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基于约束方差的噪声谱估计算法 被引量:2

Noise spectrum estimation algorithm based on constrained variance
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摘要 为了进一步提高非平稳环境下噪声估计的准确性,提出了一种基于约束方差的噪声谱估计算法,通过约束方差计算得出平滑参数,对噪声功率谱进行估计。实验结果表明,相对于其他三种算法,该算法能较低时延地跟踪背景噪声的轨迹,且它的噪声谱估计均方误差较小,在非平稳噪声及噪声突变环境下尤为明显。 In order to improve the accuracy of noise estimation in the non-stationary environment, this paper proposes a new noise estimation algorithm based on constrained variance. The smoothing parameter can be calculated through constraining the variance. The noise power spectrum is estimated. Simulation results show that in comparison with other three methods, this algorithm possesses a more short delay in tracking the behavior of the back- ground noise, and it has a lower mean square error of noise estimation. It is especially remarkable in the non-stationary noise and burst noise environment.
出处 《计算机工程与应用》 CSCD 2012年第18期127-131,共5页 Computer Engineering and Applications
基金 国家自然科学基金(No.61071215) 苏州市科技发展计划(No.SYG201001)
关键词 约束方差 噪声谱估计 语音增强 constrained variance noise spectrum estimation speech enhancement
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参考文献8

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同被引文献23

  • 1孙新建,邹霞,曹铁勇,张雄伟,赵汉武.基于加权巴克谱失真的语音质量客观评价算法[J].数据采集与处理,2006,21(3):302-306. 被引量:6
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  • 7Derakhshan N,Akbari A,Ayatollahi A.Noise Power Spectrum Estimation Using Constrained Variance Spectral Smoothing and Minima Tracking[J].Speech Communication,2009,51:1098-1113.
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