Title :
Fast algorithms for mutual information based independent component analysis
Author_Institution :
Lab. of Modeling & Comput., Grenoble, France
Abstract :
This paper provides fast algorithms to perform independent component analysis based on the mutual information criterion. The main ingredient is the binning technique and the use of cardinal splines, which allows the fast computation of the density estimator over a regular grid. Using a discretized form of the entropy, the criterion can be evaluated quickly together with its gradient, which can be expressed in terms of the score functions. Both offline and online separation algorithms have been developed. Our density, entropy, and score estimators also have their own interest.
Keywords :
blind source separation; entropy; gradient methods; independent component analysis; splines (mathematics); binning techniques; cardinal splines; density estimator; independent component analysis; mutual information criterion; online separation algorithm; score estimators; Blind source separation; Entropy; Grid computing; Independent component analysis; Information analysis; Kernel; Mutual information; Random variables; Source separation; Vectors; Binning; blind source separation; cardinal spline; entropy estimation; independence component analysis; kernel density estimation; mutual information; score function estimation;
Journal_Title :
Signal Processing, IEEE Transactions on
DOI :
10.1109/TSP.2004.834398