CLIASR:一种组合的自动语音识别和语言识别系统

Khaled Lounnas, H. Satori, H. Teffahi, Mourad Abbas, Mohamed Lichouri
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引用次数: 12

摘要

在本文中,我们的目标是描述一种新技术,这是一种组合的自动语音识别和语言识别系统,它使用ASR和LI技术,包括识别语音数字后识别其语言。内部语料库主要用于基于语音的多语言识别和由双语数字组成的语音识别任务,其中包含主要以现代标准阿拉伯语(MSA)和Amazigh摩洛哥方言两种语言使用的十个数字。首先,我们开发了语言识别阶段,这是我们混合系统的基础,它作为我们系统的前端,服务于口语检测。通过将输出分配到适当的基于隐模型马尔可夫(HMM)的识别系统(阿拉伯语或Amazigh语),这有助于识别任务,从而有效地提高对双语口语数字的识别。为此,在我们的CLIASR系统上调整了一组参数,包括分类器参数、特征向量、HMM-GMM参数,取得了较好的效果。结果表明,对于给定的双语混合语音语料库,我们提出的LI-ASR系统比普通的ASR系统性能提高了33%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
CLIASR: A Combined Automatic Speech Recognition and Language Identification System
In this paper, we aim to describe a novel technique which is a Combined Automatic Speech Recognition and Language Identification System that uses both ASR and LI technologies which consists of the recognition of spoken digits after identifying their language. An in-house corpus was used mainly for both speech-based multi-lingual identification and speech recognition tasks made of bilingual digits sounds that contains ten digits spoken mainly in two languages: Modern Standard Arabic (MSA) and Amazigh Moroccan dialect. First of all, we develop the Language Identification stage which is the basis of our hybrid system which behaves as front-end of our system that serves for spoken language detection. This facilitates the task of recognition by allocating the output to the appropriate Hidden Model Markov (HMM) based recognition system (Arabic or Amazigh) which improves recognition of a bilingual spoken digit efficiently. For this purpose, a set of parameters were adjusted on our CLIASR system to achieve good results, including classifier parameters, feature vector, and HMM-GMM parameters. The results show that our proposed LI-ASR system performs 33% better than an ordinary ASR for a given bilingual mixed speech corpus.
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