Subspace Approach for Enhancing Speech based on SVD.

Ajgou Riadh, S. Salim, Hettiri Massaoud, Guettal Lemya, Ghendir Said, Bessous Noureddine, Chemsa Ali
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Abstract

In this work, we have developed an improved approach for enhancing speech corrupted by additive white Gaussian noise. An efficient denoising approach based on singular value decomposition (SVD) and Savistky-golay filter is proposed to reduce the White Gaussian noise (WGN). In order to filter singular values (SV) that represent original speech signal, we have proposed an efficient threshold algorithm. The whole SV are extracted from Hankel matrices in the overlapping speech window frames. After selecting dominant SV by our efficient threshold, the inverse operation is performed to create the new Hankel matrices and regrouping frames to reconstruct the enhanced signal (original signal), the denoised signal is smoothed using the Savitzky-Golay filter. The proposed approach offers an improved performance of speech enhancement comparing with traditional methods in terms of Perceptual Evaluation of Speech Quality scores measure (PESQ) and segmental SNR (SegSNR). A good yield of the method is observed for the SNR values between −10 and 30 dB.
基于SVD的语音增强子空间方法。
在这项工作中,我们开发了一种改进的方法来增强被加性高斯白噪声破坏的语音。提出了一种基于奇异值分解(SVD)和savstky -golay滤波器的高斯白噪声降噪方法。为了过滤代表原始语音信号的奇异值(SV),提出了一种高效的阈值算法。在重叠的语音窗口框中,从Hankel矩阵中提取整个SV。通过有效阈值选择优势SV后,进行逆运算创建新的Hankel矩阵并重组帧以重建增强信号(原始信号),然后使用Savitzky-Golay滤波器对去噪信号进行平滑处理。与传统的语音增强方法相比,该方法在语音质量分数感知评价(PESQ)和分段信噪比(SegSNR)方面有了改进。在信噪比为- 10 ~ 30db的情况下,该方法的良率较高。
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