一种数据驱动的声道区域功能估计的深度学习方法

Sasan Asadiabadi, E. Erzin
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引用次数: 3

摘要

本文提出了一种基于深度神经网络的数据驱动声道面积函数(VTAF)估计方法。我们基于序列到序列学习神经网络来解决VTAF估计问题,其中滑动窗口上的回归用于学习从输入特征序列到目标发音序列的任意非线性一对多映射。我们提出了两种有效估计VTAF的方案;(1)直接估计面积函数值,(2)通过预测声道边界间接估计。我们考虑声学语音和电话序列作为DNN估计器的两种可能的输入模态。实验评估是在USC-TIMIT数据库中包含声学和语音特征以及平行发音信息的大数据上进行的。结果表明,直接和间接方案的VTAF估计的平均绝对误差(MAE)率均小于1.65 mm,其中直接方案的估计效果优于间接方案。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A Deep Learning Approach for Data Driven Vocal Tract Area Function Estimation
In this paper we present a data driven vocal tract area function (VTAF) estimation using Deep Neural Networks (DNN). We approach the VTAF estimation problem based on sequence to sequence learning neural networks, where regression over a sliding window is used to learn arbitrary non-linear one-to-many mapping from the input feature sequence to the target articulatory sequence. We propose two schemes for efficient estimation of the VTAF; (1) a direct estimation of the area function values and (2) an indirect estimation via predicting the vocal tract boundaries. We consider acoustic speech and phone sequence as two possible input modalities for the DNN estimators. Experimental evaluations are performed over a large data comprising acoustic and phonetic features with parallel articulatory information from the USC-TIMIT database. Our results show that the proposed direct and indirect schemes perform the VTAF estimation with mean absolute error (MAE) rates lower than 1.65 mm, where the direct estimation scheme is observed to perform better than the indirect scheme.
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