Acoustic-support vector machines approach to detect spoken Arabic language

Mohammed Eltayeb, M. E. Mustafa
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引用次数: 3

Abstract

Spoken Language detection is the process of either accepting or rejecting a language identity from its sample speech. The process is essential as it represents the first phase for a complete multilingual-enabled speech processing applications. However, most efforts are focused on European languages and the research is relatively few for other languages such as Arabic. This is mainly due to the lack of tools and resources, e.g., Arabic speech corpora. Furthermore, the majority of the proposed approaches for Arabic detection are language-dependent rather than independent ones, in which the model uses only acoustic properties of speech signal. This paper describes an ongoing research to develop a language independent Modern Standard Arabic (MSA) detector, which is a binary Support Vector Machines (SVM) classifier that is based on speech acoustic features. In that context, the classifier is used to classify speech utterance into either classA, which represents the Arabic language or classNA to denote non-Arabic languages. As most currently available speech corpora are license restricted and their languages are selected based on population or geographical distribution, a new multilingual speech corpus with six languages is being created. Languages in this created corpus have some sort of similarity with MSA, e.g., Arabic and Hebrew. This property adds another dimension of complexity to the classification task, but it is essential as one of the major goal of this research is to measure whether the efficiency of the MSA model will be preserved on the same level when tested with other languages that have some sort of relationship with the MSA or other Arabic dialect. This will be referred to in this paper as stability-against-similarity of the model.
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声学支持向量机方法检测阿拉伯语口语
口语检测就是从样本语音中接受或拒绝语言身份的过程。这个过程是必不可少的,因为它代表了一个完整的多语言语音处理应用程序的第一个阶段。然而,大多数的努力都集中在欧洲语言上,对阿拉伯语等其他语言的研究相对较少。这主要是由于缺乏工具和资源,例如阿拉伯语语音语料库。此外,大多数提出的阿拉伯语检测方法是语言依赖的,而不是独立的,其中模型仅使用语音信号的声学特性。本文描述了一种独立于语言的现代标准阿拉伯语(MSA)检测器的研究,该检测器是一种基于语音声学特征的二进制支持向量机(SVM)分类器。在这种情况下,分类器用于将语音话语分为a类(代表阿拉伯语)和na类(表示非阿拉伯语)。由于目前可用的语料库大多受许可证限制,且语言选择基于人口或地理分布,因此正在创建一个包含六种语言的新型多语言语料库。这个创建的语料库中的语言与MSA有某种相似之处,例如阿拉伯语和希伯来语。这一特性为分类任务增加了另一个维度的复杂性,但它是必不可少的,因为本研究的主要目标之一是衡量当与MSA或其他阿拉伯方言有某种关系的其他语言进行测试时,MSA模型的效率是否会保持在同一水平上。这将在本文中称为模型的抗相似性稳定性。
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