A Brief Survey on Emotion Based Text to Speech Conversion System

Author:

Dhimate Bhushan Hemant, ,Khopade Manjiri Vitthal,Dhere Avadhoot Yogesh,Dhumale Supriya Dhanaraj, , ,

Abstract

Text to speech conversion is one of the applications of machine learning. It is widely used in search engines, standalone applications, web applications, chatbots and android applications. But still there is need to upgrade text to speech system so that we can get more interactive and user-friendly application. Traditional text to speech application has monotonous voice as output which does not has emotions in it and seems to be more mechanized. So, there is need to improvise the existing system by embedding the flavour of emotions in it. Existing text to speech cannot be used in story telling applications also it does not provide effective communication. Most of the Text to Speech systems are developed using algorithms such as Support Vector Machine (SVM), Naïve Bayes etc. Emotion Based Text to Speech System will help to improvise the existing Text to Speech system. With the help of machine learning and deep learning algorithm such as Recurrent Neural Network can be used for performing sentiment analysis and semantic analysis on the input text. We are going to use neural network which is more effective and help to maintain a relation between previous word and next word. Emotion based text to speech system will be able to identify four emotions ‘happy’, ‘sad’, ‘angry’ and ‘neutral’. Emotion based text to speech system will be beneficial for educational purpose like listening stories from storytelling applications for young budding children. Emotion based text to speech is going to be serviceable for visually impaired individuals.

Publisher

Blue Eyes Intelligence Engineering and Sciences Engineering and Sciences Publication - BEIESP

Subject

Computer Science Applications,History,Education

Reference15 articles.

1. Caroline G. Henton, Santa Cruz, Calif, Method and apparatus for automatic generation of vocal emotion in a synthetic text to speech system, patent number: 5860064, application number: 805893.

2. Tejashree M. Shinde, V. U. Deshmukh, P. K. Kadbe, Text to Speech Conversion Using FLITE Algorithm published in Internation Journal of Science and Research (IJSR) ISSN(Online): 2319-7064.

3. Michael H. O'Malley, Berkeley Speech Technologies, Text-to-Speech Conversion Technology, Published in IEEE journal.

4. ItunuoluwaIsewon, JeliliOyelade, Olufunke Oladippupo, Design and Implementation of Text to Speech Conversion for Visually Impaired People, Published in International Journal of Applied Information Systems (IJAIS)-ISSN: 2249-0868.

5. Michelann Parr, The future of text-to-speech technology: How long before it's just one more thing we do when teaching reading? , Published in International Conference on Education and Educational Psychology (ICEEPSY 2012) by SciVerse ScienceDirect, Procedia - Social and Behavioral Sciences 69 (2012) 1420-1429.

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