基于DIVA模型的语音训练与学习方法研究

Zhang Shaobai, Hu Chenhong
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引用次数: 1

摘要

DIVA (Directions Into of Articulators)模型是一种自适应的中性网络模型,它通过控制模拟声道的运动来产生单词、音节或音素。然而,目前的隐马尔可夫(HMM)训练算法由于考虑到多个建模基元之间的重叠等缺陷,存在分类能力较差的问题。它会影响模型的语音识别率。为此,本文提出了一种混合模型HMM/PNN,即利用ANN(Artificial neutral Network)中的预测神经网络(Predictive Neural Network, PNN)计算隐马尔可夫模型的站后验分布。通过提取声学参数、选择建模单元等方法,重构了DIVA的声学模型。仿真结果表明,采用新的HMM/PNN模型对复合元音语音进行训练和学习后,获得的语音波形与真人语音波形相差不大,识别率也有所提高。验证了该方法的有效性和准确性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The study of speech training and learning method based on DIVA model
DIVA (Directions Into of Articulators) model is a kind of self-adaptive neutral network model which controls movements of a simulated vocal tract in order to produce words, syllables or phonemes. However, there exist poor classification ability, out of consideration of overlap and other deficiencies among multiple modeling primitives in current Hidden Markov(HMM) training algorithm. It impacts speech recognition rate of the model. Therefore, this paper proposes a hybrid model HMM/PNN, which is to use Predictive Neural Network (PNN) in ANN(Artificial neutral network) to calculate station posterior distribution of Hidden Markov Model. The acoustic model of DIVA is reconstructed through extracting acoustic parameter, choosing modeling unit and other methods. The simulations show that after training and learning the pronunciation of compound vowel by using new HMM/PNN model, there' s not huge difference between the waveform of the acquired speech and that of real person, in addition, the recognition rate is also improved. All these verify the effectiveness and accuracy of this method.
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