CLNov 15, 2021

Analysis of Data Augmentation Methods for Low-Resource Maltese ASR

arXiv:2111.07793v2
Originality Synthesis-oriented
AI Analysis

This work addresses speech recognition challenges for low-resource languages, but it is incremental as it applies existing techniques to a specific case.

The paper tackled the problem of improving speech recognition for low-resource languages like Maltese by evaluating data augmentation methods, resulting in a 15% absolute WER improvement without a language model.

Recent years have seen an increased interest in the computational speech processing of Maltese, but resources remain sparse. In this paper, we consider data augmentation techniques for improving speech recognition for low-resource languages, focusing on Maltese as a test case. We consider three different types of data augmentation: unsupervised training, multilingual training and the use of synthesized speech as training data. The goal is to determine which of these techniques, or combination of them, is the most effective to improve speech recognition for languages where the starting point is a small corpus of approximately 7 hours of transcribed speech. Our results show that combining the data augmentation techniques studied here lead us to an absolute WER improvement of 15% without the use of a language model.

Foundations

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