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Estimation of Noise Magnitude for Speech Denoising Using Minima-Controlled-Recursive-Averaging Algorithm Adapted by Harmonic Properties

机译:基于谐波特性的最小控制递归平均算法估计语音去噪的噪声幅度

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The accuracy of noise estimation is important for the performance of a speech denoising system. Most noise estimators suffer from either overestimation or underestimation on the noise level. An overestimate on noise magnitude will cause serious speech distortion for speech denoising. Conversely, a great quantity of residual noise will occur when the noise magnitude is underestimated. Accurately estimating noise magnitude is important for speech denoising. This study proposes employing variable segment length for noise tracking and variable thresholds for the determination of speech presence probability, resulting in the performance improvement for a minima-controlled-recursive-averaging (MCRA) algorithm in noise estimation. Initially, the fundamental frequency was estimated to determine whether a frame is a vowel. In the case of a vowel frame, the increment of segment lengths and the decrement of threshold for speech presence were performed which resulted in underestimating the level of noise magnitude. Accordingly, the speech distortion is reduced in denoised speech. On the contrary, the segment length decreases rapidly in noise-dominant regions. This enables the noise estimate to update quickly and the noise variation to track well, yielding interference noise being removed effectively through the process of speech denoising. Experimental results show that the proposed approach has been effective in improving the performance of the MCRA algorithm by preserving the weak vowels and consonants. The denoising performance is therefore improved.
机译:噪声估计的准确性对于语音降噪系统的性能很重要。大多数噪声估计器都会在噪声水平上遭受高估或低估。高估噪声幅度会导致严重的语音失真,导致语音降噪。相反,当噪声幅度被低估时,将产生大量的残留噪声。准确估计噪声大小对于语音降噪很重要。这项研究提出采用可变的片段长度进行噪声跟踪,并采用可变的阈值确定语音存在概率,从而提高了噪声估计中的最小控制递归平均(MCRA)算法的性能。最初,估计基本频率以确定帧是否为元音。在元音帧的情况下,执行段长度的增加和语音存在阈值的减小,这导致低估了噪声幅度的水平。因此,降低了去噪语音中的语音失真。相反,在噪声占主导的区域中,段长度迅速减小。这使噪声估计能够快速更新,并且噪声变化能够很好地跟踪,从而通过语音降噪过程有效去除了干扰噪声。实验结果表明,该方法通过保留弱元音和辅音,有效提高了MCRA算法的性能。因此改善了去噪性能。

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