Abstract :
In blind source separation, several techniques have been proposed to illustrate the qualitative performance of separation algorithms. However, in general, we assume ideal condition, no noise and linear mixing model. In this paper, a number of important performance analyses are discussed. It is shown that estimation of the mixing/demixing matrix should not be the main goal, in the noisy and nonlinear case. Instead, it is proposed to compare outcome of ICA algorithms with different proposed performance techniques, derived for known mixing model and extended to real- world data. In this work, the delay variance vector is suggested as the meaningful performance criterion. A simulation study that compare a few well known ICA algorithms and performance techniques applied to noise data are included. Blind source separation, blind source extraction, performance analysis, noisy mixtures
Keywords :
blind source separation; independent component analysis; ICA algorithms; blind source extraction; blind source separation; delay variance vector; linear mixing model; mixing/demixing matrix; qualitative performance analysis; Additive noise; Blind source separation; Delay; Educational institutions; Entropy; Independent component analysis; Mutual information; Performance analysis; Random variables; Working environment noise; Blind source separation; blind source extraction; noisy mixtures; performance analysis;