Title :
Bayesian single channel speech enhancement exploiting sparseness in the ICA domain
Author :
Liang Hong ; Rosca, Justinian ; Balan, Radu
Author_Institution :
Siemens Corp. Res., Princeton, NJ, USA
Abstract :
We propose a Bayesian single channel speech enhancement algorithm to exploit speech sparseness in the independent component analysis (ICA) domain. While recent literature considers the idea of denoising in the ICA domain, it relies on the unrealistic assumption of uncorelatedness of noise components in the ICA domain. Here we drop this limiting assumption and address the general case. The approach consists of two elements: (1) a maximum a posteriori (MAP) estimator for speech coefficients in the ICA domain, further used to estimate enhanced speech in the time domain, and (2) ICA domain transformation of data, learned from speech training data and then used in step (1). An implementation of the method shows considerable noise reduction capability in denoising speech keywords such as car navigation commands. Evaluation is based on objective measures of signal-to-noise ratio and distortion in enhanced signals versus the real-world speech and noise mixtures from car, street, office, industrial environments.
Keywords :
belief networks; compressed sensing; independent component analysis; interference suppression; maximum likelihood estimation; speech enhancement; speech intelligibility; speech synthesis; Bayesian single channel speech enhancement algorithm; ICA domain transformation; MAP estimator; car navigation commands; independent component analysis domain; maximum a posteriori estimator; noise components; noise reduction; signal-to-noise ratio and distortion; speech coefficients; speech keywords denoising; speech sparseness; speech training data; Abstracts; Approximation methods; Artificial intelligence; Bayes methods; Signal to noise ratio; Speech; Speech enhancement;
Conference_Titel :
Signal Processing Conference, 2004 12th European
Conference_Location :
Vienna
Print_ISBN :
978-320-0001-65-7