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Sparse Representations for Single Channel Speech Enhancement Based on Voiced/Unvoiced Classification

机译:基于浊音/清音分类的单通道语音增强的稀疏表示

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摘要

The approach presented here in relies on a new voicing decision algorithm based on the multi-scale product (MP) characteristics. The MP is based on the multiplication of Wavelet Transform Coefficients at some scales. According to the voicing decision, improved subspace decomposition is operated on the voiced segments of the noisy speech signal and a multi-scale principal component analysis is applied on the unvoiced segments of the same signal. Furthermore, the voiced frames are decomposed into three subspaces: sparse, low rank, and the remainder noise components. Then, we calculate the components as a segregation problem. In the unvoiced frames, we combine the straightforward multivariate generalization of the wavelet denoising technique with the principal component analysis method. Experiments on NOIZEUS and NTT databases show that the proposed approach obtains satisfying results for most types of noise with little speech degradation and outperforms several competitive methods.
机译:本文介绍的方法依赖于基于多尺度乘积(MP)特性的新发声决策算法。 MP基于小波变换系数在某些尺度上的相乘。根据发声决定,对有噪声语音信号的发声段进行改进的子空间分解,并对同一信号的无声段进行多尺度主成分分析。此外,浊音帧被分解为三个子空间:稀疏,低秩和其余噪声分量。然后,我们将组件计算为隔离问题。在清音帧中,我们将小波去噪技术的直接多元概括与主成分分析方法结合在一起。在NOIZEUS和NTT数据库上进行的实验表明,该方法对于大多数类型的噪声均能获得令人满意的结果,而语音的降解却很少,并且优于几种竞争方法。

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