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Modality-Based Sentence-Final Intonation Prediction for Korean Conversational-Style Text-to-Speech Systems

机译:基于模态的句子最终语调预测韩语会话风格的文本语音转换系统

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This letter presents a prediction model for sentence-final intonations for Korean conversational-style text-to-speech systems in which we introduce the linguistic feature of ‘modality’ as a new parameter. Based on their function and meaning, we classify tonal forms in speech data into tone types meaningful for speech synthesis and use the result of this classification to build our prediction model using a tree structured classification algorithm. In order to show that modality is more effective for the prediction model than features such as sentence type or speech act, an experiment is performed on a test set of 970 utterances with a training set of 3,883 utterances. The results show that modality makes a higher contribution to the determination of sentence-final intonation than sentence type or speech act, and that prediction accuracy improves up to 25% when the feature of modality is introduced.
机译:这封信介绍了韩国会话式文本转语音系统的句子最终语调的预测模型,在该模型中,我们引入了“模态”的语言功能作为新参数。根据它们的功能和含义,我们将语音数据中的音调形式分类为对语音合成有意义的音调类型,并使用分类结果使用树结构分类算法构建我们的预测模型。为了表明模态比诸如句子类型或言语行为之类的特征对预测模型更有效,对970言语的测试集和3883言语的训练集进行了实验。结果表明,情态对判断句子最终语调的贡献要大于句子类型或言语行为,而引入情态特征后,预测准确性提高了25%。

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