递归神经网络识别日语候选音素歧义的一种新方法

Shin-ichiro Hashimukai, Chikahiro Araki, Mikio Mori, S. Taniguchi, Shozo Kato, Yasuhiro Ogoshi
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引用次数: 0

摘要

目前,已经提出了一种利用二阶马尔可夫链模型来降低音素识别歧义的方法,并通过音位格模拟和限制替换误差进行了评价。然而,该方法对于实际语音识别设备获得的候选音素格的有效性还有待验证。递归神经网络(RNN)非常适合语音识别中的自然语言处理,特别是音素识别。这些网络的能力已经通过音素识别实验进行了调查,实验使用了一个以日语为母语的男性在安静的环境中说出的一些日语单词。本文还提出了一种利用短时平均能量来检测出元音的位置的方法,并对其进行了评价。实验结果表明,RNN的识别率高于传统非递归神经网络的识别率,并证明了该方法的实用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A New Method to Reduce the Ambiguity of Japanese Phoneme Candidates Recognized by Recurrent Neural Networks
Up to now, the method to reduce the ambiguity of phoneme recognition using 2nd-order Markov chain model of phonemes, has been proposed and has been evaluated by phonem lattice simulated and limited to substitution error. However, the method will be necessary to demonstrate the effectiveness for the phoneme candidate lattice obtained by actual speech recognition devices. This paper deals with recurrent neural networks(RNN) which are well- suited for natural language processing of speech recognition, specially for phoneme recognition. The ability of these networks has been investigated by phoneme recognition experiments using a number of Japanese words uttered by a native male speaker in a quiet environment. A method to detect the locations of devoicing vowels using the short- time average energy has been also proposed, and evaluated. Form results of the experiments, it is shown that recognition rates achieved with RNN are higher than those obtained with conventional non-recurrent neural networks, and that the method to detect the locations of devoicing vowels is useful.
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