Bangla-Wave: Improving Bangla Automatic Speech Recognition Utilizing N-gram Language Models

Mohammed Rakib, Md. Ismail Hossain, Nabeel Mohammed, F. Rahman
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引用次数: 2

Abstract

Although over 300M around the world speak Bangla, scant work has been done in improving Bangla voice-to-text transcription due to Bangla being a low-resource language. However, with the introduction of the Bengali Common Voice 9.0 speech dataset, Automatic Speech Recognition (ASR) models can now be significantly improved. With 399hrs of speech recordings, Bengali Common Voice is the largest and most diversified open-source Bengali speech corpus in the world. In this paper, we outperform the State-of-the-Art (SOTA) pretrained Bengali ASR models by finetuning a pretrained wav2vec2 model on the common voice dataset. We also demonstrate how to significantly improve the performance of an ASR model by adding an n-gram language model as a post-processor. Finally, we do some experiments and hyperparameter tuning to generate a robust Bangla ASR model that is better than the existing ASR models.
Bangla- wave:利用N-gram语言模型改进孟加拉语自动语音识别
尽管世界上有超过3亿人说孟加拉语,但由于孟加拉语是一种资源匮乏的语言,在改善孟加拉语语音到文本的转录方面做得很少。然而,随着孟加拉语通用语音9.0语音数据集的引入,自动语音识别(ASR)模型现在可以得到显着改进。拥有399小时的语音记录,孟加拉共同之声是世界上最大和最多样化的开源孟加拉语语料库。在本文中,我们通过对公共语音数据集上的预训练wav2vec2模型进行微调,从而优于最先进(SOTA)预训练的孟加拉语ASR模型。我们还演示了如何通过添加n-gram语言模型作为后处理器来显著提高ASR模型的性能。最后,我们进行了一些实验和超参数调整,以生成比现有ASR模型更好的鲁棒Bangla ASR模型。
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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