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An eigenvalue filtering based subspace approach for speech enhancement

机译:基于特征值滤波的子空间语音增强方法

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摘要

In this paper, a subspace approach based on eigenvalue filtering is proposed for enhancement of corrupted speech. The new method firstly simultaneously diagonalizes the covariance matrix of clean speech and noise signal based on GEVD (generalized eigenvalues decomposition), and then filters the smaller components whose eigenvalues are less than zero. Because the remainder eigenvector matrix after filtering is irreversible, we introduce the generalized inverse matrix transform to solve this problem for recovery of speech signal. Experimental results show the proposed method performs better than many conventional methods under strong noise conditions, in terms of yielding less residual noise and lower speech distortion. (C) 2015 Institute of Noise Control Engineering.
机译:本文提出了一种基于特征值滤波的子空间方法来增强语音失真。新方法首先基于GEVD(广义特征值分解)同时对角化干净语音和噪声信号的协方差矩阵,然后过滤特征值小于零的较小分量。由于滤波后的剩余特征向量矩阵不可逆,因此我们引入广义逆矩阵变换来解决该问题,以恢复语音信号。实验结果表明,在强噪声条件下,该方法在产生较少的残留噪声和较低的语音失真方面比许多常规方法表现更好。 (C)2015噪声控制工程学院。

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