Improving Children Speech Recognition through Feature Learning from Raw Speech Signal

Selen Hande Kabil, Mathew Magimai Doss
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引用次数: 9

Abstract

Children speech recognition based on short-term spectral features is a challenging task. One of the reasons is that children speech has high fundamental frequency that is comparable to formant frequency values. Furthermore, as children grow, their vocal apparatus also undergoes changes. This presents difficulties in extracting standard short-term spectral-based features reliably for speech recognition. In recent years, novel acoustic modeling methods have emerged that learn both the feature and phone classifier in an end-to-end manner from the raw speech signal. Through an investigation on PF-STAR corpus we show that children speech recognition can be improved using end-to-end acoustic modeling methods.
基于原始语音信号特征学习的儿童语音识别研究
基于短时谱特征的儿童语音识别是一项具有挑战性的任务。其中一个原因是儿童言语的基频很高,与形成峰频率值相当。此外,随着孩子的成长,他们的发声器官也会发生变化。这给语音识别可靠地提取标准短期频谱特征带来了困难。近年来,出现了一种新的声学建模方法,可以从原始语音信号中端到端学习特征和电话分类器。通过对PF-STAR语料库的研究,我们发现使用端到端声学建模方法可以改善儿童语音识别。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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