支持针对非母语语音的自动语音识别系统的软件

K. Radzikowski, O. Yoshie, R. Nowak
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摘要

目前,自动语音识别(ASR)系统可以实现越来越高的准确率,这取决于所采用的方法和使用的数据集。当ASR系统与待识别语言的非母语者一起使用时,该比率显著降低。造成这种情况的主要原因是与说话者的母语有关的特定发音和口音特征,这些特征会影响发音。与此同时,标记的非母语语音数据集数量极其有限,这使得从一开始就很难为非母语人士训练足够准确的ASR系统。在本研究中,我们使用风格迁移方法解决了这个问题及其对ASR系统准确性的影响。我们设计了一个管道来修改非母语者的语音,使其更接近母语。本文介绍了使用不同设置和不同方法进行口音修改的实验,包括神经风格转移和自动编码器。实验以日本人的英语发音为对象(UME-ERJ数据集)。结果表明,在语音识别精度方面有明显的相对提高。我们的方法减少了为非母语语音训练新算法的必要性(从而克服了与数据稀缺性相关的障碍),并且可以用作任何现有ASR系统的包装。这种修改可以在样本被传递到语音识别系统本身之前实时执行。
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Support software for Automatic Speech Recognition systems targeted for non-native speech
Nowadays automatic speech recognition (ASR) systems can achieve higher and higher accuracy rates depending on the methodology applied and datasets used. The rate decreases significantly when the ASR system is being used with a non-native speaker of the language to be recognized. The main reason for this is specific pronunciation and accent features related to the mother tongue of that speaker, which influence the pronunciation. At the same time, an extremely limited volume of labeled non-native speech datasets makes it difficult to train, from the ground up, sufficiently accurate ASR systems for non-native speakers. In this research we address the problem and its influence on the accuracy of ASR systems, using the style transfer methodology. We designed a pipeline for modifying the speech of a non-native speaker so that it more closely resembles the native speech. This paper covers experiments for accent modification using different setups and different approaches, including neural style transfer and autoencoder. The experiments were conducted on English language pronounced by Japanese speakers (UME-ERJ dataset). The results show that there is a significant relative improvement in terms of the speech recognition accuracy. Our methodology reduces the necessity of training new algorithms for non-native speech (thus overcoming the obstacle related to the data scarcity) and can be used as a wrapper for any existing ASR system. The modification can be performed in real time, before a sample is passed into the speech recognition system itself.
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