Interspeech 2018 Low Resource Automatic Speech Recognition Challenge for Indian Languages

B. M. L. Srivastava, Sunayana Sitaram, R. Mehta, K. Mohan, Pallavi Matani, Sandeepkumar Satpal, Kalika Bali, Radhakrishnan Srikanth, N. Nayak
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引用次数: 46

Abstract

India has more than 1500 languages, with 30 of them spoken by more than one million native speakers. Most of them are low-resource and could greatly benefit from speech and language technologies. Building speech recognition support for these low-resource languages requires innovation in handling constraints on data size, while also exploiting the unique properties and similarities among Indian languages. With this goal, we organized a low-resource Automatic Speech Recognition challenge for Indian languages as part of Interspeech 2018. We released 50 hours of speech data with transcriptions for Tamil, Telugu and Gujarati, amounting to a total of 150 hours. Participants were required to only use the data we released for the challenge to preserve the low-resource setting, however, they were not restricted to work on any particular aspect of the speech recognizer. We received 109 submissions from 18 research groups and evaluated the systems in terms of Word Error Rate on a blind test set. In this paper we summarize the data, approaches and results of the challenge.
Interspeech 2018印度语言低资源自动语音识别挑战
印度有1500多种语言,其中30种语言的母语使用者超过100万人。他们中的大多数资源匮乏,可以从语音和语言技术中受益匪浅。为这些低资源语言构建语音识别支持需要在处理数据大小限制方面进行创新,同时还要利用印度语言之间的独特属性和相似性。为了实现这一目标,我们组织了一个低资源的印度语言自动语音识别挑战,作为Interspeech 2018的一部分。我们发布了50小时的语音数据,包括泰米尔语、泰卢固语和古吉拉特语的转录,总计150小时。参与者被要求只使用我们为挑战发布的数据,以保持低资源设置,然而,他们不限于在语音识别器的任何特定方面工作。我们收到了来自18个研究小组的109份意见书,并在盲测集上根据单词错误率对系统进行了评估。在本文中,我们总结了数据,方法和结果的挑战。
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