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Regularized sparse decomposition model for speech enhancement via convex distortion measure

机译:通过凸失真度测量进行语音增强的正则稀疏分解模型

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摘要

An important stage in speech enhancement is to estimate noise signal which is a difficult task in non-stationary and low signal-to-noise conditions. This paper presents an iterative speech enhancement approach which requires no prior knowledge of noise and is based on low-rank sparse matrix decomposition using Gammatone filterbank and convex distortion measure. To estimate noise and speech, the noisy speech is decomposed into low-rank noise and sparse-speech parts by enforcing sparsity regularization. The exact distribution of noise signals and noise estimator is not required in this approach. The experimental results demonstrate that our approach outperforms competing methods and yields better overall speech quality and intelligibility. Moreover, composite objective measure reinforced a better performance in terms of residual noise and speech distortion in adverse noisy conditions. The time-varying spectral analysis validates significant reduction of the background noise.
机译:语音增强中的一个重要阶段是估计噪声信号,这在非静止和低信噪比中是困难的任务。 本文提出了一种迭代语音增强方法,无需先前的噪声知识,并且基于使用伽马河滤波器堆和凸失真测量的低级稀疏矩阵分解。 为了估计噪声和语音,通过强制稀疏正规化,嘈杂的语音被分解成低级噪声和稀疏语音部分。 这种方法不需要噪声信号和噪声估计器的精确分布。 实验结果表明,我们的方法优于竞争方法,产生更好的整体语音质量和可懂度。 此外,复合目标测量在恶劣嘈杂条件下,在残余噪声和语音变形方面加强了更好的性能。 时变光谱分析验证了背景噪声的显着降低。

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