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Speech denoising by Adaptive Weighted Average filtering in the EMD framework

机译:EMD框架中通过自适应加权平均滤波进行语音降噪

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This paper introduces a new speech enhancement method, which combines Adaptive Center Weighted Average (ACWA) filter with Empirical Mode Decomposition (EMD). Both ACWA and EMD operate in the time domain. The ACWA filter is advantageous as it operates adaptively in the time domain and does not require the stationarity and the whiteness of the signals. Thanks to the data driven decomposition of the EMD, the application of the ACWA filter on the IMFs gives better results than the ACWA filtering of the noisy signal. The proposed EMD-ACWA denoising method is applied to noisy speech signal with different noise levels and the results are compared to those obtained by two different denoising methods: wavelet thresholds and ACWA filtering. A significant superiority of the EMD-ACWA method over the two others is shown in white noisy contexts as well as in correlated noisy ones.
机译:本文介绍了一种新的语音增强方法,该方法将自适应中心加权平均(ACWA)滤波器与经验模式分解(EMD)相结合。 ACWA和EMD都在时域中运行。 ACWA滤波器具有优势,因为它可以在时域中自适应运行,并且不需要信号的平稳性和白度。由于EMD的数据驱动分解,在IMF上使用ACWA滤波器要比对噪声信号进行ACWA滤波得到更好的结果。提出的EMD-ACWA去噪方法应用于具有不同噪声水平的嘈杂语音信号,并将结果与​​通过两种不同的去噪方法(小波阈值和ACWA滤波)获得的结果进行比较。在白噪声环境以及相关噪声环境中,EMD-ACWA方法比其他两种方法具有显着优势。

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