Accent detection of Telugu speech using prosodic and formant features

Kasiprasad Mannepalli, P. N. Sastry, V. Rajesh
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引用次数: 15

Abstract

Speech automation is becoming more popular in the recent times. Speech recognition systems are increasing day by day. Earlier the speech recognition systems were developed for English language. Now these systems are being developed for many other languages. Many languages in the globe have different speaking styles or accents. The speech recognition systems may not recognize speeches with accent other than the system are trained. So it is important in the speech to text conversion systems to convert the accented speech in to text. Telugu is a language of southern part of India, has mainly three different accents namely Coastal Andhra, Rayalaseema and Telangana, in which the stress is different for the same word in these accents. In this work, text dependent speeches from Coastal Andhra, Rayalaseema, Telangana accents have been collected. Prosodie and formant features extracted from speech are used for discriminating the accents. Prosodie features are represented by durations of syllables, pitch and energy contours. These features are used to recognize the accent of the speaker using Nearest Neighborhood Classifier. The best recognition Accuracy using this model obtained 72%.
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用韵律和构象特征检测泰卢固语的口音
语音自动化在最近变得越来越流行。语音识别系统日益发展。早先的语音识别系统是为英语开发的。现在,这些系统正在为许多其他语言开发。世界上许多语言都有不同的说话风格或口音。语音识别系统可能无法识别系统训练之外的带有口音的语音。因此在语音到文本的转换系统中,如何将重音语音转换成文本是非常重要的。泰卢固语是印度南部的一种语言,主要有三种不同的口音,即沿海安得拉邦,Rayalaseema和Telangana,在这些口音中,同一个单词的重音是不同的。在这项工作中,收集了沿海安得拉邦,拉亚拉西马,特伦加纳口音的文本依赖演讲。从语音中提取韵律和构词特征用于区分重音。韵律特征由音节的持续时间、音高和能量轮廓来表示。这些特征用于使用最近邻分类器识别说话人的口音。该模型的最佳识别准确率达到72%。
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