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为连续语音识别用的单词音节神经网络建模的研究
引用本文:王守觉,徐春燕,潘晓霞,安冬,陈旭,曹文明. 为连续语音识别用的单词音节神经网络建模的研究[J]. 电子学报, 2005, 33(10): 1883-1885
作者姓名:王守觉  徐春燕  潘晓霞  安冬  陈旭  曹文明
作者单位:中国科学院半导体研究所,北京,100083;浙江工业大学智能信息系统研究所,浙江杭州,310014;浙江工业大学智能信息系统研究所,浙江杭州,310014;中国科学院半导体研究所,北京,100083
摘    要:本文主要研究连续语音中单词音节的神经网络建模问题.采用了一种富有特色的特征提取方法,并依据高维空间点覆盖理论,对实际连续数字语音的各不同数字音节,以人工切自连续数字语音中的2640个单字音节,构建连续语音中各不同数字音节的特征空间覆盖区,并使用7308个自连续数字语音中切分出的单字音节,利用仿生模式识别原理,进行了建模正确性验证.验证结果正确率达到97%以上,对同样数量的少量建模样本,识别率优于SVM方法.

关 键 词:连续语音  单词音节  高维空间点覆盖  神经网络模型
文章编号:0372-2112(2005)10-1883-03
收稿时间:2004-07-12
修稿时间:2004-07-122005-07-21

Single Figure Syllable Modeling Based on Neural Network for Continuous Speech Recognition
WANG Shou-jue,XU Chun-yan,PAN Xiao-xia,AN Dong,CHEN Xu,CAO Wen-ming. Single Figure Syllable Modeling Based on Neural Network for Continuous Speech Recognition[J]. Acta Electronica Sinica, 2005, 33(10): 1883-1885
Authors:WANG Shou-jue  XU Chun-yan  PAN Xiao-xia  AN Dong  CHEN Xu  CAO Wen-ming
Affiliation:1. Lab of Artificial Neural Networks,Institute of Semiconductors,CAS,Beijing 100083,China;2. Research Institute of Intelligent Information System,Zhejiang University of Technology,Hangzhou 310014,China
Abstract:The single figure syllable modeling based on neural network for continuous speech recognition is discussed.A new feature extraction method is used which mainly includes compressing single figure frames according to a certain inter-frame angle,extracting representative information comparing to standard single figure of fixed length.2640 single figure syllables made from continuous speech are used to construct each kind of high dimensional space covering area.By biomimetic pattern recognition theory 7308 single figure syllables made from continuous speech are used to confirm this model in CASSANN-II neural computer and get a quite good result.Experiments show the recognition rate is higher than SVM when the training samples are small.
Keywords:continuous speech  high-dimensional space covering  single syllable  neural network modeling
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