Deep Learning Techniques in Tandem with Signal Processing Cues for Phonetic Segmentation for Text to Speech Synthesis in Indian Languages
نویسندگان
چکیده
Automatic detection of phoneme boundaries is an important sub-task in building speech processing applications, especially text-to-speech synthesis (TTS) systems. The main drawback of the Gaussian mixture model hidden Markov model (GMMHMM) based forced-alignment is that the phoneme boundaries are not explicitly modeled. In an earlier work, we had proposed the use of signal processing cues in tandem with GMM-HMM based forced alignment for boundary correction for building Indian language TTS systems. In this paper, we capitalise on the ability of robust acoustic modeling techniques such as deep neural networks (DNN) and convolutional deep neural networks (CNN) for acoustic modeling. The GMM-HMM based forced alignment is replaced by DNN-HMM/CNN-HMM based forced alignment. Signal processing cues are used to correct the segment boundaries obtained using DNN-HMM/CNN-HMM segmentation. TTS systems built using these boundaries show a relative improvement in synthesis quality.
منابع مشابه
Proceedings of Meetings on Acoustics
India possesses a large variety of languages and dialects spoken in different parts of the country. These languages possess some unique linguistic, phonological and phonetic properties different from European languages. Research is being done in several of Indian languages such as Hindi, Bangla, etc. to study the articulatory, acoustic, Phonetic and prosodic nature for the purpose of creating s...
متن کاملExperiments with Unit Selection Speech Databases for Indian Languages
This paper presents a brief overview of unit selection speech synthesis and discuss the issues relevant to the development of voices for Indian languages. We discuss a few perceptual experiments conducted on Hindi and Telugu voices. 1 Role of Language Technologies Most of the Information in digital world is accessible to a few who can read or understand a particular language. Language technolog...
متن کاملDNN-based Speech Synthesis for Indian Languages from ASCII text
Text-to-Speech synthesis in Indian languages has a seen lot of progress over the decade partly due to the annual Blizzard challenges. These systems assume the text to be written in Devanagari or Dravidian scripts which are nearly phonemic orthography scripts. However, the most common form of computer interaction among Indians is ASCII written transliterated text. Such text is generally noisy wi...
متن کاملمقایسه روش های طیفی برای شناسایی زبان گفتاری
Identifying spoken language automatically is to identify a language from the speech signal. Language identification systems can be divided into two categories, spectral-based methods and phonetic-based methods. In the former, short-time characteristics of speech spectrum are extracted as a multi-dimensional vector. The statistical model of these features is then obtained for each language. The ...
متن کاملمراحل و نحوه ی تهیه ی دادگان های صوتی هجایی و دایفونی برای سامانه ی تبدیل متن به گفتار فارسی
Abstract Speech databases are part of the concatenative text to speech synthesis systems. Phonetic quality of the databases plays a significant role in the naturalness of the synthesized speech. This paper introduces two syllable and diphone speech databases for Persian and investigates the way of their development and their specifications and their advantages to each other. ...
متن کامل