F0估计算法对超声静音语音接口的影响

Peng Dai, M. Al-Radhi, T. Csapó
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引用次数: 0

摘要

本文介绍了将舌头运动转化为可听语言的无声语言界面(Silent Speech Interface, SSI)的最新进展。在我们之前的工作和当前的研究中,利用基于深度学习的发音到声学映射方法,从超音舌图像(UTI)中预测基频(F0)。本文研究了几种传统的基于不连续语音的F0估计算法。此外,以UTI为输入,使用深度神经网络预测声码器参数(F0,最大浊音频率和mel -广义倒谱)。我们发现,在发音-声学映射实验中,这些不连续F0算法的预测误差较低。它们产生的合成语音比基线连续F0算法稍微自然一些。此外,实验结果证实,在客观度量和主观听力测试中,不连续算法(如Yin)最接近原始语音。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Effects of F0 Estimation Algorithms on Ultrasound-Based Silent Speech Interfaces
This paper shows recent Silent Speech Interface (SSI) progress that translates tongue motions into audible speech. In our previous work and also in the current study, the prediction of fundamental frequency (F0) from Ultra-Sound Tongue Images (UTI) was achieved using articulatory-to-acoustic mapping methods based on deep learning. Here we investigated several traditional discontinuous speech-based F0 estimation algorithms for the target of UTI-based SSI system. Besides, the vocoder parameters (F0, Maximum Voiced Frequency and Mel-Generalized Cepstrum) are predicted using deep neural networks, with UTI as input. We found that those discontinuous F0 algorithms are predicted with a lower error during the articulatory-to-acoustic mapping experiments. They result in slightly more natural synthesized speech than the baseline continuous F0 algorithm. Moreover, experimental results confirmed that discontinuous algorithms (e.g. Yin) are closest to original speech in objective metrics and subjective listening test.
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