Robust sparsity-promoting acoustic multi-channel equalization for speech dereverberation

I. Kodrasi, Ante Jukic, S. Doclo
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引用次数: 8

Abstract

This paper presents a novel signal-dependent method to increase the robustness of acoustic multi-channel equalization techniques against room impulse response (RIR) estimation errors. Aiming at obtaining an output signal which better resembles a clean speech signal, we propose to extend the acoustic multi-channel equalization cost function with a penalty function which promotes sparsity of the output signal in the short-time Fourier transform domain. Two conventionally used sparsity-promoting penalty functions are investigated, i.e., the l0-norm and the l1-norm, and the sparsity-promoting filters are iteratively computed using the alternating direction method of multipliers. Simulation results for several RIR estimation errors show that incorporating a sparsity-promoting penalty function significantly increases the robustness, with the l1-norm penalty function outperforming the l0-norm penalty function.
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用于语音去噪的鲁棒稀疏性声学多通道均衡
本文提出了一种新的信号相关方法来提高声学多通道均衡技术对房间脉冲响应估计误差的鲁棒性。为了获得更接近于清晰语音信号的输出信号,我们提出将声学多通道均衡代价函数扩展为一个惩罚函数,以提高输出信号在短时傅里叶变换域中的稀疏性。研究了两种常用的促进稀疏性的惩罚函数,即10 -范数和11 -范数,并使用乘法器的交替方向法迭代计算了促进稀疏性的滤波器。对几种RIR估计误差的仿真结果表明,加入促进稀疏性的惩罚函数显著提高了鲁棒性,11范数惩罚函数的鲁棒性优于10范数惩罚函数。
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