Eusipco ’92 Iterative Techniques for Blind Source Separation Using Only Fourth-order Cumulants
نویسنده
چکیده
"Blind source separation" is an array processing problem without a priori information (no array manifold). This model can be identified resorting to 4th-order cumulants only via the concept of 4th-order signal subspace (FOSS) which is defined as a matrix space. This idea leads to a "Blind MUSIC" approach where identification is achieved by looking for the (approximate) intersections between the FOSS and the manifold of 1D projection matrices. Pratical implementations of these ideas are discussed and illustrated with computer simulations.
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تاریخ انتشار 1992