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An improved spectral subtraction speech enhancement algorithm under non-stationary noise

机译:非平稳噪声下一种改进的谱相减语音增强算法

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The main limitation of conventional spectral subtraction algorithm is that it is based on stationary noise assumption. However, the majority of the common noise types encountered in real world are non-stationary. Moreover, the method requires a voice activity detector that might not work well under very low signal-to-noise ratio conditions. In this paper, we proposed an improved spectral subtraction algorithm for speech enhancement in non-stationary noise conditions. The proposed algorithm contains two steps. Firstly, the priori information about the spectrum of speech and noise is modeled using autoregressive model and the speech and noise codebooks are constructed. Secondly, the speech and noise are estimated in each time frame by solving a log-spectral distortion minimization problem. Consequently, the proposed algorithm can adapt to varying levels of noise even while speech is present. On the other hand, autoregressive modeling results in smooth frequency spectrums and thus reduces musical noise. Experimental results show that the proposed algorithm outperforms the conventional spectral subtraction algorithm and multiband spectral subtraction algorithm.
机译:常规频谱减法算法的主要局限性在于它是基于平稳噪声假设的。但是,现实世界中遇到的大多数常见噪声类型都是非平稳的。而且,该方法需要语音活动检测器,该检测器在非常低的信噪比条件下可能无法很好地工作。在本文中,我们提出了一种改进的频谱减法算法,用于非平稳噪声条件下的语音增强。所提出的算法包含两个步骤。首先,利用自回归模型对语音和噪声频谱的先验信息进行建模,并构建语音和噪声码本。其次,通过解决对数谱失真最小化问题,在每个时间帧中估计语音和噪声。因此,即使存在语音,所提出的算法也可以适应变化的噪声水平。另一方面,自回归建模会产生平滑的频谱,从而减少音乐噪音。实验结果表明,该算法优于传统的频谱减法算法和多频带频谱减法算法。

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