Speech recognition system based on deep neural network acoustic modeling for low resourced language-Amharic

Eshete Derb Emiru, Yaxing Li, Shengwu Xiong, Awet Fesseha
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引用次数: 5

Abstract

In this paper automatic speech recognition is investigated using deep neural network (DNN) acoustic modeling method for Amharic language at syllabic acoustic units. In grapheme based database; graphemes/characters are basic units of lexicon and language model. A large portion of them represents syllables which are a combination of consonants and vowels (CV). Grapheme to phoneme (G2P) conversion was required to represent all text corpuses into CV phoneme representations via G2P conversion algorithm developed for this purpose. This algorithm used to develop syllable based pronunciation dictionary and language modeling which are vital for speech recognizer. DNN based acoustic model (AM) such as tanh-DNNs, tanh-fast-DNNs, p-norm-DNNs and p-norm-fast-DNNs are also explored with different hidden layers, hidden units and parameter settings. These DNN AMs are trained with morpheme based Amharic read speech in order to develop models. The recognition performance of our methods is evaluated in testing data and the reduced WER is achieved in p-norm-fast(p=2) DNN AMs.
基于深度神经网络声学建模的低资源阿姆哈拉语语音识别系统
本文研究了基于深度神经网络声学建模的阿姆哈拉语音节声学单元自动语音识别方法。基于字素的数据库;字素是构成词汇和语言模型的基本单位。其中很大一部分代表的是辅音和元音(CV)的组合音节。字形到音素(G2P)转换需要通过为此目的开发的G2P转换算法将所有文本语料库表示为CV音素表示。该算法用于开发基于音节的语音字典和语言建模,这对语音识别至关重要。基于深度神经网络的声学模型(AM),如tanh-DNN、tanh-fast-DNN、p-norm-DNN和p-norm-fast-DNN,也探索了不同的隐藏层、隐藏单元和参数设置。这些DNN人工智能使用基于语素的阿姆哈拉语读语音进行训练,以开发模型。在测试数据中评估了我们的方法的识别性能,并在p-norm-fast(p=2) DNN am中实现了降低的WER。
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