大词汇混合DNN/HMM阿拉伯语在线手写识别系统

Omar Khaled Ali Ragab, A. Fahmy, Sherif M. Abdou
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引用次数: 2

摘要

在线阿拉伯手写识别是一个棘手的问题,因为它既草书又不受约束。阿拉伯文字的分析更加复杂,因为大多数字母的上方或下方都有强制性的点/笔画,而且通常是按顺序排列的。此外,阿拉伯语具有丰富的词法和语法,这使得一个好的在线手写系统必须能够处理大量的词汇。以前,隐马尔可夫模型(HMM)的序列重排序已经成功地解决了识别阿拉伯笔迹的大多数困难。最近,深度神经网络(DNN)在与HMM集成时显示出显着的改进。本文介绍了采用DNN/HMM混合模型构建大词汇量阿拉伯语HWR系统所做的工作。该系统采用过分段技术,实现了高效的译码。开发的系统使用由100位作者编写的12k个单词的测试集进行测试,词典大小为125000个单词。该系统在首识别词和前五识别词的准确率分别为71.62%和89.61%,是目前已知的针对大词汇量阿拉伯文HWR的最佳结果。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Large Vocabulary Hybrid DNN/HMM Arabic Online Handwriting Recognition System
Online Arabic handwriting recognition is a di cult problem since it is naturally both cursive and unconstrained. The analysis of Arabic script is further com-plicated due to obligatory dots/stokes that are placed above or below most letters and usually written de-layed in order. In addition, Arabic language is rich in morphology and syntax which makes it a must for a good online handwriting system to handle large vocabulary lexicon. Previously, Hidden Markov Model (HMM) with sequence reordering have provided a successful solution for most of the di culties inherent in recognizing Arabic handwriting. Recently, Deep Neu-ral Networks (DNN) have shown to provide signi cant improvement when integrated with HMM. In this paper we introduce the e orts done to build a large vocabulary Arabic HWR system using hybrid DNN/HMM model. This system used over segmentation to provide e cient decoding. The developed system was tested using a test set of 12k words written by 100 writers with lexicon size of 125k words. The system achieved an accuracy of 71.62%, 89.61% in rst recognized word and top ve recognized words respectively which to our knowledge is the best reported result for large vocabulary Arabic HWR.
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