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MMSE-LSA语音增强算法的研究及实现
赵宏志,安朋博,杜丽霞
(兰州交通大学电子与信息工程学院,甘肃 兰州 730070)
摘要点击次数:148    

摘  要:语音增强是解决语音噪声污染的一种有效手段。本文简单介绍了现有的基于语音短时对数谱的最小均方误差(MMSE-LSA)进行估计的语音增强算法。利用帧间平滑定义平滑系数来对先验信噪比进行连续估计,在减少语音失真机会的同时,能够有效地抑制残留噪声。文章还通过MATLAB仿真分析其优劣,并结合算法的优点来达到语音增强的最佳效果,从而提高语音信号的可懂度和识别率。


关键词:语音增强;MMSE-LSA;帧间平滑;MATLAB仿真


作者介绍:

赵宏志(1990-),男,汉族,江苏涟水人,研究生。研究方向:数字信号处理,无线通信。


中图分类号:TP391.42;TN912.3     文献标识码:A 文章编号:2096-4706(2018)02-0000-03

Research and Implementation of MMSE-LSA Speech Enhancement algorithm

ZHAO Hongzhi,AN Pengbo,DU Lixia

(School of Electronics and InformationEngineering,Lanzhou Jiaotong University,Lanzhou  730070,China)

AbstractSpeech enhancement is an effective means to solve speechnoise pollution.This paper briefly introduces the existing speech enhancementalgorithm based on the minimum mean-squared error (MMSE-LSA) estimation of speech short-time log spectrum,then improve the speech enhancement algorithm based on MMSE-LSA,to improve the effect of speech enhancement,andthe enhanced speech is more in line with human hearing.Using inter-framesmoothing to define the smoothing coefficient continuously estimates the apriori SNR,which can effectively suppress the residualnoise while reducing the opportunity for speech distortion.The advantages anddisadvantages are analyzed through MATLAB simulation,andthe advantages of the algorithm are combined to achieve the best effect ofspeech enhancement,thereby improving theintelligibility and recognition rate of the speech signal.

Keywordsspeech enhancementMMSE-LSA;inter-framesmoothing;MATLAB simulation


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