基于注意的日语语音识别模型

Deguo Mu, Tao Zhu, Guoliang Xu, Han Li, Dongbin Guo, Yongquan Liu
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引用次数: 0

摘要

近年来,深度神经网络在语音自动识别中的应用取得了显著的进步。特别是将CNN(卷积神经网络)用于声学特征提取,不仅提高了语音识别的准确率,而且提高了并行效率。注意机制在序列到序列模式中表现出良好的表现。本文基于注意机制,结合CNN和LSTM (Long - Short-Term Memory)语音识别模型,以1万个日语句子为例进行训练。在没有任何语言模型的情况下,日语五声图的发音准确率达到89%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Attention Based Speech Model for Japanese Recognization
The Deep Neural Networks have been used for the Automatic Speech Recognition recently, and they have achieved great improvement in accuracy. Especially, CNN (Convolutional Neural Networks) are used on Acoustic feature extraction, which not only improves the accuracy of speech recognition, but also the parallel efficiency. Attention mechanism has shown very good performance in sequence to sequence patterns. Based on Attention mechanism with CNN and LSTM (Long Short-Term Memory) speech recognition model, this paper takes the 10,000 Japanese sentences as examples for training. Without any the language model, the pronunciation accuracy of Japanese fifty-tone diagrams reaches 89%.
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