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Transformation of Emotion based on Acoustic Features of Intonation Patterns for Hindi Speech

机译:基于印地语语调模式声学特征的情感转换

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摘要

Changes in intonation patterns may convey not only different meaning but different emotions even if the sequence of speech segments are same in a sentence. The patterns change depending upon structure and emotion of the sentence and require being stored in speech database. It is a difficult and time-consuming task to store all utterances of all the expressive style, which also consumes huge memory space. So there should be an approach that minimizes the time and memory space for emotion rich database. A number of studies in this respect have been done for several languages and models developed. However, for Hindi not many studies have been done. Taking this fact in consideration the intonation patterns have been studied for different languages in this paper and analysed for Hindi language. On the basis of dense research on intonation pattern an algorithm has been proposed for emotion conversion. This algorithm only requires storing neutral utterances in the database and other expressive style utterances can be derived from these neutral emotion. Proposed algorithm is based on linear modification model (LMM), where fundamental frequency (FO) is one of the factors to convert emotions. To perform the experiments, an Intonational rich database is maintained for four expressive styles- Surprise, Happiness, Anger and Sadness.The Perception tests also carried out, where group of listeners were asked to listen to the utterances from database and judge the emotion. This perception test involves classification of the emotions already available in the database by the listener and to judge the quality of converted neutral utterances. The results are analysed for four emotions: happiness, anger, surprise and sadness and performance of the experiment is evaluated. The accuracy of perception test on transformed emotions was found out to be 93.2% for surprise and 91.6% for sadness 83% for happiness and 95.3% for anger.
机译:即使语音片段的顺序在句子中相同,语调模式的变化不仅可以传达不同的含义,而且可以传达不同的情感。模式根据句子的结构和情感而变化,并且需要存储在语音数据库中。存储所有表现形式的所有语音是一项艰巨且耗时的任务,这也占用了巨大的内存空间。因此,应该有一种方法可以最大限度地减少情感丰富的数据库的时间和内存空间。在这方面已经针对开发的几种语言和模型进行了许多研究。但是,对于印地语,还没有完成很多研究。考虑到这一事实,本文针对不同的语言研究了语调模式,并针对印地语进行了分析。在对语调模式的深入研究的基础上,提出了一种情感转换算法。该算法仅需要将中性话语存储在数据库中,并且其他表达方式话语可以从这些中性情绪中得出。提出的算法基于线性修正模型(LMM),其中基频(FO)是转换情感的因素之一。为了进行实验,我们建立了一个具有丰富国际语言的数据库,用于表达,惊奇,幸福,愤怒和悲伤四种表达风格,还进行了感知测试,要求一群听众听数据库中的讲话并判断情绪。这种知觉测试涉及对听众已经在数据库中可用的情绪进行分类,并判断转换后的中性话语的质量。分析了四种情绪的结果:幸福,愤怒,惊奇和悲伤,并对实验的性能进行了评估。发现对转变的情绪的知觉测试的准确率是93.2%(惊奇),91.6%(悲伤),83%(幸福)和95.3%(愤怒)。

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