Adaptive Blind Source Separation Using Weighted Sums of Two Kinds of Nonlinear Functions
نویسندگان
چکیده
We propose a new intelligent blind source separation algorithm for the mixture of sub-Gaussian and superGaussian sources. The algorithm consists of an update equation of the separating matrix and an adjustment equation of nonlinear functions. To verify the validity of the proposed algorithm, we compare the proposed algorithm with extant methods. key words: blind source separation, sub-Gaussian, superGaussian, weighted sum of nonlinear functions
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