基于韵律变换和掩蔽的子词端到端ASR的诵读困难语音增强

M. Soleymanpour, Michael T. Johnson, J. Berry
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引用次数: 0

摘要

端到端语音识别系统是有效的,但为了训练端到端模型,需要大量的训练数据。对于像困难语音识别这样的应用,我们没有足够的数据。在本文中,我们提出了一种专门的数据增强方法来增强基于子词模型的端到端诵读ASR的性能。该方法包括韵律变换和时间特征掩蔽两种方法。韵律变换通过改变正常语音的语速和音高来控制诸如响度、语调和节奏等韵律特征。使用时间和特征掩蔽,我们对Mel频率倒谱系数(MFCC)应用掩码以增强鲁棒性。结果表明,用韵律变换加掩蔽法增强正常语音,使CER降低5.4%,WER降低5.6%;进一步增强困难语音掩蔽法,使CER降低11.3%,WER降低11.4%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Dysarthric Speech Augmentation Using Prosodic Transformation and Masking for Subword End-to-end ASR
End-to-end speech recognition systems are effective, but in order to train an end-to-end model, a large amount of training data is needed. For applications such as dysarthric speech recognition, we do not have sufficient data. In this paper, we propose a specialized data augmentation approach to enhance the performance of an end-to-end dysarthric ASR based on sub-word models. The proposed approach contains two methods, including prosodic transformation and time-feature masking. Prosodic transformation modifies the speaking rate and pitch of normal speech to control prosodic characteristics such as loudness, intonation, and rhythm. Using time and feature masking, we apply a mask to the Mel Frequency Cepstral Coefficients (MFCC) for robustness-focused augmentation. Results show that augmenting normal speech with prosodic transformation plus masking decreases CER by 5.4% and WER by 5.6%, and the further addition of dysarthric speech masking decreases CER by 11.3% and WER by 11.4%.
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