Wolof Speech Recognition Model of Digits and Limited-Vocabulary Based on HMM and ToolKit

J. K. Tamgno, E. Barnard, C. Lishou, Morgan Richomme
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引用次数: 14

Abstract

This paper is concerned with Automatic Speech Recognition (ASR) using trainable systems. The aim of this work is to build acoustic models for spoken language Wolof. This is done by employing Hidden Markov Models (HMM) and using the different lexicons and knowledge bases of Wolof to train their parameters. Acoustic modeling has been worked out at a phonetic level, allowing general speech recognition applications, even though a simplified task (natural number recognition and Limited-Vocabulary Speech) has been considered for model evaluation. The work performed during the study was built on keywords of the vernacular language Wolof, based on many open source software toolkits, particularly HTK (HMM ToolKit). Much research have been developed in this area; our goal is also to find solution for an innovative approach to Speech Recognition to facilitate access to information and technology to illiterate persons, to build a phonetic crowdsourcing based on acoustic and linguistic features of local languages.
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基于HMM和ToolKit的数字和有限词汇的Wolof语音识别模型
本文研究了基于可训练系统的自动语音识别(ASR)。这项工作的目的是为口语沃洛夫语建立声学模型。这是通过使用隐马尔可夫模型(HMM)和使用Wolof的不同词汇和知识库来训练它们的参数来实现的。声学建模已经在语音层面上完成,允许一般的语音识别应用,即使简化的任务(自然数识别和有限词汇语音)已经被考虑用于模型评估。在研究期间进行的工作是建立在本地语言Wolof的关键字上,基于许多开源软件工具包,特别是HTK (HMM ToolKit)。在这方面已经进行了许多研究;我们的目标是找到一种创新的语音识别方法,为文盲获取信息和技术提供便利,建立一个基于当地语言声学和语言特征的语音众包。
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