Polyphone Disambiguation for Mandarin Chinese Using Conditional Neural Network with Multi-level Embedding Features
Abstract
This paper describes a conditional neural network architecture for Mandarin Chinese polyphone disambiguation. The system is composed of a bidirectional recurrent neural network component acting as a sentence encoder to accumulate the context correlations, followed by a prediction network that maps the polyphonic character embeddings along with the conditions to corresponding pronunciations. We obtain the word-level condition from a pre-trained word-to-vector lookup table. One goal of polyphone disambiguation is to address the homograph problem existing in the front-end processing of Mandarin Chinese text-to-speech system. Our system achieves an accuracy of 94.69\% on a publicly available polyphonic character dataset. To further validate our choices on the conditional feature, we investigate polyphone disambiguation systems with multi-level conditions respectively. The experimental results show that both the sentence-level and the word-level conditional embedding features are able to attain good performance for Mandarin Chinese polyphone disambiguation.
Cite
@article{arxiv.1907.01749,
title = {Polyphone Disambiguation for Mandarin Chinese Using Conditional Neural Network with Multi-level Embedding Features},
author = {Zexin Cai and Yaogen Yang and Chuxiong Zhang and Xiaoyi Qin and Ming Li},
journal= {arXiv preprint arXiv:1907.01749},
year = {2019}
}
Comments
5 pages, 1 figure, 2 tables, submit to INTERSPEECH 2019