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Detecting Sentences Types in the Standard Arabic Language

机译:检测标准阿拉伯语中的句子类型

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摘要

The standard Arabic language, like many other languages, contains a prosodic feature, which is hidden in the speech signal. The studies related to this field are still in the preliminary stages. This fact results in restraining the performance of the communication tools. The prosodic study allows people having all the communication tools needed in their native language. Therefore, we propose, in this paper, a prosodic study between the various types of sentences in the standard Arabic language. The sentences are recognized according to three modalities as the following: declarative, interrogative and exclamatory sentences. The results of this study will be used to synthesize the different types of pronunciation that can be exploited in several domains namely the man-machine communication. To this end, we developed a specific dataset, consisting of the three types of sentences. Then, we tested two sets of features: prosodic features (Fundamental Frequency, Energy and Duration) and spectrum features (Mel-Frequency Cepstral Coefficients and Linear Predictive Coding) as well their combination. We adopted the Multi-Class Support Vector Machine (MC-SVM) as classifier. The experimental results are very encouraging.
机译:与许多其他语言一样,标准的阿拉伯语包含一个韵律特征,隐藏在语音信号中。与该领域相关的研究仍处于初步阶段。这一事实导致限制通信工具的性能。韵律研究允许拥有母语所需的所有通信工具的人。因此,在本文中,我们提出了标准阿拉伯语中各种句子之间的韵律研究。句子根据三种方式识别为以下三种方式:声明性,疑问和惊叹句。本研究的结果将用于合成可以在多个域中利用的不同类型的发音,即人机通信。为此,我们开发了一个特定的数据集,由三种类型的句子组成。然后,我们测试了两组特征:韵律特征(基本频率,能量和持续时间)和频谱特征(MEL频率谱系数和线性预测编码)也是它们的组合。我们采用了多级支持向量机(MC-SVM)作为分类器。实验结果非常令人鼓舞。

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