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Fast converging iterative Kalman filtering for speech enhancement using long and overlapped tapered windows with large side lobe attenuation

机译:使用大侧瓣衰减的长且重叠的锥形窗口快速融合迭代卡尔曼滤波。

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In this paper, we propose an iterative Kalman filtering scheme that has faster convergence and introduces less residual noise, when compared with the iterative scheme of Gibson, et al. This is achieved via the use of long and overlapped frames as well as using a tapered window with a large side lobe attenuation for linear prediction analysis. We show that the Dolph-Chebychev window with a -200 dB side lobe attenuation tends to enhance the dynamic range of the formant structure of speech corrupted with white noise, reduce prediction error variance bias, as well as provide for some spectral smoothing, while the long over lapped frames provide for reliable autocorrelation estimates and temporal smoothing. Speech enhancement experiments on the NOIZEUS corpus show that the proposed method outperformed conventional iterative and non-iterative Kalman filters as well as other enhancement methods such as MMSE-STSA and PSC.
机译:在本文中,与Gibson等人的迭代方案相比,我们提出了一种迭代的卡尔曼滤波方案,其具有更快的收敛并引入较少的残余噪声。这是通过使用长且重叠的框架来实现的,以及使用具有大侧凸衰减的锥形窗口进行线性预测分析。我们表明,具有-200 dB侧叶衰减的Dolph-Chebychev窗口趋于增强白噪声损坏的言语结构的动态范围,降低预测误差方差偏差,以及提供一些光谱平滑,而且提供LONG叠加框架提供可靠的自相关估计和时间平滑。 Noizeus语料库上的语音增强实验表明,所提出的方法优于传统的迭代和非迭代卡尔曼滤波器以及其他增强方法,如MMSE-STSA和PSC。

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