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HMM Based Model for Arabic Word Conjugation Recognition and Word Reconstitution from Morphological Concepts

机译:基于HMM的阿拉伯语共轭识别和词汇重构模型

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In this paper we present a new Markovian approach for the training and the recognition of the conjugation (e.g number, gender, tense) of a large vocabulary of Arabic decomposable words. The recognition is done from global structural primitives (e.g ascender, descender, loop, diacritics). Our system is based on 12 Hidden Markov Models (HMMs), each one is specific in one inflectional conjugation element (e.g feminine, masculine, singular, dual, plural, present, past), to help classification in a vocabulary of 5757 words. Our HMMs architectures integrate linguistic properties of inflectional conjugation of an Arabic radical. This work is part of a system conceived to recognize words within the recognition of their morphological concepts (root, schemes and conjugations). Experiments, conducted on a corpus of 17357 words images, gave encouraging rates.
机译:在本文中,我们提出了一种新的马尔可夫方法,培训和识别阿拉伯可分解词汇的大词汇量的共轭(例如,性别,时态)。识别是从全局结构基元(例如升级,下降者,循环,逆转器)完成的。我们的系统基于12个隐藏的马尔可夫模型(HMMS),每个系统在一个拐点缀合元素中特异性(例如女性,男性化,奇异,双重,复数,目前,过去),以帮助分类5757字的词汇。我们的HMMS架构整合了阿拉伯自由基的拐点折射的语言特性。这项工作是构思的系统的一部分,以识别出识别其形态概念(根,方案和共轭)的识别。在17357个单词图像的语料库上进行的实验,给出了令人鼓舞的汇率。

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