非平稳环境下噪声振幅谱的两种估计方法

S. Ou, W. Liu, Suojin Shen, Ying Gao
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引用次数: 1

摘要

在许多降噪系统中,噪声信号的幅度谱估计是一个非常重要的部分。传统的基于语音活动检测(VAD)的方法仅在语音缺失区域更新幅度谱估计,无法处理非平稳噪声。为了克服这一问题,本文提出了两种非平稳环境下的噪声幅值谱估计方法:一种是利用噪声幅值谱与噪声功率谱的关系得到噪声幅值谱的间接估计方法,另一种是基于最小均方误差(MMSE)的估计方法。该估计器基于语音和噪声都是高斯分布的特性,可以更新语音活动和缺失期间的噪声幅度谱估计。客观评价表明,在所有测试的非平稳噪声条件下,所提出的两种噪声幅度谱估计方法的性能都明显优于基于vad的方法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Two methods for estimating noise amplitude spectral in non-stationary environments
Estimating the amplitude spectral of noise signal is a very important part in many noise reduction systems. The conventional voice activity detection (VAD)-based method updates the amplitude spectral estimate only in speech absence areas and fails to deal with non-stationary noise. To overcome this problem, this paper proposes two methods to estimate the noise amplitude spectral for non-stationary environments: One is an indirect method, which obtains the estimate of noise amplitude spectral using its relationship with noise power spectral, while the other is the minimum mean-square error (MMSE)-based estimator. The proposed estimators are based on that the speech and noise are both Gaussian distributed and can update the estimate of noise amplitude spectral during speech activity as well as absence periods. Objective evaluations using several measures show that the proposed two estimators for noise amplitude spectral performed significantly better than the VAD-based method in all the tested non-stationary noise conditions.
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