| Article ID: | iaor20053145 |
| Country: | Serbia |
| Volume: | 15 |
| Issue: | 1 |
| Start Page Number: | 79 |
| End Page Number: | 95 |
| Publication Date: | Jan 2005 |
| Journal: | Yugoslav Journal of Operations Research |
| Authors: | Todorovi-Zarkula Slavica, Todorovi Branimir, Stankovi Miomir |
| Keywords: | neural networks |
This paper addresses the problem of blind separation of non-stationary signals. We introduce an on-line separating algorithm for estimation of independent source signals using the assumption of non-stationarity of sources. As a separating model, we apply a self-organizing neural network with lateral connections, and define a contrast function based on correlation of the network outputs. A separating algorithm for adaptation of the network weights is derived using the state-space model of the network dynamics, and the extended Kalman filter. Simulation results obtained in blind separation of artificial and real-world signals from their artificial mixtures have shown that separating algorithm based on the extended Kalman filter outperforms stochastic gradient based algorithm both in convergence speed and estimation accuracy.