In this paper, a novel paradigm for blind source separation in the presence of nonlinear mixtures is presented. In particular the paper addresses the problem of post-nonlinear mixing followed by another instantaneous mixing system. This model is called here the post-nonlinear-linear model. The method is based on the use of the recently introduced flexible. activation function whose control points are adaptively changed: a neural model based on adaptive B-spline functions is employed. The signal separation is achieved through-an information maximization criterion. Experimental results and comparison with existing solutions confirm the effectiveness of the proposed architecture.
Spline neural networks for blind separation of post-nonlinear-linear mixtures / M., Solazzi; Uncini, Aurelio. - In: IEEE TRANSACTIONS ON CIRCUITS AND SYSTEMS. I, REGULAR PAPERS. - ISSN 1549-8328. - 51:4(2004), pp. 817-829. [10.1109/tcsi.2004.826210]
Spline neural networks for blind separation of post-nonlinear-linear mixtures
UNCINI, Aurelio
2004
Abstract
In this paper, a novel paradigm for blind source separation in the presence of nonlinear mixtures is presented. In particular the paper addresses the problem of post-nonlinear mixing followed by another instantaneous mixing system. This model is called here the post-nonlinear-linear model. The method is based on the use of the recently introduced flexible. activation function whose control points are adaptively changed: a neural model based on adaptive B-spline functions is employed. The signal separation is achieved through-an information maximization criterion. Experimental results and comparison with existing solutions confirm the effectiveness of the proposed architecture.I documenti in IRIS sono protetti da copyright e tutti i diritti sono riservati, salvo diversa indicazione.