Title :
A Bayesian Approach for Blind Separation of Sparse Sources
Author :
Févotte, Cédric ; Godsill, Simon J.
Author_Institution :
Dept. of Eng., Cambridge Univ., MA
Abstract :
We present a Bayesian approach for blind separation of linear instantaneous mixtures of sources having a sparse representation in a given basis. The distributions of the coefficients of the sources in the basis are modeled by a Student t distribution, which can be expressed as a scale mixture of Gaussians, and a Gibbs sampler is derived to estimate the sources, the mixing matrix, the input noise variance and also the hyperparameters of the Student t distributions. The method allows for separation of underdetermined (more sources than sensors) noisy mixtures. Results are presented with audio signals using a modified discrete cosine transform basis and compared with a finite mixture of Gaussians prior approach. These results show the improved sound quality obtained with the Student t prior and the better robustness to mixing matrices close to singularity of the Markov chain Monte Carlo approach
Keywords :
Bayes methods; Gaussian processes; Markov processes; Monte Carlo methods; blind source separation; discrete cosine transforms; matrix algebra; signal representation; signal sampling; Bayesian approach; Gaussians prior approach; Gibbs sampler; Markov chain Monte Carlo approach; audio signals; blind separation; discrete cosine transform; linear instantaneous mixtures; mixing matrix; sparse representation; sparse sources; Acoustic noise; Acoustic sensors; Bayesian methods; Discrete cosine transforms; Gaussian distribution; Gaussian noise; Gaussian processes; Monte Carlo methods; Robustness; Sparse matrices; Bayesian estimation; Markov chain Monte Carlo (MCMC) methods; blind source separation (BSS); independent component analysis; sparse representations;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TSA.2005.858523