Title :
Multi-Channel
Regularized Convex Speech Enhancement Model and Fast Computation by the Split Bregman Method
Author :
Yu, Meng ; Ma, Wenye ; Xin, Jack ; Osher, Stanley
Author_Institution :
Dept. of Math., Univ. of California, Irvine, CA, USA
Abstract :
A convex speech enhancement (CSE) method is presented based on convex optimization and pause detection of the speech sources. Channel spatial difference is identified for enhancing each speech source individually while suppressing other interfering sources. Sparse unmixing filters indicating channel spatial differences are sought by l1 norm regularization and the split Bregman method. A subdivided split Bregman method is developed for efficiently solving the problem in severely reverberant environments. The speech pause detection is based on a binary mask source separation method. The CSE method is evaluated objectively and subjectively, and found to outperform a list of existing blind speech separation approaches on both synthetic and room recorded speech mixtures in terms of the overall computational speed and separation quality.
Keywords :
blind source separation; convex programming; interference suppression; spatial filters; speech enhancement; CSE method; binary mask source separation method; blind speech separation approach; channel spatial difference identification; convex optimization; interfering source suppression; l1 norm regularization; multichannel l1 regularized convex speech enhancement model; reverberant environments; sparse unmixing filters; speech source pause detection; subdivided split Bregman method; Convergence; Frequency domain analysis; Interference; Optimization; Speech; Speech enhancement; Time domain analysis; Convexity; fast blind speech enhancement; sparse filters; split Bregman method;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2011.2164526