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An Efficient Sentence-based Sentiment Analysis for Expressive Text-to-speech using Fuzzy Neural Network

机译:基于句子的情感文本与模糊神经网络的言论语言的情报情绪分析

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In recent years, speech processing has become an active research area in the field of signal processing due to the usage of automated systems for spoken language interface. In developed countries, the customer service with automated system in speech synthesis has been the recent trend. The existing automated speech synthesis systems have certain problems during the real time implementation such as lack of naturalness in output speech, lack of emotions and so on. In this study, the novel Text to Speech system is introduced along with the sentiment analysis in Tamil language. The input text is first classified into the positive, negative and neutral based on the emotions in the sentence then the text is converted into speech with emotions during TTS conversion. Existing approaches used neural network based classifiers for classification. But, neural networks have certain drawbacks in real time training. So, this research study uses Fuzzy Neural Network (FNN) to classify the sentence based on the emotions. The text to speech with sentiment analysis effective scheme which is evaluated using Doordarshan news Tamil dataset. The proposed scheme is implemented using MATLAB. This TTS system has several social applications, especially in railway stations where the announcements can be made through expressive speech.
机译:近年来,由于用于口语界面的自动化系统,语音处理已成为信号处理领域的主动研究区域。在发达国家,在语音合成中具有自动化系统的客户服务是最近的趋势。现有的自动化语音合成系统在实时实施期间具有某些问题,例如输出语音缺乏自然,缺乏情感等。在这项研究中,引入了语音系统的新文本,以及泰米尔语言的情感分析。输入文本首先基于句子中的情绪分类为正,负面和中立,然后文本在TTS转换期间将文本转换为情绪。现有方法使用基于神经网络的分类分类。但是,神经网络在实时培训中具有某些缺点。因此,该研究使用模糊神经网络(FNN)根据情绪对句子进行分类。与情感分析的文本进行语音,使用Doordarshan新闻泰米尔数据集进行评估的有效方案。拟议的计划是使用MATLAB实施的。该TTS系统具有多种社交应用,尤其是通过表达演讲可以进行公告的火车站。

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