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A PGM-based System for Arabic HandwrittenWord Recognition

机译:基于PGM的阿拉伯手写单词识别系统

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This paper describes a system for off-line recognition of handwritten Arabic words. It uses simple and easily extractable features to construct feature vectors for words in the vocabulary. Some of these features are statistical, based on pixel distributions and local pixel configurations. Others are structural, based on the presence of ascenders, descenders and diacritic points. The system is evolved based on horizontal and vertical Hidden Markov Models and Dynamic Bayesian Network. Our strategy consists of looking for various architectures and selecting those which provide the best recognition performance. Experiments on handwritten Arabic words from IFN/ENIT database and ancient manuscripts strongly support the feasibility of the proposed system. The recognition rates achieve 91.89% (IFN/ENIT) and 94.61% (ancient manuscripts).
机译:本文介绍了一种用于手写阿拉伯文字离线识别的系统。它使用简单且易于提取的特征来构建词汇表中单词的特征向量。其中一些功能是统计性的,基于像素分布和局部像素配置。其他是结构性的,基于上升,下降和变音符号的存在。该系统是基于水平和垂直的隐马尔可夫模型以及动态贝叶斯网络进行演化的。我们的策略包括寻找各种架构并选择提供最佳识别性能的架构。来自IFN / ENIT数据库的手写阿拉伯语单词和古代手稿的实验有力地支持了该系统的可行性。识别率达到91.89%(IFN / ENIT)和94.61%(古代手稿)。

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