建立一个开源的加泰罗尼亚语自动语音识别系统

B. Külebi, A. Öktem
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引用次数: 8

摘要

加泰罗尼亚语被认为是欧洲最大的无国籍语言,因此它是一种在语音领域得到很好研究的语言,并且存在各种具有大词汇量的自动语音识别(ASR)解决方案。然而,与欧洲的许多官方语言不同,它既没有足够大的开放声学语料库来训练ASR模型,也没有开放的声学模型来执行本地任务和个人使用。为了为资源有限的语言提供必要的工具和专业知识,在这项工作中,我们讨论了广播媒体的大型语音语料库的开发和使用CMU Sphinx构建加泰罗尼亚语ASR系统。结果模型在类似录音的4小时测试集上的WER为35.2%,在外部4小时多扬声器测试集上的WER为31.95%。使用特定于任务的语言模型,这一比率进一步降低到11.68%。240小时的广播语音数据和由此产生的模型公开分发供使用。
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Building an Open Source Automatic Speech Recognition System for Catalan
Catalan is recognized as the largest stateless language in Europe hence it is a language well studied in the field of speech, and there exists various solutions for Automatic Speech Recognition (ASR) with large vocabulary. However, unlike many of the official languages of Europe, it neither has an open acoustic corpus sufficiently large for training ASR models, nor openly accessible acoustic models for local task execution and personal use. In order to provide the necessary tools and expertise for the resource limited languages, in this work we discuss the development of a large speech corpus of broadcast media and building of an Catalan ASR system using CMU Sphinx. The resulting models have a WER of 35,2% on a 4 hour test set of similar recordings and a 31.95% on an external 4 hour multi-speaker test set. This rate is further decreased to 11.68% with a task specific language model. 240 hours of broadcast speech data and the resulting models are distributed openly for use.
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