In this article, we suggest a system that automatically constructs knowledge based artificial neural networks (KBANN) for the holistic recognition of handwritten Arabic words in limited lexicons. To build a neuro-symbolic KBANN classifier for a given vocabulary, ideal samples of its words are first submitted to a structural feature extraction module. The analysis of the presence and possible occurrence numbers for these features in the considered lexicon enables to generate a symbolic knowledge base reflecting a hierarchical classification of the words. A rules-to-network translation algorithm uses this knowledge to build a multilayer neural network. It determines precisely its architecture and initializes its connections with specific values rather than random values, as is the case in classical neural networks. This construction approach provides the network with theoretical knowledge and reduces the training stage, which remains necessary because of styles and writing conditions variability. After this empirical training stage using real examples, the network acquires a final topology, which allows it to recognize new handwritten words. The proposed method has been tested on the automated construction of neuro-symbolic classifiers for two Arabic lexicons: literal amounts and city names. The application of this approach to the recognition of handwritten words or characters in different scripts and languages is also considered.
机译:在本文中,我们建议一种系统,该系统可自动构建基于知识的人工神经网络(KBANN),以在有限词典中全面识别手写阿拉伯语单词。为了为给定的词汇建立神经符号的KBANN分类器,首先将其单词的理想样本提交给结构特征提取模块。对所考虑的词典中这些特征的存在和可能出现的数目的分析使得能够生成反映单词的分级分类的符号知识库。规则到网络的转换算法使用此知识来构建多层神经网络。它可以精确地确定其体系结构,并使用特定值而不是随机值来初始化其连接,而经典神经网络就是这种情况。这种构造方法为网络提供了理论知识,并减少了训练阶段,由于样式和书写条件的可变性,这仍然是必需的。在使用实际示例进行了经验培训之后,网络获得了最终的拓扑,从而使它可以识别新的手写单词。对两种阿拉伯语词典:文字数量和城市名称的神经符号分类器的自动构造进行了测试。还考虑了该方法在识别不同脚本和语言中的手写单词或字符上的应用。

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