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Single-channel speech separation based on robust sparse Bayesian learning

机译:基于鲁棒稀疏贝叶斯学习的单通道语音分离

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摘要

This paper describes a novel algorithm to improve the performance of sparsity based single-channel speech separation(SCSS) problem based on compressed sensing which is an emerging technique for efficient data reconstruction. The conventional approach assumes the mixing conditions and source signals are stationary. For practical applications of audio source separation, however, we face the challenges of non-stationary mixing conditions due to the variation of sources or moving speakers. The proposed algorithm deals with this non-stationary situation in SCSS where the speech signals is recovered based on an auto-calibration sparse Bayesian learning algorithm. Numerical experiments including the performance comparison with other sparse representation approach are provided to show the achieved performance improvement.
机译:本文介绍了一种基于压缩感知的基于稀疏性的单通道语音分离(SCSS)问题,该算法是一种有效的数据重构新技术。传统方法假设混合条件和源信号是固定的。然而,对于音频源分离的实际应用,由于源或扬声器的变化,我们面临着非平稳混合条件的挑战。所提出的算法解决了SCSS中的这种非平稳情况,其中基于自动校准的稀疏贝叶斯学习算法来恢复语音信号。数值实验包括与其他稀疏表示方法的性能比较,以显示所实现的性能改进。

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