Blind separation of sources, part I: An adaptive algorithm based on neuromimetic architecture
C Jutten, J Herault - Signal processing, 1991 - Elsevier
C Jutten, J Herault
Signal processing, 1991•ElsevierThe separation of independent sources from an array of sensors is a classical but difficult
problem in signal processing. Based on some biological observations, an adaptive
algorithm is proposed to separate simultaneously all the unknown independent sources.
The adaptive rule, which constitutes an independence test using non-linear functions, is the
main original point of this blind identification procedure. Moreover, a new concept, that of
INdependent Components Analysis (INCA), more powerful than the classical Principal …
problem in signal processing. Based on some biological observations, an adaptive
algorithm is proposed to separate simultaneously all the unknown independent sources.
The adaptive rule, which constitutes an independence test using non-linear functions, is the
main original point of this blind identification procedure. Moreover, a new concept, that of
INdependent Components Analysis (INCA), more powerful than the classical Principal …
Abstract
The separation of independent sources from an array of sensors is a classical but difficult problem in signal processing. Based on some biological observations, an adaptive algorithm is proposed to separate simultaneously all the unknown independent sources. The adaptive rule, which constitutes an independence test using non-linear functions, is the main original point of this blind identification procedure. Moreover, a new concept, that of INdependent Components Analysis (INCA), more powerful than the classical Principal Components Analysis (in decision tasks) emerges from this work.
Elsevier