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基于含噪语音统计特征的小波去噪算法分析与实现
引用本文:陈卒,周群彪,陈正茂,吕学斌.基于含噪语音统计特征的小波去噪算法分析与实现[J].四川大学学报(自然科学版),2008,45(2):291-295.
作者姓名:陈卒  周群彪  陈正茂  吕学斌
作者单位:四川大学计算机学院,成都,610064
基金项目:国家高技术研究发展计划(863计划)
摘    要:小波分析在信号处理方面具有优越性.本文将其应用于语音信号处理,所做的主要工作:证明了Daubechies小波语音能量守恒;基于含噪语音的统计特征,提出了样本方差阈值小波分解算法及重构算法;将新的阈值算法和Waveshrink算法用于语音除噪,并运用于多组实验进行对比.仿真数据表明,本算法效果较优.

关 键 词:小波分析  语音去噪  统计特征  阈值函数  含噪语音  统计特征  小波去噪  算法分析  speech  statistical  feature  based  implementation  algorithm  analysis  效果  数据表  仿真  实验  运用  语音除噪  阈值算法  重构算法  小波分解算法  样本方差  能量守恒
文章编号:0490-6756(2008)02-0291-05
修稿时间:2007年7月25日

Wavelet de-noising algorithm analysis and implementation based on statistical feature of noised speech
CHENG Yan-Zu,ZHOU Qun-Biao,CHEN Zheng-Mao,LV Xue-Bin.Wavelet de-noising algorithm analysis and implementation based on statistical feature of noised speech[J].Journal of Sichuan University (Natural Science Edition),2008,45(2):291-295.
Authors:CHENG Yan-Zu  ZHOU Qun-Biao  CHEN Zheng-Mao  LV Xue-Bin
Institution:College of Computer Science , Sichuan University;College of Computer Science , Sichuan University;College of Computer Science , Sichuan University;College of Computer Science , Sichuan University
Abstract:Wavelet analysis has advantages in signal processing, which is applied to process speech signals in this article. The main work includes: Energy Conservation Law of Daubechies wavelet transform of speech signals is proved. Based on the statistical feature of noised speech, Decomposition and Reconstruction algorithm of sample variance threshold wavelet is proposed. The new algorithm and Waveshrink algorithm are applied to speech denoising. Finally the contract between both results of the tests is provide .The simulation result show the new algorithm is superior.
Keywords:
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