A novel speech enhancement method using power spectra smooth in Wiener filtering

Feng Bao, Hui-jing Dou, Mao-shen Jia, C. Bao
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引用次数: 8

Abstract

In this paper, we propose a novel speech enhancement method by using power spectra smooth of the speech and noise in Wiener filtering based on the fact that a priori SNR in standard Wiener filtering reflects the power ratio of speech and noise in frequency bins. This power ratio also could be approximated by the smoothed spectra of speech and noise. We estimate the power spectra of noise and speech by means of minima controlled recursive averaging method and spectral-subtractive principle, respectively. Then, the linear prediction analysis is used to smooth power spectra of the speech and noise in frequency domain. Finally, we utilize cross-correlation between the power spectra of the noisy speech and noise to modify gains of the power spectra for further reducing noise in silence and unvoiced segments. The objective test results show that the performance of the proposed method outperforms conventional Wiener Filtering and Codebook-based methods.
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基于功率谱平滑的维纳滤波语音增强方法
本文基于标准维纳滤波中的先验信噪比反映了语音和噪声在频域中的功率比,提出了一种利用维纳滤波中语音和噪声功率谱平滑的语音增强方法。这个功率比也可以用平滑的语音和噪声谱来近似表示。分别用最小控制递推平均法和谱减法估计噪声和语音的功率谱。然后,利用线性预测分析在频域平滑语音和噪声的功率谱。最后,我们利用噪声语音的功率谱与噪声之间的相互关系来修改功率谱的增益,以进一步降低静音和非浊音段的噪声。客观测试结果表明,该方法的性能优于传统的维纳滤波和基于码本的方法。
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