A Novel End-to-End Turkish Text-to-Speech (TTS) System via Deep Learning

Author:

Oyucu Saadin1ORCID

Affiliation:

1. Department of Computer Engineering, Adiyaman University, Adiyaman 02040, Turkey

Abstract

Text-to-Speech (TTS) systems have made strides but creating natural-sounding human voices remains challenging. Existing methods rely on noncomprehensive models with only one-layer nonlinear transformations, which are less effective for processing complex data such as speech, images, and video. To overcome this, deep learning (DL)-based solutions have been proposed for TTS but require a large amount of training data. Unfortunately, there is no available corpus for Turkish TTS, unlike English, which has ample resources. To address this, our study focused on developing a Turkish speech synthesis system using a DL approach. We obtained a large corpus from a male speaker and proposed a Tacotron 2 + HiFi-GAN structure for the TTS system. Real users rated the quality of synthesized speech as 4.49 using Mean Opinion Score (MOS). Additionally, MOS-Listening Quality Objective evaluated the speech quality objectively, obtaining a score of 4.32. The speech waveform inference time was determined by a real-time factor, with 1 s of speech data synthesized in 0.92 s. To the best of our knowledge, these findings represent the first documented deep learning and HiFi-GAN-based TTS system for Turkish TTS.

Funder

Scientific and Technological Research Council of Turkey

Publisher

MDPI AG

Subject

Electrical and Electronic Engineering,Computer Networks and Communications,Hardware and Architecture,Signal Processing,Control and Systems Engineering

Reference53 articles.

1. A deep learning approaches in text-to-speech system: A systematic review and recent research perspective;Kumar;Multimed. Tools Appl.,2022

2. Ning, Y., He, S., Wu, Z., Xing, C., and Zhang, L.J. (2019). A review of deep learning based speech synthesis. Appl. Sci., 9.

3. Brackhane, F. (2011, January 17–21). Wolfgang Von Kempelen’s speaking machine’ as an instrument for demonstration and research. Proceedings of the 17th International Congress of Phonetic Sciences, Hong Kong, China.

4. The vocoder-electrical re-creation of speech;Dudley;J. Soc. Motion Pict. Eng.,1940

5. The parsing program for automatic text-to-speech synthesis developed at the electrotechnical laboratory in 1968;Umeda;IEEE Trans. Acoust.,1975

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