Sinhala Speech Recognition for Interactive Voice Response Systems Accessed Through Mobile Phones

Wageesha Manamperi, Dinesha Karunathilake, Thilini Madhushani, Nimasha Galagedara, D. Dias
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引用次数: 10

Abstract

This paper presents the development of a Sinhala Speech Recognition System to be deployed in an Interactive Voice Response (IVR) system of a telecommunication service provider. The main objectives are to recognize Sinhala digits and names of Sinhala songs to be set up as ringback tones. Sinhala being a phonetic language, its features are studied to develop a list of 47 phonemes. A continuous speech recognition system is developed based on Hidden Markov Model (HMM). The acoustic model is trained using the voice through mobile phone. The outcome is a speaker independent speech recognition system which is capable of recognizing 10 digits and 50 Sinhala songs. A word error rate (WER) of 11.2% using a speech corpus of 0.862 hours and a sentence error rate (SER) of 5.7% using a speech corpus of 1.388 hours are achieved for digits and songs respectively.
通过移动电话访问的交互式语音应答系统的僧伽罗语语音识别
本文介绍了一种用于电信服务提供商交互式语音应答(IVR)系统的僧伽罗语语音识别系统的开发。主要目标是识别僧伽罗数字和要设置为铃声的僧伽罗歌曲的名称。僧伽罗语是一种语音语言,对其特征进行了研究,形成了一个包含47个音素的列表。提出了一种基于隐马尔可夫模型的连续语音识别系统。声学模型是通过手机语音进行训练的。结果是一个独立于说话人的语音识别系统,能够识别10个数字和50首僧伽罗歌曲。使用0.862小时的语音语料库,数字和歌曲的单词错误率分别为11.2%和5.7%。使用1.388小时的语音语料库,数字和歌曲的句子错误率分别为11.2%和5.7%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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