首页 | 本学科首页   官方微博 | 高级检索  
     

语音去噪LMS自适应滤波器算法的改进
引用本文:袁鹏飞,杨燕翔,廖国军,丘宏烈.语音去噪LMS自适应滤波器算法的改进[J].电子设计工程,2011,19(1):80-83.
作者姓名:袁鹏飞  杨燕翔  廖国军  丘宏烈
作者单位:西华大学电气信息学院,四川成都,610039
摘    要:对LMS自适应算法进行了详细的性能分析与讨论,针对LMS算法运算较复杂、适应性较弱、稳定性差的缺点提出了一种HLMS(混合LMS)算法.建立了自适应噪声抵消系统,利用MATILAB软件对食堂、体育馆两处的录音信号进行计算机语音去噪仿真分析.实验结果表明,两种自适应方法均能有效抑制各种噪声污染,提高语音信噪比为60%~8...

关 键 词:最小均方(LMS)算法  混合LMS算法  自适应滤波  噪声抵消系统  非平稳随机过程

Improvement of LMS adaptive filter algorithm for speech denoising
YUAN Peng-fei,YANG Yan-xiang,LIAO Guo-jun,QIU Hong-lie.Improvement of LMS adaptive filter algorithm for speech denoising[J].Electronic Design Engineering,2011,19(1):80-83.
Authors:YUAN Peng-fei  YANG Yan-xiang  LIAO Guo-jun  QIU Hong-lie
Affiliation:(School of Electrical Engineering,Xi Hua University,Chengdu 610039,China)
Abstract:This article analysed and discussed the performance of the LSM adaptive algorithm.Aiming at the LMS algorithm’s shortcomings,such as complex algorithm,weak adaptability,and poor stability etc,it proposed a HLMS(Hybrid LMS) algorithm,established an adaptive noise canceling system,and had the speech denoising simulation of two voice recording signal on the canteens,stadium using MATILAB software by computer.Experimental results show that the two adaptive methods can effectively suppress a variety of noise pollution,and improve the voice signal to noise ratio of 60% to 85%.And the introduction of the voice signal distortion is also smaller,both of them are below 10%.HLMS algorithm is more concise than LMS algorithm.LMS algorithm’s adjusting performance is sensitive to the variance of the reference input,while HLMS algorithm is sensitive to the RMS value of the reference input.So the adaptation of HLMS algorithm is better than the LMS algorithm.In case of non-stationary random input,the HLMS algorithm can provide more stable performance and better recovery of the original speech signal.
Keywords:least mean square(LMS) algorithm  hybrid LMS algorithm  adaptive filtering  noise cancellation system  non-stationary random process
本文献已被 CNKI 万方数据 等数据库收录!
设为首页 | 免责声明 | 关于勤云 | 加入收藏

Copyright©北京勤云科技发展有限公司  京ICP备09084417号