Title :
Convex Divergence ICA for Blind Source Separation
Author :
Chien, Jen-Tzung ; Hsieh, Hsin-Lung
Author_Institution :
Dept. of Comput. Sci. & Inf. Eng., Nat. Cheng Kung Univ., Tainan, Taiwan
Abstract :
Independent component analysis (ICA) is vital for unsupervised learning and blind source separation (BSS). The ICA unsupervised learning procedure attempts to demix the observation vectors and identify the salient features or mixture sources. This work presents a novel contrast function for evaluating the dependence among sources. A convex divergence measure is developed by applying the convex functions to the Jensen´s inequality. Adjustable with a convexity parameter, this inequality-based divergence measure has a wide range of the steepest descents to reach its minimum value. A convex divergence ICA (C-ICA) is constructed and a nonparametric C-ICA algorithm is derived with different convexity parameters where the non-Gaussianity of source signals is characterized by the Parzen window-based distribution. Experimental results indicate that the specialized C-ICA significantly reduces the number of learning epochs during estimation of the demixing matrix. The convergence speed is improved by using the scaled natural gradient algorithm. Experiments on the BSS of instantaneous, noisy and convolutive mixtures of speech and music signals further demonstrate the superiority of the proposed C-ICA to JADE, Fast-ICA, and the nonparametric ICA based on mutual information.
Keywords :
blind source separation; convergence; gradient methods; independent component analysis; matrix algebra; speech processing; unsupervised learning; JADE; Jensen inequality; Parzen window-based distribution; blind source separation signal; contrast function; convergence speed; convex divergence ICA; convex function; convexity parameter; convolutive mixture; fast-ICA; independent component analysis; inequality-based divergence measure; matrix estimation; music signal; nonparametric C-ICA algorithm; scaled natural gradient algorithm; speech signal; steepest descent method; unsupervised learning; Algorithm design and analysis; Convergence; Convex functions; Entropy; Joints; Materials; Mutual information; Blind source separation (BSS); convex function; divergence measure; independent component analysis;
Journal_Title :
Audio, Speech, and Language Processing, IEEE Transactions on
DOI :
10.1109/TASL.2011.2161080