提高非洲英语口音的初步语音学习工具

B. Oyo, B. Kalema
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引用次数: 4

摘要

语音识别系统强调:口音识别,通过计算单词错误率(WER)的识别系统性能,发音建模,基于语音的交互(音调,音高,音量,背景噪音,说话者的性别和年龄,说话速度和录音设备的质量)和语音数据库解决方案。然而,使用语音识别系统来改善口音的研究很少。在本文中,我们的重点是开发一个语音识别系统,以识别非洲英语口音,使说话者提高他们的英语口音。这是通过使用双重语音识别引擎实现的:第一个,多重口音识别器接收非洲英语语音输入,对其进行分类并发送给第二个识别器,后者根据标准英语发音对语音进行评估。语音偏离标准的英语发音被系统捕捉和读取,作为支持学习者提高阅读水平的一种方式。初步测试表明,无论读者的教育水平如何,在日常对话中很少使用的术语(如热情、旺盛、模糊等)的发音都最糟糕。
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A preliminary speech learning tool for improvement of African English accents
Speech recognition systems emphasise: accent recognition, recognition system performance through calculation of word error rate (WER), pronunciation modelling, speech-based interactions (tone, pitch, volume, background noise, speaker's gender and age, speaking speed and quality of recording equipment) and speech database solutions. However, research into the use of speech recognition systems for improvement accents is scarcely available. In this paper, we focus on development of an speech recognition system for recognizing African English accents and enabling the speakers improve their English accents. This is achieved by using a dual speech recognition engine: the first, a multiple accent recogniser receives African English speech input, classifies it and sends to the second recogniser that evaluates the speech against standard English pronunciations. Speech deviations from standard English pronunciations are captured and read by the system as a way of supporting the learner to improve his/her reading proficiency. Preliminary tests indicate that terminologies that are rarely used in ordinary conversations (e.g. enthusiasm, exuberant, vague, etc) are most poorly pronounced irrespective of the educational level of the reader.
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