Hindi Speech Vowel Recognition Using Hidden Markov Model

Shobha Bhatt, A. Dev, Anurag Jain
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引用次数: 10

Abstract

Machine learning has revolutionised speech technologies for major world languages, but these technologies have generally not been available for the roughly 4,000 languages with populations of fewer than 10,000 speakers. This paper describes the development of Elpis, a pipeline which language documentation workers with minimal computational experience can use to build their own speech recognition models, resulting in models being built for 16 languages from the Asia-Pacific region. Elpis puts machine learning speech technologies within reach of people working with languages with scarce data, in a scalable way. This is impactful since it enables language communities to cross the digital divide, and speeds up language documentation. Complete automation of the process is not feasible for languages with small quantities of data and potentially large vocabularies. Hence our goal is not full automation, but rather to make a practical and effective workflow that integrates machine learning technologies.
基于隐马尔可夫模型的印地语语音元音识别
机器学习已经彻底改变了世界主要语言的语音技术,但这些技术通常不适用于人口少于10,000的大约4,000种语言。本文描述了Elpis的开发,这是一个管道,语言文档工作者可以使用它来建立自己的语音识别模型,从而为来自亚太地区的16种语言建立了模型。Elpis以一种可扩展的方式,将机器学习语音技术提供给那些使用稀缺数据的语言的人。这是有影响力的,因为它使语言社区能够跨越数字鸿沟,并加快语言文档。对于具有少量数据和潜在的大量词汇表的语言,该过程的完全自动化是不可行的。因此,我们的目标不是完全自动化,而是建立一个集成机器学习技术的实用有效的工作流程。
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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