Speaker Recognition by Combining Features for Myanmar Weather Forecast Domain

Khaing Zar Mon, Reenu, Ye Kyaw Thu
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Abstract

Nowadays, speaker recognition has become one of the important application area of digital signal processing. Speech corpus is important in developing the speech processing and the development of the corpus is essential for low-resourced languages. Burmese (Myanmar language) can be recognized as a low-resourced language because of lack of available resources for speech processing research. Speaker Recognition (SReg) is an approach used to automatically recognize a speaker from their speech utterance. The main concept of SReg is to recognize the information of the speaker’s identity. In SReg, various features have been extracted to reflect the characteristics of the speakers. In this paper, an effective multi-feature combination and comparison of performance between the different size of data are proposed. In this work, weather news from Department of Meteorology and Hydrology, Myanmar is collected. The total size of the implemented Burmese speech corpus is over 10 hours and it contained 13 females and 3 males. The dataset is split into training data and testing data in 4:1 ratio. The experimental results on 16 speakers show that the proposed Burmese speaker recognition based on multi-feature combination achieved 99.16% accuracy and high applicability.
结合缅甸天气预报域特征的说话人识别
现如今,说话人识别已经成为数字信号处理的重要应用领域之一。语音语料库对语音处理的发展具有重要意义,对于资源匮乏的语言,语料库的开发是必不可少的。由于缺乏可用于语音处理研究的资源,缅甸语可以被认为是一种低资源语言。说话人识别(SReg)是一种从说话人的话语中自动识别说话人的方法。SReg的主要概念是识别说话人的身份信息。在SReg中,提取了各种特征来反映说话人的特征。本文提出了一种有效的多特征组合方法,并对不同大小的数据进行了性能比较。在这项工作中,收集了缅甸气象和水文部门的天气新闻。所实施的缅甸语语料库总规模超过10小时,其中包含13名女性和3名男性。数据集按4:1的比例分为训练数据和测试数据。对16名说话人的实验结果表明,基于多特征组合的缅甸语说话人识别准确率达到99.16%,具有较高的适用性。
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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