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Deep Neural Networks Based Automatic Speech Recognition for Four Ethiopian Languages

机译:基于深度神经网络的四种埃塞俄比亚语言自动语音识别

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In this work, we present speech recognition systems for four Ethiopian languages: Amharic, Tigrigna, Oromo and Wolaytta. We have used comparable training corpora of about 20 to 29 hours speech and evaluation speech of about 1 hour for each of the languages. For Amharic and Tigrigna, lexical and language models of different vocabulary size have been developed. For Oromo and Wolaytta, the training lexicons have been used for decoding. We achieved relative word error rate (WER) reductions for all the languages by using Deep Neural Networks (DNN) based acoustic models that range from 15.1% to 31.45%. The relative improvement obtained for Wolaytta speech recognition system is much higher (31.45%) than the improvement achieved for the other languages. This attributes to the weaker language model and the bigger size of training speech we used for Wolaytta.
机译:在这项工作中,我们介绍了四种埃塞俄比亚语言的语音识别系统:Amharic,Tigrigna,Oromo和Wolaytta。对于每种语言,我们使用了大约20到29个小时的演讲和大约1个小时的评估演讲的可比训练语料库。对于Amharic和Tigrigna,已经开发了不同词汇量的词汇和语言模型。对于Oromo和Wolaytta,已将训练词典用于解码。通过使用基于深度神经网络(DNN)的声学模型,范围从15.1%到31.45%,我们实现了所有语言的相对单词错误率(WER)降低。 Wolaytta语音识别系统获得的相对改进要比其他语言获得的改进要高得多(31.45%)。这归因于我们用于Wolaytta的较弱的语言模型和较大的训练语音。

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