Title :
Identification of independent components using cumulants and coherences
Author_Institution :
Mors-Techniphone Developpement, France
Abstract :
The characterization of independent stationary stochastic components (sources), can theoretically be achieved by using the 2nd and 4th order cumulants of partially correlated measurements, which are linearly related to the components of interest. The general model supposes as many sources as measurements. The authors recall first why 4th order cumulants achieve a solution, while 2nd order cumulants fail. However, the main algorithms (Comon, Cardoso, Gaeta-Lacoume) are generally used with a 2 observations -2 independent components models, to avoid complexity of calculation. The authors first examine what is achieved when the number of independent components is not well estimated. They suggest a new algorithm for independent components identification, which enables more than two sources, and based on both 2nd and 4th order cumulants
Keywords :
acoustic signal detection; higher order statistics; stochastic processes; 2 observations -2 independent components models; characterization; coherences; cumulants; independent components; independent stationary stochastic components; partially correlated measurements; Array signal processing; Eigenvalues and eigenfunctions; Frequency; Linearity; Pollution measurement; Q measurement; Sensor arrays; Sensor phenomena and characterization; Spectral analysis; Stochastic processes;
Conference_Titel :
OCEANS '94. 'Oceans Engineering for Today's Technology and Tomorrow's Preservation.' Proceedings
Conference_Location :
Brest
Print_ISBN :
0-7803-2056-5
DOI :
10.1109/OCEANS.1994.364110