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语音识别中基于神经网络的矢量量化方法
引用本文:孙杰,李晶皎.语音识别中基于神经网络的矢量量化方法[J].小型微型计算机系统,1999,20(12):941-944.
作者姓名:孙杰  李晶皎
作者单位:东北大学信息科学与工程学院!沈阳110006
基金项目:国家自然科学基金!(69675019),国家863 项目!(863-306-03-06-1)
摘    要:本文对神经网络语音识别中的语音特征提取、网络结构以及学习算法进行了初步的研究,提出了一种用于时特征矢量量化的简化和改进的自组织神经网络模型VQNN。VQNN中引入了动态规划法估计语音样本矢量的码本类中心初值并确定网络的初始权矩阵,可构造出256个量化等级的码本矢量。该方法具有较强的鲁棒性且矢量量化过程简单迅速。对28个地名的语音量化识别实验结果表明了这种量化方法对时识别的有性。

关 键 词:语音识别  矢量量化  神经网络  语音信号

A VECTOR QUANTIZATION APPROACH BASED ON THE NEURAL NETWORK IN SPEECH RECOGNITION
SUN,Jie,LI,Jing,jiao,YAO,Tian,shun.A VECTOR QUANTIZATION APPROACH BASED ON THE NEURAL NETWORK IN SPEECH RECOGNITION[J].Mini-micro Systems,1999,20(12):941-944.
Authors:SUN  Jie  LI  Jing  jiao  YAO  Tian  shun
Affiliation:School of Information Science and Engineering Northeastern University Shenyang 110006
Abstract:This paper investigates the speech feature extraction , the neural network structure and the learning algorithm for the neural network speech recognition, proposes a simplifing and improving self organization neural network model that is used to speech feature vector quantization VQNN. In VQNN, the dynamic programming method is introduced to estimate the initial value of the speech sample vector cluster center and to determine initial weight matrix, and the code vector that is 256 quantization degrees is built. This method possesses more robust and the vector quantization process is simple and quick. The experiment results for the speech quantization recognition of 28 place name demonstrate the efficiency of this quantization method for speech recognition.
Keywords:Speech recognition  Vector quantization  Neural network model
本文献已被 CNKI 维普 等数据库收录!
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