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Non-negative Matrix Factorization Speech Enhancement Method Based on Constraints of Temporal Continuity

机译:基于时间连续性约束的非负矩阵分解语音增强方法

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The constrained low-rank and sparse matrix decomposition (CLSMD) method ignores the temporal continuity between adjacent speech frames in the process of speech enhancement, resulting in a sparse matrix generated by decomposition with isolated discrete points. Therefore, in order to improve the noise suppression ability of the speech system and improve the enhanced speech quality and intelligibility, this paper proposes a speech enhancement method based on Temporal continuity Constraint for Non-negative Low-rank and Sparse Matrix Decomposition (TCNLSMD). In this method, in addition to adding low -rank and sparse constraints, temporal continuity constraints are added. The proposed method based on the sparse matrix obtained by eigenvalue decomposition of non-negative matrices and hard-threshold function estimation, the discrete sparse matrix is reduced by adding temporal continuity constraints to reduce discrete isolated points, retaining more speech information and reducing the enhanced speech distortion. The experimental results show that under various types of noise test conditions, compared with the current mainstream speech enhancement methods, especially with NLSMD, the proposed method improve the noise suppression capability, make the residual noise less, and improve the quality of the enhanced speech.
机译:受限的低秩稀疏矩阵分解(CLSMD)方法在语音增强过程中忽略了相邻语音帧之间的时间连续性,从而导致了由孤立的离散点分解而生成的稀疏矩阵。因此,为了提高语音系统的噪声抑制能力,提高语音质量和清晰度,提出了一种基于时间连续性约束的非负低秩稀疏矩阵分解语音增强方法(TCNLSMD)。在此方法中,除了添加低秩约束和稀疏约束之外,还添加了时间连续性约束。该方法基于通过非负矩阵特征值分解和硬阈值函数估计获得的稀疏矩阵,通过添加时间连续性约束来减少离散孤立点,保留更多语音信息并减少增强语音,从而减少了离散稀疏矩阵。失真。实验结果表明,在各种类型的噪声测试条件下,与目前主流的语音增强方法相比,特别是与NLSMD相比,该方法提高了噪声抑制能力,使残留噪声更少,提高了增强语音的质量。

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