端到端多语言自动语音识别资源较少的语言:四种埃塞俄比亚语言的情况

S. Abate, Martha Yifiru Tachbelie, T. Schultz
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引用次数: 5

摘要

端到端(End-to-End, E2E)方法是自动语音识别(ASR)的一个研究热点,该方法将一系列输入特征映射到一系列字素或单词中。对于资源较少的语言来说,它很有趣,因为它避免了使用发音字典,而发音字典是传统ASR系统的主要组成部分之一。然而,像任何深度神经网络(DNN)方法一样,E2E是数据贪婪的。这使得E2E在资源较少的语言中的应用存在问题。然而,在多语言(ML)设置中使用来自其他语言的数据正被用于解决数据稀缺的问题。因此,我们使用不同的语言和声学建模单元对四种资源较少的埃塞俄比亚语言进行了ML - E2E ASR实验。实验结果表明,仅使用两种相关语言的数据进行E2E ASR系统训练,相对单词错误率(WER)就可以降低29.83%(在单语E2E系统上)。此外,我们还注意到,与使用单语言数据相比,使用不太相关的语言数据也会导致端到端ASR性能的提高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
End-to-End Multilingual Automatic Speech Recognition for Less-Resourced Languages: The Case of Four Ethiopian Languages
The End-to-End (E2E) approach, which maps a sequence of input features into a sequence of graphemes or words, to Automatic Speech Recognition (ASR) is a hot research agenda. It is interesting for less-resourced languages since it avoids the use of pronunciation dictionary, which is one of the major components in the traditional ASR systems. However, like any deep neural network (DNN) approaches, E2E is data greedy. This makes the application of E2E to less-resourced languages questionable. However, using data from other languages in a multilingual (ML) setup is being applied to solve the problem of data scarcity. We have, therefore, conducted ML E2E ASR experiments for four less-resourced Ethiopian languages using different language and acoustic modelling units. The results of our experiments show that relative Word Error Rate (WER) reductions (over the monolingual E2E systems) of up to 29.83% can be achieved by just using data of two related languages in E2E ASR system training. Moreover, we have also noticed that the use of data from less related languages also leads to E2E ASR performance improvement over the use of monolingual data.
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