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Improved wavelet based a-priori SNR estimation for speech enhancement

机译:改进的基于小波的先验SNR估计用于语音增强

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To obtain a reliable estimate of the a-priori signal to noise (SNR) ratio is crucial to most frequency domain speech enhancement algorithms. Recently, the low variance multitaper spectrum (MTS) estimator with wavelet denoising was suggested for the estimation of the a-priori SNR However, traditional approach directly plugs in the wavelet shrinkage denoiser and adopts the universal threshold which is not fully optimized to the characteristic of the MTS of noisy signals. In this paper, a two-stage estimation algorithm is proposed. First, the log MTS components that are dominated by noise are detected and removed in the wavelet domain. Second, a modified SUREshrink scheme is applied to further remove the noise remained in the speech spectral peaks. The new estimator is applied to the traditional Wiener filter and log MMSE speech enhancement algorithms and leads to significantly better performance.
机译:获得先验信噪比(SNR)的可靠估计对于大多数频域语音增强算法至关重要。最近,提出了一种具有小波去噪的低方差多谱谱谱估计器,用于先验SNR的估计。但是,传统方法直接插入小波收缩除噪器,并且采用了尚未完全优化的通用阈值,从而降低了信噪比。嘈杂信号的MTS。本文提出了一种两阶段估计算法。首先,在小波域中检测到并删除了受噪声控制的对数MTS分量。其次,采用了改进的SUREshrink方案,以进一步去除残留在语音频谱峰值中的噪声。新的估算器应用于传统的Wiener滤波器和对数MMSE语音增强算法,可显着提高性能。

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