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K子空间和时延自相关器的英汉音素识别
引用本文:罗万伯,罗霄岚,陈炜,彭舰,吴端培.K子空间和时延自相关器的英汉音素识别[J].电子科技大学学报(自然科学版),2006,35(1):66-69.
作者姓名:罗万伯  罗霄岚  陈炜  彭舰  吴端培
作者单位:1.四川大学计算机学院 成都 610064;
摘    要:提出了用于音素识别的K子空间和时延自相关器神经网络结构,用将时延设计加入线性自相关器,以扩展音素滤波神经网络的方法,产生p维子空间,并采用迭代过程修改划分,以便捕获语音信号中的时间序列信息。这种带不分类训练过程的体系结构提供了一种高识别性能的方法,没有大多数常规语音识别神经网络所常有的网络输出值不表示候选者似然性的缺陷。通过英语音素和汉语音素的初步试验,识别正确率为84.38%,比音素滤波神经网络方法好。

关 键 词:语音识别    音素识别    神经网络    汉语音素    时延自相关
收稿时间:2003-06-25
修稿时间:2003-06-25

English and Chinese Phonemes Recognition Using K-Subspaces and Time-Delay Auto-Associators
LUO Wan-bo,LUO Xiao-lan,CHEN Wei,PENG Jian,WU Duan-pei.English and Chinese Phonemes Recognition Using K-Subspaces and Time-Delay Auto-Associators[J].Journal of University of Electronic Science and Technology of China,2006,35(1):66-69.
Authors:LUO Wan-bo  LUO Xiao-lan  CHEN Wei  PENG Jian  WU Duan-pei
Affiliation:1.Computer Science College,Sichuan University Chengdu 610064;2.Electrical and Computer Engineering College,Clemson University,SC 29634 US
Abstract:A neural network architecture, K-subspaces and time-delay auto-associators, is proposed for phoneme recognition. It extends the phoneme filter neural networks approach by adding linear auto-associators to create p-dimension subspace, and an iteration is employed to improve the decision. It is good to capture the time-sequence information in speech signal. The architecture proposed could provide a high recognition performance without traditional neural network's shortcoming. Some recognition simulations for both English and Chinese phonemes are conducted, and the recognition rate is 84.38% which is better than phoneme filter neural networks approach.
Keywords:speech recognition  phoneme recognition  neural network  Chinese phoneme  time-delay auto-associators
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